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Article

Influence of Trust Relationships with Suppliers on Manufacturer Resilience in COVID-19 Era

1
Beijing Enterprise Low-Carbon Operation Strategy Research Base, School of Economics and Management, University of Science and Technology Beijing, Beijing 100083, China
2
School of Social Work, Columbia University, New York, NY 10027, USA
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(15), 9235; https://doi.org/10.3390/su14159235
Submission received: 4 June 2022 / Revised: 22 July 2022 / Accepted: 26 July 2022 / Published: 28 July 2022

Abstract

:
With the frequent occurrence of emergencies such as the COVID-19 pandemic in recent years, resilience has become increasingly important for the stable and sustainable development of the manufacturing companies. Despite growing interest in supply chain resilience, less attention has been paid to manufacturer resilience and how to improve it through supplier relationship governance. Based on resource-based view (RBV) theory, trust theory and the literature on resilience, this study developed new constructs of measuring manufacturer resilience by temporal logic and sheds light on how the trust relationship with suppliers affect manufacturer resilience via the information-sharing level. The data is collected from 351 respondents who are independent directors or managers of manufacturing companies in China. This study adopted exploratory factor analysis (EFA) and structural equation modeling (SEM) to explore the dimensions of manufacturer resilience and to test the hypotheses. The results reveal that the trust relationship with suppliers has significant positive impacts on three dimensions of manufacturer resilience, that is, preparedness, responsiveness, and recovery capability. In addition, the information-sharing level partially mediates the impact of the trust relationship with suppliers on manufacturer resilience. Specifically, the information-sharing level positively affects preparedness, responsiveness, and recovery capability. Moreover, the trust relationship with suppliers facilitates the information-sharing level. Finally, the study contributes to the manufacturer resilience literature and provides useful guidance for the manufacturing enterprises in enhancing resilience quickly.

1. Introduction

With the emergence of national and global emergencies, such as COVID-19, as well as information technology failures and service interruptions in the supply chain [1,2,3,4,5], the daily operation of supply chain members and even their long-term collaboration can be largely affected [6,7]. Under the implementation of the lockdown policy to stop the spread of the COVID-19 pandemic, manufacturing firms in the supply chain are encountering unprecedented challenges [8]. Therefore, to guarantee the stability and sustainability, it is crucial for manufacturers to be resilient to supply chain disruptions during production and operations management [9,10,11]. Resilience is defined as companies’ capability of anticipating crises, adapting and responding quickly to threatening disruptions or vulnerabilities in the supply chain, and returning to normal or even better conditions afterward [12,13,14,15]. Existing studies mostly focus on the overall resilience of the supply chain [11]. However, manufacturing companies are the main participants in the supply chain and are distinctly different from other supply chain members, such as logistics companies [16], and the literature focusing on the resilience of manufacturing firms is still insufficient. In particular, there are even fewer relevant empirical studies [17].
Furthermore, manufacturing companies can hardly complete production tasks on their own, especially in emergencies, so the relationship with partners becomes a topic worth studying [18]. In real life, there are also frequent production interruptions caused by supply shortages. Indeed, due to the unique Chinese culture, human irrationality, and opportunism, contractual governance cannot perfectly handle all the details of business activities and coordinate between partners. Furthermore, it is difficult to avoid information asymmetry in the supply chain and opportunistic behaviors of supply chain members [19]. As an informal contract in China, relationship governance fills the gap created by imperfect contract governance [20,21]. Following the use of the resource-based view (RBV) theory for supply chain resilience enhancement practice, scholars have used relationship theory to explore the realization of resilience. Relationship governance can be effective in coordinating supply chain members to solve problems when traditional contractual governance mechanisms fail in dealing with supply chain disruptions [22,23,24].
Drawing on trust theory, trust is an important ingredient in supply chain relationship governance [25,26]. The trust relationship with suppliers (TRS) refers to the fact that manufacturers and suppliers trust each other not to act opportunistically [27]. Implementing trust relationships with suppliers and building interdependent and trusting partnerships will enable manufacturing companies to have an uninterrupted supply in case of emergency [28]. A trust relationship with suppliers involves individual behavior that has an impact on the operation of both the company and the supply chain [14,29]. Although the existing relationship governance literature focuses on its impact on supply chain resilience [30], the previous literature has refrained from explaining how trust can enhance manufacturer resilience. Meanwhile, some research on supplier relationship governance focuses on improving profit [31] while ignoring the potential impact of relationships with suppliers on manufacturer resilience. The inspiration for this study is to extend the concept of manufacturer resilience and explore whether a trust relationship with suppliers has a positive impact on different dimensions of manufacturer resilience.
Moreover, scholars find that trust is crucial for information sharing, which has positive effects on the capabilities of corporations [32,33]. Trust drives increased levels of information sharing at the operational level [34,35]. In addition, some scholars argue that focusing on resilience practices after a disruption puts pressure on corporate managers, which can reduce the information-sharing level [36]. In this regard, it is not clear currently whether trust can stimulate different dimensions of manufacturer resilience through information sharing between manufacturers and suppliers in emergency scenarios such as the current COVID-19 crisis. Thus, after examining the impact of a trust relationship with suppliers on the three dimensions of manufacturer resilience, the study moves on to explore the role of information-sharing level in these different pathways. To the best of the authors’ knowledge, there are few empirical studies that have linked buyer–supplier trust, information-sharing level, and manufacturer resilience dimensioned by temporal logic.
The motivation to conduct this research is to explore how trust relationships with suppliers affect manufacturer resilience in emergency event scenarios such as the COVID-19 pandemics. Specifically, this paper attempts to address the following theoretical questions: First, what is an appropriate dimensional division of manufacturer resilience? Second, is a trust relationship with suppliers positively correlated with the three dimensions of manufacturer resilience? That is, does a trust relationship with suppliers as a relationship governance approach have a positive impact at the different stages when manufacturing companies encounter crises? Third, does information-sharing level facilitate manufacturer resilience that consists of preparedness, responsiveness, and recovery capability? Finally, the study explores the mediation of information-sharing level between trust relationships with suppliers and manufacturer resilience.
The exploration of the above research questions aims to achieve the following contributions. First, scholars have developed the dimensions of resilience based on the characteristics of supply chain or different phases of the events [14,18,23,37]; however, a consensus has not been reached. To counter the research challenges, this study expands the literature about the concept of manufacturer resilience at the corporate level based on interviews with experts from Chinese manufacturing companies. In addition, this study classifies manufacturer resilience by time dimension according to the interdisciplinary knowledge of disaster science and the supply chain resilience literature [14,38]. Second, drawing upon trust theory, we theorize and empirically examine how a trust relationship with suppliers affects manufacturer resilience in the context of Chinese companies, which complements the current literature [31,39]. Specifically, the study identifies the impact of a trust relationship with suppliers as a form of informal relationship governance on each dimension of manufacturer resilience. The purpose is to reveal the impact of trust relationships with suppliers on manufacturer resilience at different stages and furnish multidimensional insights for each activity of manufacturer resilience. Supported by previous studies, this study builds a bridge between relationship governance and manufacturer resilience in the attempt to fill the gap in the existing literature. Third, we further emphasize the role of information-sharing level, which is effective through a trust relationship with suppliers, in improving preparedness, responsiveness, and recovery capability via structural equation modeling (SEM) analysis. This study attempts to address the issue of firm stability and sustainable production by implementing an innovative model of trust relationships with suppliers and manufacturer resilience, which is a novel perspective. Based on the existing management model and supply chain structure, this paper aims to propose new managerial insights to rapidly improve manufacturer resilience in the disruptions caused by COVID-19.
This study aims to achieve the following objectives. First, this study aims to integrate the existing supply chain resilience literature and interdisciplinary knowledge to obtain appropriate manufacturer resilience dimensions, as well as the specific contents of each dimension. Second, the purpose is to reveal the impact of trust relationships with suppliers on manufacturer resilience at different stages and furnish multidimensional insights for each activity of manufacturer resilience. Furthermore, the research aims to examine the role of information-sharing level on manufacturer resilience and how it mediates between trust relationships with suppliers and different stages of resilience. Overall, the goal is to address the issues of firm stability and sustainable production by implementing an innovative model of trust relationships with suppliers and manufacturer resilience, which is a novel perspective.
The rest of this paper is organized as follows. Section 2 presents the theoretical background, research framework, and hypotheses. Section 3 presents the methodology, including the sampling procedures, measures of constructs, nonresponse bias and common method bias analysis, and exploratory factor analysis. Section 4 reports the structural equation model analysis, findings and results. Section 5 includes discussions and implications. Section 6 concludes the paper and proposes future research.

2. Literature Review and Research Hypotheses

2.1. Manufacturer Resilience

Companies’ resilience, which is reflected as the ability to uninterruptedly provide products and services to the community, is crucial during emergencies [11]. A growing number of studies by academics and policymakers show that resilience plays a key role in ensuring the survival of companies in emergencies [9]. Specifically, a company’s resilience is determined by resource planning, production capability, and the use of resources [40]. For example, before an emergency occurs, the company’s ability to rearrange internal resources to quickly respond to environmental impacts resilience [9]. In this study, we define manufacturer resilience as manufacturing companies’ capability to identify risks, increase their impacts, quickly respond to disruptions and return to normal [41].
Previous studies have classified resilience by characteristics, which encompass different characteristics of resilience, such as agility, visibility, and flexibility [18,37,42,43]. However, feature-based classification methods may overlook some of these features and fail to show the full connotations of resilience. Some scholars have also suggested that resilience should be divided into four dimensions, that is, readiness, response, recovery and growth [14]. However, in emergency scenarios such as the COVID-19 pandemic, we argue that the growth process should be integrated into the three previous phases to facilitate rapid recovery of the enterprises. This is a theoretical gap that this study aims to fill. Manufacturer resilience is conceptualized as a second-order measurement that captures its multi-capability nature [38]. In addition, the concept of manufacturer resilience by time dimension is formed, namely, preparedness (PPA), responsiveness (RPA), and recovery capability (RCA). Those three domains are strongly correlated with each other and are co-dependent conceptually [37,42].
First, preparedness refers to a manufacturing company’s readiness to deal with risk before an emergency event such as a supply chain disruption, which includes the visibility of inventory level and demand level [44]. Research has shown that the visibility of the supply chain could enhance companies’ capability of risk forecasting [44]. Moreover, preparedness is the ability to cope with the ever-changing business environment [45], which may increase the resilience of the companies in the supply chain [46]. Preparedness plays a key role in dealing with disruptions for manufacturers in the supply chain [47]. Resilient manufacturers have preparedness by activating their potential resources in preparation for adaptation [48].
Second, responsiveness refers to the ability of a company to respond quickly to sudden disruptions in the supply chain or to environmental uncertainty, which is also related to readiness [49,50]. Responsiveness includes agility and flexibility, which represent the ability to respond quickly in emergencies and implement emergency plans. Studies have reported that responsiveness can be effective in facilitating business recovery from disruptions [15] and increase their resilience [51]. The ability to anticipate and mobilize in time for an event of disruption can reflect a company’s resilience [14].
Third, recovery capability means that companies can quickly return to normal or to an even better condition after the interruptions. Recovery capabilities are also connected with a company’s responsiveness and operational management [52]. According to the definition of resilience, resilient manufacturers can recover to the pre-disruption state after a disruption and minimize negative impacts [15,53].

2.2. Trust Relationship with Suppliers and Manufacturer Resilience

According to trust theory, trust is considered a key sociological and psychological factor in establishing a relationship [54,55,56]. Trust can be classified into goodwill trust, capability trust, and computational trust [57,58,59,60]. Previous research conceptualizes trust as an informal relationship governance mechanism, which limits opportunistic behaviors by sharing the same cultural values among partners and encouraging the behaviors of coordinating the interests of partners [22]. A trust relationship with suppliers is a form of relationship governance [61]. Nonetheless, they focus on exploring the influence of trust as a moderator or independent variable on operation ability or financial performance [62,63]. In this study, we assume that if a manufacturing company has a trust relationship with suppliers, this is likely to enhance its resilience. There are good theoretical reasons for them to be positively related
Firstly, a trust relationship with suppliers can enhance a manufacturing company’s preparedness before an emergency event occurs. According to trust theory, relationship with suppliers is based on mutual trust [30,64,65,66]. A high level of trust in the relationship leads to consistent action by both parties, which is more efficient in making decisions and increases preparedness [34]. Norm-based trust between firms in a supply chain can reduce conflict and uncertainty [67]. Moreover, trust and good relationships enable manufacturers to obtain special treatment from suppliers in the form of better product and service support and assurance of availability, which protects against the risk of supply chain disruption in the event of supply disruption [34]. Trust has been proved as a fundamental predictor of positive performance outcomes and competitive advantage in the supply chain. Trust-based rules as the basis for cooperation have been shown to positively influence the supply chain structures and thus the resilience of supply chain network against disruption [68,69].
Secondly, when emergencies occur, a relationship of mutual trust can improve the speed of response to emergencies, which can be represented by responsiveness. Previous studies have shown that trust is crucial for building a stable and long-term relationship as well as continuing interfirm exchange of relational assets [54,70]. For instance, when a supply chain faces disruptions and collaborates, corporations may ignore collective interests to reduce their losses. Trust, the informal relationship safeguard, becomes especially important and reinforces the value of collaboration during emergencies [71,72]. Trust between firms promotes resilience at the systemic level because it brings certain benefits to participants. Specifically, trust promotes solidarity in collaboration; thus, it positively impacts the firms’ responsiveness [73,74,75]. Therefore, manufacturers have a high level of trust with their suppliers, which will facilitate their timely coordination in operational processes, such as specific purchase order execution and change service support. In these concrete ways, manufacturers improve their responsiveness [34].
Thirdly, after an emergency, the trust relationship with suppliers will facilitate rapid recovery of production in manufacturing companies. Previous studies have demonstrated that trust may utilize negotiation and communication to deal with problems, which positively impacts the increase in recovery capability [22]. Interfirm trust as a long-term strategy can contribute significantly to companies’ resilience and the long-term stability of companies and their supply chains [29,76]. Moreover, trust can also convey mutual respect [77]. Informal governance such as trust not only drives manufacturer capability but also invests in future collaboration that can improve recovery capability [78]. Therefore, good partnerships between manufacturers and suppliers are essential to minimize the negative impact of supply chain disruptions, so effective coordination with trust is an important factor in improving resilience at different stages [79]. Based on the theoretical analysis above, three research hypotheses can be introduced:
Hypothesis 1a (H1a).
The trust relationship with suppliers is positively related to preparedness.
Hypothesis 1b (H1b).
The trust relationship with suppliers is positively related to responsiveness.
Hypothesis 1c (H1c).
The trust relationship with suppliers is positively related to recovery capability.

2.3. Information-Sharing Level and Resilience

Drawing upon RBV theory, information is a kind of intangible resource that can create firms’ competitive edge [80]. Emergencies highlight the importance of speed and quality of company decisions and actions. The manufacturer–supplier trust relationship facilitates the dissemination of information between firms and guarantees the speed and quality of the availability of real-time information [81].
Initially, in the preparedness dimension of the manufacturer resilience, studies have indicated that information technology allows upstream and downstream corporations in the supply chain to effectively integrate inventory planning, demand forecasting and order scheduling, which achieves a supply–demand balance to have preparedness [82]. Information sharing between departments within the company increases the visibility and reliability of the operation which can enhance preparedness for emergencies [83].
Furthermore, high-level information technology leads to real-time sharing and integration of information [84]. Furthermore, an effective process of information technology integration may enhance corporations’ capability of coordinating with their partners to respond to changing market demands, which ensures that the suppliers accurately and quickly respond to external demands [85,86]. These are all closely related to the second component of manufacturer resilience, responsiveness. Communication with a formal schedule of regular meetings can provide a quick response to company operations, which is a form of responsiveness [87]. Information sharing based on high levels of information technology can integrate partners’ information systems to increase their responsiveness as a form of resilience [41]. Inter-organizational operational integration contains the sharing of information resources, which can increase the responsiveness of the supply chain to disruptions [88].
Finally, information sharing between members affects the operational performance of the supply chain [89]. Scholars found that strong relationships and high information-sharing levels between supply chain companies and suppliers can contribute to their profitability and competitiveness [90,91]. In addition, information-sharing level is extremely important in the efficiency of information management, which can make supply chain members have strong resilience throughout emergencies [92]. Accurate information sharing reduces uncertainty in the external environment, which in turn increases responsiveness and recovery capabilities [63]. Sharing information among supply chain partners can help companies improve economic resilience, which is a form of recovery capability [93]. Based on the theoretical analysis above, we introduce the following hypotheses:
Hypothesis 2a (H2a).
Information-sharing level is positively related to preparedness.
Hypothesis 2b (H2b).
Information-sharing level is positively related to responsiveness.
Hypothesis 2c (H2c).
Information-sharing level is positively related to recovery capability.

2.4. Mediating Role of Information-Sharing Level

Information-sharing level (ISL) includes information-technology level and information-exchange level [94], which are equally important [95,96]. Information technology such as big data and predictive analytics provides technical support for information exchange to accomplish timely and efficient information sharing [97]. Previous research indicates how the trust relationship could impact information-sharing level. Trust between companies also facilitates verbal and written communication and multiple forms of information sharing [98]. Furthermore, trust can significantly affect the quality of information sharing [66]. Lack of trust and communication between supply chain members will lead to potential supply chain risks [99]. Meanwhile, information technology has also increased mutual trust and deeper cooperation between companies, both of which reinforce each other [100]. The flexibility of establishing a trust relationship enhances the level of information sharing between partners [101]. On the other hand, sharing confidential and key information conveys a signal to partners that they can be trusted [64,102]. Conversely, information exchange between partners will be disturbed if lacking trust [71,103]. The lack of trust and low information-sharing level may lead to bad collaboration between manufacturers and suppliers, which further affects corporate resilience and risk tolerance [104,105]. Given these analyses, we argue that a trust relationship with suppliers could elevate the information-sharing level.
Information sharing in the supply chain is closely related to trust [106]. Moreover, studies found that information technology can help companies to improve their operational efficiency and enhance their flexibility [107]. Recent studies have increasingly emphasized that information sharing is an important factor for businesses to increase supply chain resilience and the efficacy of the relationship [14,108]. The previous studies supported that a trust relationship and information sharing can enhance supply chain resilience. Trust between companies increases supply chain resilience through information sharing [28]. However, the interactions between trust relationship with suppliers, information-sharing level, and manufacturer resilience remain unclear. This paper attempts to explore the potential mediating effect of information-sharing level between trust relationship with suppliers and the three dimensions of manufacturer resilience. Specifically, companies are highly conscious of commercial secrecy and usually keep their business strictly confidential. Many companies are afraid that a close relationship with partners may lead to the leakage of core commercial secrets [34]. As such, further investigation is needed.
A high level of trust will facilitate the sharing of confidential information between manufacturers and suppliers. Information sharing based on trust will improve supply chain visibility [44], which will allow managers to identify problems promptly and provide feedback to evaluate the partnership. Trust between companies enables partners to share resources collaboratively, thereby increasing the manufacturer resilience in different dimensions, such as proactively preventing production and operational disruptions before they occur and achieving rapid production recovery afterward [34]. Based on the preceding arguments, the following hypotheses are proposed:
Hypothesis 3 (H3).
The trust relationship with suppliers promotes information-sharing level.
Hypothesis 4a (H4a).
Information-sharing level has a mediating effect between the trust relationship with suppliers and preparedness.
Hypothesis 4b (H4b).
Information-sharing level has a mediating effect between the trust relationship with suppliers and responsiveness.
Hypothesis 4c (H4c).
Information-sharing level has a mediating effect between the trust relationship with suppliers and recovery capability.
Combing the hypotheses above, we propose the theoretical model shown in Figure 1. The model incorporates the relationships between the variables. The red lines show the direct effects of TRS on PPA, RPA and RCA; the green line shows the direct effect of TRS on ISL; the blue lines show the direct effects of ISL on PPA, RPA and RCA; and the yellow lines represent the mediating role of ISL between TRS and PPA, RPA and RCA.

2.5. Current Research Technicals

We found that the pandemic-related policies are relatively strict and specifically designed for a particular situation so that more empirical research is needed to understand the more recent situation of the enterprises. This will provide insights for companies to develop specific management policies in the context of the pandemic. We noticed that there are very few questionnaire studies, and there is a lack of empirical methods. In addition, previous studies focused more on the entire supply chain [1] while lacking research with manufacturing firms as the research subjects. To bridge this gap in research, this paper specifically targets manufacturing firms, which would not only enrich the literature on manufacturer resilience but also would provide better management suggestions for the firms. Moreover, the scales used in the study extend the current literature on manufacturer resilience measures, which requires integration of the existing literature and the adaptation of the scale in combination with interviews with company managers. Based on the theoretical and technical gaps reviewed above, we designed the current study.

3. Methodology

3.1. Study Design

We proposed the following research design. First, this study used a questionnaire as a research tool to empirically investigate Chinese manufacturing companies. We explored the dimensions of manufacturer resilience to demonstrate the usability of the scale, which could be utilized by future scholars. Second, we performed the common method bias test, which could avoid the problem of bias in this study [18,52]. In addition, we examined the reliability and validity of the questionnaire, including confirmatory factor analysis, discriminant validity testing, and model fit testing, to demonstrate that the model and questionnaire in this paper could be analyzed for the structural equation model. This was followed by structural equation modeling hypothesis testing. This paper used the bootstrap method and adopted a 5000-times sampling technique, which allowed for the distribution of the sample closer to a normal distribution and statistically significant [109]. Figure 2 illustrates the main process of the statistical analysis methods.

3.2. Sampling and Data Collection

We contacted managers and independent directors in manufacturing companies in China to distribute the questionnaire from December 2021 to April 2022. We reached out with a cover letter explaining our research purpose and ensuring the confidentiality of the data. This ensures the reliability of the answers and prevents nonresponse bias. A total of 516 surveys were distributed through personal visits, emails, meetings, and online platforms. Moreover, 422 surveys were returned, and 351 were included in the final data analysis after carefully reviewing and detaching inappropriately filled surveys. The sample covered various companies across China such as Beijing, Shanghai, Tianjin, Hohhot, Chengdu, and Shenzhen. These cities had different levels of manufacturing development in China. The companies were of different types, including state-owned or state-controlled enterprises, private companies, and foreign or Sino-foreign joint ventures. Most of the companies had a size of more than 50 staff members at the time of the survey. The sample also covered a vast set of industries, including food and beverage, metallurgical, pharmaceutical, textile and clothing, furniture, etc. Table 1 showed descriptive statistics (n = 351) consisting of the nature of enterprises, industry type, and enterprise size. These were generated to obtain respondents’ demographic information (see Table 1).
Before the questionnaires were distributed, we visited manufacturing companies several times in order to understand the real situation of the manufacturing companies. We invited managers of the manufacturing companies and scholars from universities to check the content of the questionnaire to ensure that the questions were clear, appropriate, and understandable. We attended regular meetings of steel manufacturing companies with purchasing managers, operation supervisors, and heads of quality control departments. In addition, we conducted one-on-one interviews with managers of manufacturing companies such as food and pharmaceutical companies. We found that in current Chinese manufacturing companies, trust relationships with suppliers do affect the ability of companies facing supply disruptions. Last but not least, the questions accounting for the operational practices of manufacturing companies reflected the current state of manufacturing companies, and the contents can be used in the risk management practices of other manufacturing companies. The experts’ reviews make the scales obtained from the literature more relevant and practically meaningful.

3.3. Measures of Constructs

The core parts were based on the trust relationship with suppliers, manufacturer resilience, and information-sharing level, whereby some necessary amendments were done in the statements (see Table 2). The 7-point Likert scale was adapted to record respondents’ responses, ranging from strongly disagree to strongly agree. All the statements of questions were culturally modified for better clarity of the respondents and to avoid bias. We conducted a pretest with a small sample size of 70 respondents to test the reliability of the latent variable. The values of Cronbach’s alpha were used to examine the reliability of pre-testing because the experts recommended that such values must be higher than 0.7 for suitability [110]. All of the values for the latent variables were above the suggested threshold. There were three types of variables in the conceptual model, that is, independent variable (IV), dependent variable (DV), and mediator. The trust relationship with suppliers was adopted as IV, manufacturer resilience as DV, and information-sharing level as a mediator, respectively. SPSS and AMOS software packages were adopted to generate results [111,112,113].

3.3.1. Trust Relationship with Suppliers

The trust relationship with suppliers was measured by the trust (before the disruption) scale designed by Bode and colleagues [72], and we reorganized the items by taking the Chinese corporate culture into account. The trust scale measured the honesty of suppliers, confidence in suppliers’ information, reliability, suppliers’ success concerns, welfare equity, and mutual benefits. It is a widely used scale and has been tested repeatedly [30,58]. The trust scale was a 5-point Likert scale with six items. Previous studies showed that Cronbach’s alpha for the credibility and the benevolence section of the scale is 0.85 and 0.74 separately [72], indicating good-to-excellent reliability.

3.3.2. Manufacturer Resilience

Manufacturer resilience was measured by three constructs, preparedness, responsiveness, and recovery capability [14]. Preparedness was measured by the items adapted from the resilience scale [15,18,42], which was a 5-point Likert scale that includes four items. The study reported that Cronbach’s alpha is 0.86, indicating good-to-excellent reliability. Responsiveness was adapted from the SCR scale which is a 7-point Likert scale that includes four items [41,114]. Recovery capability was adapted from the SCR scale [9,114,115]. The combined scale has 19 items in total.

3.3.3. Information-Sharing Level

Information-sharing level in this paper refers to the implementation, evaluation, extent, willingness, and quality of information exchange between manufacturer and suppliers [94,116]. It was measured by the information-sharing level scale with five items, and Cronbach’s alpha for the scale is 0.84.

3.4. Nonresponse Bias and Common Method Variance

We explained the purpose and importance of the study to the independent directors and experienced managers of the companies and provided them with management consulting services, which made them answer the questionnaire patiently. The questions did not involve a judgment on whether the companies were good or bad, so the respondents could self-report [117,118]. Moreover, we designed the questionnaire regarding the opinions of some managers and conducted a return visit after the questionnaire was distributed. These approaches to prevent nonresponse bias and single-source bias could be mitigated [37,119].
In addition, we examined whether there is a common method bias [18,52]. First, the Harman’s single-factor test was conducted, the model fit of the single-factor model was significantly worse, suggesting that there was no serious common method bias [117,120]. Furthermore, we compared the original model with the common method factor model as shown in Table 3. There was no significant change in the model fit for the two models, which confirmed that the common method bias was sufficiently minimal [58,111,117,121].

3.5. Exploratory Factor Analysis

The research employed exploratory factor analysis (EFA). First, a conformity test was carried out to determine whether the data set was suitable for EFA. The results showed that Bartlett Test of Sphericity (BTS) was significant at the 0.001 level, and the Kaiser–Meyer–Olkin (KMO) value was 0.969, indicating the good fitness for EFA [122]. Next, we extracted the variables of the trust relationship with suppliers, information-sharing level, and manufacturer resilience using principal component analysis. As shown in the varimax rotating factor matrix performed in Table 4, the questions in the questionnaire were divided into five dimensions. The three dimensions of manufacturer resilience were preparedness, responsiveness, and recovery capability. This indicated that these three dimensions could represent manufacturer resilience well.

3.6. Validity and Reliability

We examined the reliability and validity of the scales using composite reliability (CR), average variance extracted (AVE), factor loading (FL) (see Table 2), and discriminant validity (DVD) tool (see Table 5). Table 2 represented the values of confirmatory factor analysis that include values for FL, CR, and AVE. The values of CR assessed internal consistency in scale items [123]. Table 2 showed that the CR values of the scales are all greater than 0.7, indicating that the scales have high reliability [124]. Table 2 shows that the Cronbach’s α values of the scales are all greater than 0.7, indicating that the scales in this study have high reliability [123]. The confirmatory factor analysis was implemented to explore convergent validity using factor loading (FL) and average variance extracted (AVE) values. The values of FL and AVE should be greater than 0.5 [123,124], which was true for all scales in this study (see Table 2). Additionally, the values of means and standard deviation (SD) were also reported in Table 2.
Table 5 depicted the values of DVD which can be used to find the variations among constructs. According to Deng et al. [125], the values of √AVEs must be higher than the values of correlations of subsequent variables, which can identify the degree of constructs’ differentiation. The Pearson correlation coefficients showed a significant relationship among trust relationship with suppliers, information-sharing level, preparedness, responsiveness, and recovery capability, which was further investigated through SEM.
Table 6 showed the results of model fit. Overall, the statistics indicated that the hypothesized model had an acceptable fit to the data. The ratio of chi-square to degrees of freedom (χ2/df) was 1.638. The comparative fit index (CFI), normed fit index (NFI), and root mean square error of approximation (RMSEA) were 0.970, 0.927, and 0.043 respectively, indicating the model had a good fit to the data per the recommended criteria [126]. In addition, goodness-of-fit for the model was also examined through the standardized root mean square residual (SRMR). Hu and Bentler [126] suggested that SRMR should be lower than 0.08. The current model was considered to have accepted model fit as the SRMR was 0.059.

4. Structural Equation Model (SEM) Analysis

The trust relationship with suppliers is not merely a key factor that affects the effectiveness of an enterprise, but it is also an essential element of manufacturer resilience. Although researchers have suggested a positive relationship between the trust relationship with suppliers and manufacturer resilience, further research is required to explore the relationship on the dimensions of manufacturer resilience as well as other factors that contribute to the relationship. The current study affirmed the positive role of TRS on PPA, RPA, and RCA, which represented different stages of manufacturer resilience. In addition, mediating effect of ISL was observed.
We implemented the structural equation model (SEM) to observe the major relationships. The main hypothesized relationships were tested using the following structural equations. First, the following equations contain the relationships between TRS on manufacturer resilience where TRS was measured using a single variable, while resilience was measured through three variables, that is, PPA, RPA, and RCA.
PPA H 1 a = β 1 a TRS + ζ 1 a
RPA H 1 b = β 1 b TRS + ζ 1 b
RCA H 1 c = β 1 c TRS + ζ 1 c
PPA H 2 a = β 2 a ISL + ζ 2 a
RPA H 2 b = β 2 b ISL + ζ 2 b
RCA H 2 c = β 2 c ISL + ζ 2 c
ISL H 3 = β 3 TRS + ζ 3
PPA H 4 a = β 4 a TRS + β 4 a ISL + ζ 4 a
RPA H 4 b = β 4 b TRS + β 4 b ISL + ζ 4 b
RCA H 4 c = β 4 c TRS + β 4 c ISL + ζ 4 c
In addition, before making a conclusion based on the results of SEM, mediating effect of information-sharing level (ISL) was analyzed using the bootstrap method [111]. The study examined the mediating effect of ISL on TRS and indicators of manufacturer resilience, that is, PPA, RPA, and RCA. The direct effect of each path following structural equations was examined firstly (Equations (1)–(7)). Then, the indirect/mediating effect of ISL was tested (see Equations (8)–(10)). We calculated the bias-corrected and percentile bootstrap 95% confidence interval of the indirect effect over 5000 iterations to guarantee the robustness of the method. If the interval includes 0, it suggests nonsignificant mediating effects, while an interval excludes 0 suggests a significant mediating effect [127].
The core hypotheses were assumed and analyzed through SEM (see Table 7 and Figure 3). First, it was proposed in H1a that TRS was positively correlated with PPA. The findings confirmed a positive effect (β = 0.353) between TRS and PPA at a significant level of p < 0.001. Therefore, H1a was supported. Second, H1b hypothesized that TRS was positively correlated with RPA. The findings asserted a positive relationship (β = 0.254) between TRS and RPA at p < 0.001; consequently, H1b was supported. Third, it was hypothesized in H1c that TRS was positively correlated with RCA. The findings affirmed a positive relationship (β = 0.574) between TRS and RCA at p < 0.001. Thus, H1c was supported. Similarly, the direct effects of ISL on PPA, RPA and RCA were all significant; the path coefficients were 0.382, 0.300, and 0.296 respectively, as shown in Figure 3, demonstrating that H2a, H2b, and H2c were supported. In addition, the results also confirmed a positive effect (β = 0.676) between TRS and ISL at p < 0.001; therefore, H3 was supported.
Three additional hypotheses were proposed and analyzed for the mediating effect. Table 8 showed the values of the additional effect of ISL; that is, ISL mediated the relationship between TRS and indicators of manufacturer resilience (PPA, RPA, RCA). The total effect and direct/indirect effect between each indicator were also summarized as follows (see Table 8); none of the intervals of the methods included 0, suggesting the significant mediating effect of ISL [127].
First, H4a proposed that ISL mediated the relationship between TRS and PPA. The findings pointed to a significant mediating effect, the bias-corrected CI ranged from 0.135 to 0.275 and the Percentile CI ranged from 0.134 to 0.274, excluding zero in the CI which suggested H4a was supported [127]. Second, H4b hypothesized that ISL mediated the relationship between TRS and RPA. The findings confirmed a significant mediating effect; consequently, H4b was supported. Similarly, it was proposed in H4c that ISL mediated the relationship between TRS and RCA. The findings affirmed that there was a significant mediating effect, suggesting H4c was supported (see Table 8).

5. Discussion and Implications

5.1. Discussion

Based on the analyses above, we can conclude that Chinese manufacturing companies have resilience to a certain extent. It is worth noting that their resilience differs slightly in different dimensions; specifically, manufacturer resilience can be classified as preparedness, responsiveness, and recovery capability, as shown in Table 4. To improve resilience and achieve sustainable development, companies should focus on different dimensions of resilience and clearly distinguish what capabilities they should have at different times to reduce the risk of emergencies. This division of the resilience dimension is based on the theoretical foundation of the previous literature [14,128,129,130], incorporating the Chinese context and interviews with leaders of Chinese manufacturing companies, and it differs slightly from the previous work.
Drawing on trust theory, the core findings were consistent with those of Doney and Cannon [64], who concluded that trust relationships with suppliers had significant impacts on resilience. Table 7 indicates that a trust relationship with suppliers significantly promotes preparedness, responsiveness, and recovery capability, especially during the recovery phase. This verifies hypotheses H1a, H1b, and H1c, which suggests that building a trust relationship with suppliers is beneficial to the resilience of manufacturing companies, that is, preparedness, responsiveness, and recovery capability. This is essentially in agreement with the existing research on a single aspect, which believes that trust is a driving force for improving supply chain resilience [14,130,131]. However, this finding is slightly different from them in that we demonstrate that trust has different degrees of impact on different dimensions of manufacturer resilience. While previous articles have studied resilience in the context of supply chains [1,2,5], this paper differs in that it focuses specifically on the manufacturer segment of the supply chain. In our case, the area of study is more microscopic. Furthermore, while existing trust studies focus on the entire supply chain [59,60,69], this study focuses specifically on trust between the manufacturers and suppliers.
In addition, the trust relationship with suppliers can positively influence information-sharing level in Chinese manufacturing companies. These results are consistent with our hypotheses. This means that the more manufacturing companies and their suppliers trust each other, the more they will share information and improve their information-sharing techniques [35]. Moreover, the relationships between trust and different dimensions of resilience were shown to be mediated by information-sharing level, as shown in Table 8, which verifies hypotheses H4a, H4b, and H4c. It suggested that in the context of emergencies such as the COVID-19 pandemic, building trust and enhancing the level of information sharing between Chinese manufacturing companies and their suppliers are effective approaches of enhancing corporate resilience.
The above findings are consistent with the observations in our interviews with the manufacturing companies. For example, during our interviews with a food manufacturing company, the manager highlighted that the lockdown policy during the pandemic caused delays in the supply of raw materials from some suppliers. Only suppliers from areas that were not under lockdown could provide raw materials on time. Therefore, the manufacturer had to spend more time and look for suppliers from such areas. The manufacturer and the new suppliers built their relationship based on trust, believing that no one from the party would act opportunistically for financial gain, and they shared information about inventory, production capacity, and product quality honestly. The manufacturer trusted the supplier to provide qualified raw materials, so the manufacturer could promptly adjust production schedules and contingency plans to ensure uninterrupted production. Therefore, this study presents the actual situation of manufacturing companies in China. The strict pandemic policies and the large number of Chinese manufacturing firms make the case unique. Previous research on firm resilience has not been conducted empirically in the context of ongoing emergencies at a particular time, such as the COVID-19 pandemic in our case [9].

5.2. Contributions

While many researchers have studied the issue of supply chain resilience, this paper provides new insights concerning the trust relationship with suppliers, information-sharing level and manufacturer resilience based on the paradigm of ‘Supplier Relationship Governance—Information-sharing level—Manufacturer Resilience’. This study contributes in several ways. First, unlike previous studies that have focused broadly on supply chain resilience, this study focuses on manufacturing firms in the supply chain and innovates by dividing manufacturer resilience into three dimensions. Furthermore, the paper reveals the impact paths of a trust relationship with suppliers on the three dimensions of manufacturer resilience from three aspects. Second, our study provides evidence for the positive effects of supplier relationship governance practices on manufacturer resilience. The results further strengthen the relevance of trust theory in management practices of manufacturing companies. Third, the empirical research confirms the mediating mechanism driven by the resource-based view theory and trust theory, whereby the level of information sharing mediates the positive effect of trust on resilience. The data collection was supported by independent directors and managers of the manufacturing companies. The results of the study can represent the current situation of Chinese manufacturing companies during the COVID-19 pandemic. Our findings provide novel insights for our understanding of how a trust relationship with suppliers promotes manufacturer resilience and enriches the existing resilience literature. Moreover, we have made some practical suggestions to manufacturing enterprises so that our findings can potentially enhance manufacturer resilience.

5.3. Theoretical Implications

From a theoretical standpoint, our findings propose that trust relationships with suppliers might enhance manufacturer resilience, which contributes to the literature at present. First, it extends the literature by revealing how a trust relationship with suppliers improves different stages of manufacturer resilience [40]. This aims to fulfill the literature gap with empirical evidence because previous studies have refrained from closing this gap in the relationship management and manufacturer resilience literature.
Second, this study developed new constructs of measuring manufacturer resilience by temporal logic based on interviews with manufacturing companies and previous theoretical foundations. In addition, it applies interdisciplinary knowledge, combining disaster science and supply chain management to make the concept of manufacturer resilience more professional and practical [14,38]. This is valuable because previous resilience scales have mostly been derived from the supply chain literature rather than from the details of business operations and the literature from other fields.
Third, we expand the literature by explaining the mediating mechanism of the linkage between trust relationships with suppliers, information-sharing level, and manufacturer resilience, which has not been explicitly investigated. This empirical study tests the ten hypotheses presented. Thus, this study complements existing research by proposing that the trust relationship with suppliers could help firms achieve greater manufacturer resilience through information-sharing level [66].

5.4. Practical Implications

Our analytical contributions offer operational insights for the manufacturing firms to choose an appropriate relationship management method to improve the sustainable resilience of the firms and the supply chain. First, to managers of the manufacturing firms, this article points out some theoretical support for taking trust and information-sharing level factors with suppliers into account. The managers can use the relationship governance to motivate the suppliers to pay for more investment in trust relationship efforts when traditional contractual governance cannot specify all the details of cooperative operations. This approach allows manufacturers and suppliers to achieve a “Win-Win” situation.
From a managerial viewpoint, the study provides insights for manufacturing firms to improve their manufacturer resilience. First, it is crucial for enterprises to have manufacturer resilience during unexpected events. According to the results of H1a, H1b, and H1c, the findings encourage manufacturers to focus on supplier relationship governance to improve their resilience in emergency situations. Supplier management of manufacturing enterprises is advised to adopt such practices that establish trust relationships with suppliers more vigorously because relational governance can compensate for the lack of contractual governance in emergency scenarios [132,133,134,135]. This finding is important for firms in understanding and incorporating relationship management into their risk management strategies.
Second, this finding may help manufacturers to value the role of trust and information-sharing level in enhancing resilience. According to H4a, H4b and H4c, trust relationships with suppliers can improve manufacturer resilience by increasing the information-sharing level. For instance, manufacturers can assign people to supplier teams to receive real-time feedback and facilitate collaboration. In addition, companies can establish regular formal and informal meetings to assess the status of information sharing implementation, collaboration, and proactively identify risks. The entire supply chain network consists of supply chain members such as manufacturers and suppliers, and the resilience of supply chain members is important to the supply chain as it determines the overall resilience of the supply chain [136]. Today’s supply chain environment is fraught with uncertainty, and manufacturers can improve their resilience and sustainability by incorporating these practices into their business operations. In addition, the finding that the trust relationship with suppliers influences manufacturer resilience through information-sharing level is critical for managers in developing countries. This suggests that firms need to rethink their future business models and developmental strategies by improving information technology level, enhancing the degree of information sharing, and adding big data applications.

6. Conclusions and Future Directions

This study concludes that the trust relationship with suppliers is an important safeguard for manufacturer resilience. Manufacturing companies must combine strengthening the supplier relationship with an increasing level of information sharing to improve resilience. Based on trust theory, this study concludes that a trust relationship with suppliers has a positive relationship with manufacturer resilience. Similarly, information-sharing level plays a positive mediating role in the link between the trust relationship with suppliers and different stages of manufacturer resilience. The results of this multidimensional study infer the importance of trust relationships with suppliers and information-sharing level in improving manufacturer resilience.
Furthermore, this research promotes the concept of manufacturer resilience and encourages researchers to delve into different areas, including behavioral operations and supply chain emergency management in a global context. Our findings provide scientifically sound support that manufacturers can improve their resilience of different dimensions by a trust relationship with suppliers. It is expected to provide useful guidance for the manufacturing enterprises on supplier relationship governance. Additionally, the conclusions and corresponding suggestions for enterprises not only help to enhance sustainable development but also contribute significantly to manufacturer resilience at different stages to maintain survival during the risks.
This study bears certain limitations in terms of sample size, geographical locations, and target industries where future work can be expanded. First, consider our sample of 351 managers in Chinese manufacturing corporations. Due to the specificity of corporate relationship governance in China, future studies should validate the findings and investigate their applicability with more samples employing other regions and industries to understand the applicability across the world with more theoretical support. Second, we have emphasized the trust relationship with suppliers, which was one type of relationship governance mechanism [61]. It may be useful for future research to explore the role of other approaches on the resilience of manufacturing companies, such as reciprocity [137]. In addition, the study adopted one mediation factor. This study encourages scholars to identify different types of intermediate variables and examine their effects to improve the resilience and sustainability of manufacturing companies in the future.

Author Contributions

Conceptualization, J.Y. and Y.L.; data curation, Y.L.; formal analysis, Y.L; funding acquisition, J.Y; investigation, J.Y and Y.L; methodology, Y.L; project administration, J.Y; resources, J.Y; software, Y.L.; supervision, Y.J; validation, J.Y. and Y.L.; visualization, Y.L and Y.J.; writing—original draft preparation, Y.L; writing—review and editing, Y.J. All authors have read and agreed to the published version of the manuscript.

Funding

Social Science Fund Base Project of Beijing, China. No. 19JDGLA001; National Natural Science Foundation of China, NSFC Project 71602008, 71871016.

Institutional Review Board Statement

Ethical review and approval were waived for this study, due to the fact that the content of the questionnaire for this study related only to the companies and did not involve personal information in order to protect the privacy of the respondents. All participants were fully informed that the study would guarantee anonymity.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The data presented in this study are available on request from the corresponding author. The data are not publicly available due to respondents’ requests.

Acknowledgments

The authors would like to express their gratitude to the independent directors, executives and managers of the Chinese manufacturing companies who supported the collection of data for this study.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Siagian, H.; Tarigan, Z.J.H.; Jie, F. Supply chain integration enables resilience, flexibility, and innovation to improve business performance in COVID-19 Era. Sustainability 2021, 13, 4669. [Google Scholar] [CrossRef]
  2. Lam, J.S.L.; Bai, X.A. Quality function deployment approach to improve maritime supply chain resilience. Transp. Res. E-Logist. 2016, 92, 16–27. [Google Scholar] [CrossRef]
  3. Rajesh, R. On Sustainability, resilience, and the sustainable–resilient supply networks. Sustain. Prod. Consump. 2018, 15, 74–88. [Google Scholar] [CrossRef]
  4. Majumdar, A.; Shaw, M.; Sinha, S.K. COVID-19 Debunks the myth of socially sustainable supply chain: A case of the clothing industry in south asian countries. Sustain. Prod. Consump. 2020, 24, 150–155. [Google Scholar] [CrossRef]
  5. Kazancoglu, Y.; Sezer, M.D.; Ozbiltekin-Pala, M.; Lafçı, Ç.; Sarma, P.R.S. Evaluating resilience in food supply chains during COVID-19. Int. J. Logist. Manag. 2021, 1–17, Ahead-of-print. [Google Scholar] [CrossRef]
  6. Blowfield, K.; Candogan, O.; Ehsani, S. Supply disruptions and optimal network structures. Manag. Sci. 2019, 65, 5504–5517. [Google Scholar] [CrossRef]
  7. Xu, S.; Zhang, X.; Feng, L. Disruption risks in supply chain management: A literature review based on bibliometric analysis. Int. J. Prod. Res. 2020, 58, 3508–3526. [Google Scholar] [CrossRef]
  8. Yu, D.E.C.; Razon, L.F.; Tan, R.R. Can global pharmaceutical supply chains scale up sustainably for the COVID-19 crisis? Resour. Conserv. Recycl. 2020, 159, 104868. [Google Scholar] [CrossRef]
  9. Ambulkar, S.; Blackhurst, J.; Grawe, S. Firm’s resilience to supply chain disruptions: Scale development and empirical examination. J. Oper. Manag. 2015, 33, 111–122. [Google Scholar] [CrossRef]
  10. Parker, H.; Ameen, K. The role of resilience capabilities in shaping how firms respond to disruptions. J. Bus. Res. 2018, 88, 535–541. [Google Scholar] [CrossRef]
  11. Ivanov, D.; Dolgui, A. OR-methods for coping with the ripple effect in supply chains during COVID-19 pandemic: Managerial insights and research implications. Int. J. Prod. Econ. 2021, 232, 107921. [Google Scholar] [CrossRef]
  12. Heide, J.B. Interorganizational governance in marketing channels. J. Mark. 1994, 58, 71–85. [Google Scholar] [CrossRef]
  13. Christopher, M.; Peck, H. Building the resilient supply chain. Int. J. Logist. Manag. 2004, 15, 1–14. [Google Scholar] [CrossRef] [Green Version]
  14. Hohenstein, N.O.; Feisel, E.; Hartmann, E.; Giunipero, L. Research on the phenomenon of supply chain resilience: A systematic review and paths for further investigation. Int. J. Phys. Distr. Log. 2015, 45, 90–117. [Google Scholar] [CrossRef]
  15. Tukamuhabwa, B.R.; Stevenson, M.; Busby, J.; Zorzini, M. Supply chain resilience: Definition, review and theoretical foundations for further study. Int. J. Prod. Res. 2015, 53, 1–32. [Google Scholar] [CrossRef]
  16. Handfield, R.B.; Graham, G.; Burns, L. Corona virus, tariffs, trade wars and supply chain evolutionary design. Int. J. Oper. Prod. Manag. 2020, 40, 1649–1660. [Google Scholar] [CrossRef]
  17. Gao, Y.; Feng, Z.; Zhang, S.B. Managing supply chain resilience in the era of VUCA. Front. Eng. Manag. 2021, 8, 465–470. [Google Scholar] [CrossRef]
  18. Dubey, R.; Altay, N.; Gunasekaran, A.; Blome, C.; Papadopoulos, T.; Childe, S.J. Supply chain agility, adaptability and alignment: Empirical evidence from the Indian auto components industry. Int. J. Oper. Prod. Manag. 2018, 38, 129–148. [Google Scholar] [CrossRef]
  19. Liu, L.; Gong, L.J.; Shi, W.Q. Three-stage supply chain coordination of emergency quantity discount contract. Comput. Integr. Manuf. 2016, 22, 1599–1607. [Google Scholar] [CrossRef]
  20. Chu, Z.F.; Lai, F.J.; Wang, L.L. Leveraging interfirm relationships in China: Western relational governance or guanxi? Domestic versus foreign firms. J. Int. Mark. 2020, 28, 58–74. [Google Scholar] [CrossRef]
  21. Bonatto, F.; Resende, L.M.M.; Pontes, J. Relational governance in supply chain: A systematic literature review. Benchmarking Int. J. 2020, 27, 1711–1741. [Google Scholar] [CrossRef]
  22. Li, Y.E.; Xie, H.; Teo, H.; Peng, M.W. Formal control and social control in domestic and international buyer-supplier relationships. J. Oper. Manag. 2010, 28, 333–344. [Google Scholar] [CrossRef]
  23. Wieland, A.; Marcus Wallenburg, C.M. The influence of relational competencies on supply chain resilience: A relational view. Int. J. Phys. Distr. Log. 2013, 43, 300–320. [Google Scholar] [CrossRef] [Green Version]
  24. Yu, W.; Jacobs, M.A.; Chavez, R.; Yang, J. Dynamism, disruption orientation, and resilience in the supply chain and the impacts on financial performance: A dynamic capabilities perspective. Int. J. Prod. Econ. 2019, 218, 352–362. [Google Scholar] [CrossRef]
  25. Ghosh, A.; Fedorowicz, J. The role of trust in supply chain governance. Bus. Process Manag. J. 2008, 14, 453–470. [Google Scholar] [CrossRef]
  26. Lu, H.E.; Potter, A.; Rodrigues, V.S.; Walker, H. Exploring sustainable supply chain management: A social network perspective. Supply Chain Manag. 2018, 23, 257–277. [Google Scholar] [CrossRef]
  27. Chiles, T.H.; McMackin, J.R. Integrating variable risk preferences, trust, and transaction cost economics. Acad. Manag. J. 1996, 21, 73–99. [Google Scholar] [CrossRef]
  28. Naghshineh, B.; Lotfi, M. Enhancing supply chain resilience: An empirical investigation. Contin. Resil. Rev. 2019, 1, 47–62. [Google Scholar] [CrossRef]
  29. Scholten, K.; Schilder, S. The role of collaboration in supply chain resilience. Supply Chain Manag. 2015, 20, 471–484. [Google Scholar] [CrossRef]
  30. Faruquee, M.; Paulraj, A.; Irawan, C.A. Strategic supplier relationships and supply chain resilience: Is digital transformation that precludes trust beneficial? Int. J. Oper. Prod. Manag. 2021, 41, 1192–1219. [Google Scholar] [CrossRef]
  31. Wu, I.L.; Chuang, C.H.; Hsu, C.H. Information sharing and collaborative behaviors in enabling supply chain performance: A social exchange perspective. Int. J. Prod. Econ. 2014, 148, 122–132. [Google Scholar] [CrossRef]
  32. Wang, Y.; Li, G.H.; Lu, H.L.; Huang, L. The impact of relational governance on b2b brand performance. Chin. J. Manag. 2021, 18, 1040–1048. [Google Scholar]
  33. Feng, H.; Liang, L.L. Research on the interaction between firm’s relationship capital and supply chain capability-based on the perspective of information sharing capability and supply chain flexibility. J. China Univ. Geosci. 2016, 16, 122–133. [Google Scholar] [CrossRef]
  34. Stephen, E.; Michael, D.H.; Christian, S. Supplier Relationship Management: How to Maximize Vendor Value and Opportunity; Apress LP: Berkeley, CA, USA, 2014; pp. 144–155. [Google Scholar]
  35. Villena, V.H.; Choi, T.Y.; Revilla, E. Revisiting interorganizational trust: Is more always better or could more be worse? J. Manag. 2019, 45, 752–785. [Google Scholar] [CrossRef]
  36. Diogo, C.; Fabrizio, S. Exploring the antecedents of organizational resilience practices–A transactive memory systems approach. Int. J. Oper. Prod. Manag. 2020, 40, 1531–1559. [Google Scholar] [CrossRef]
  37. Gligor, D.M.; Esmark, C.L.; Holcomb, M.C. Performance outcomes of supply chain agility: When should you be agile? J. Oper. Manag. 2015, 33, 71–82. [Google Scholar] [CrossRef]
  38. Sinha, P.C. Disaster Mitigation Preparedness, Recovery and Response; SBS Publishers and Distributors Pvt. Ltd.: New Delhi, India, 2006. [Google Scholar]
  39. Srinivasan, M.; Mukherjee, D.; Gaur, A.S. Buyer–supplier partnership quality and supply chain performance: Moderating role of risks, and environmental uncertainty. Eur. Manag. J. 2011, 29, 260–271. [Google Scholar] [CrossRef]
  40. Tarigan, Z.J.H.; Mochtar, J.; Basana, S.R.; Siagian, H. The effect of competency management on organizational performance through supply chain integration and quality. Uncertain Supply Chain Manag. 2021, 9, 283–294. [Google Scholar] [CrossRef]
  41. Liu, C.L.; Lee, Y.M. Integration, supply chain resilience, and service performance in third-party logistics providers. Int. J. Logist. Manag. 2018, 29, 5–21. [Google Scholar] [CrossRef]
  42. Brandon-Jones, E.; Squire, B.; Autry, C.W.; Petersen, K.J. A contingent resource-based perspective of supply chain resilience and robustness. J. Supply Chain Manag. 2014, 50, 55–73. [Google Scholar] [CrossRef] [Green Version]
  43. Juttner, U.; Maklan, S. Supply chain resilience in the global financial crisis: An empirical study. Supply Chain Manag. 2011, 16, 246–259. [Google Scholar] [CrossRef]
  44. Srinivasan, R.; Swink, M. An investigation of visibility and flexibility as complements to supply chain analytics: An organizational information processing theory perspective. Prod. Oper. Manag. 2018, 27, 1849–1867. [Google Scholar] [CrossRef]
  45. Manning, L.; Soon, J.M. Building strategic resilience in the food supply chain. Brit. Food J. 2016, 118, 1477–1493. [Google Scholar] [CrossRef]
  46. Liu, C.L.; Shang, K.C.; Lirn, T.C.; Lai, K.H.; Lun, Y.H. Supply chain resilience, firm performance, and management policies in the liner shipping industry. Transp. Res. Part A Policy Pract. 2018, 110, 202–219. [Google Scholar] [CrossRef]
  47. Bode, C.; Macdonald, J.R. Stages of supply chain disruption response: Direct, constraining, and mediating factors for impact mitigation. Decis. Sci. 2017, 48, 836–874. [Google Scholar] [CrossRef]
  48. Bowers, C.; Kreutzer, C.; Cannon-Bowers, J.; Lamb, J. Team resilience as a second-order emergent state: A theoretical model and research directions. Front. Psychol. 2017, 8, 1360. [Google Scholar] [CrossRef]
  49. Fattahi, M.; Govindan, K.; Keyvanshokooh, E. Responsive and resilient supply chain network design under operational and disruption risks with delivery lead-time sensitive customers. Logist. Transp. Rev. 2017, 101, 176–200. [Google Scholar] [CrossRef]
  50. Chiffoleau, Y.; Brit, A.C.; Monnier, M.; Akermann, G.; Lenormand, M.; Saucède, F. Coexistence of supply chains in a city’s food supply: A factor for resilience? Rev. Agric. Food Environ. Stud. 2020, 101, 391–414. [Google Scholar] [CrossRef]
  51. Stone, J.; Rahimifard, S. Resilience in Agri-Food supply chains: A critical analysis of the literature and synthesis of a novel framework. Supply Chain Manag. 2018, 23, 207–238. [Google Scholar] [CrossRef] [Green Version]
  52. Azadegan, A.; Parast, M.M.; Lucianetti, L.; Nishant, R.; Blackhurst, J. Supply chain disruptions and business continuity: An empirical assessment. Decis. Sci. 2020, 51, 38–73. [Google Scholar] [CrossRef]
  53. Li, X.; Wu, Q.; Holsapple, C.W.; Goldsby, T. An empirical examination of firm financial performance along dimensions of supply chain resilience. Manag. Res. Rev. 2017, 40, 254–269. [Google Scholar] [CrossRef]
  54. Zaheer, A.; Venkatraman, N. Relational governance as an interorganizational strategy: An empirical test of the role of trust in economic exchange. Strateg. Manag. J. 1995, 16, 373–392. [Google Scholar] [CrossRef]
  55. Rousseau, D.M.; Sitkin, S.B.; Burt, R.S.; Camerer, C. Not so different after all: A cross-discipline view of trust. Acad. Manag. Rev. 1998, 23, 393–404. [Google Scholar] [CrossRef] [Green Version]
  56. Lewicki, R.J.; Tomlinson, E.C.; Gillespie, N. Models of interpersonal trust development: Theoretical approaches, empirical evidence, and future directions. J. Manag. 2016, 32, 991–1022. [Google Scholar] [CrossRef]
  57. Li, T.; Qiao, C.L.; Yang, P. Function mechanism of supply chain inter-firm trust on supply chain enterprises organizational improvisation: Based on study of supply chain flexibility and transitive memory system. Nankai Bus. Rev. Nt. 2018, 21, 74–84. [Google Scholar]
  58. Poppo, L.; Zhou, K.Z.; Li, J.J. When can you trust ‘trust’? Calculative trust, relational trust, and supplier performance. Strateg. Manag. J. 2016, 37, 724–741. [Google Scholar] [CrossRef] [Green Version]
  59. Ye, F.; Xu, X.J. Impact of trust and relationship commitment among supply chain partners on information sharing and operational performance. Syst. Eng. Theory Pract. 2009, 29, 36–49. [Google Scholar]
  60. Zhang, X.M.; Chen, W. Trust, relationship commitment and cooperative performance in supply chain—An empirical study based on the perspective of knowledge trading. Stud. Sci. Sci. 2011, 29, 1865–1874. [Google Scholar] [CrossRef]
  61. Das, T.K.; Teng, B.S. Trust, control, and risk in strategic alliances: An integrated framework. Organ. Stud. 2001, 22, 251–283. [Google Scholar] [CrossRef] [Green Version]
  62. Fernandez, O.M. The moderating role of trust in contractual choice. Br. Food J. 2011, 113, 374–390. [Google Scholar] [CrossRef]
  63. He, Y.; Lai, K.K.; Sun, H.; Chen, Y. The impact of supplier integration on customer integration and new product performance: The mediating role of manufacturing flexibility under trust theory. Int. J. Prod. Econ. 2014, 147, 260–270. [Google Scholar] [CrossRef]
  64. Doney, P.M.; Cannon, J.P. An examination of the nature of trust in buyer–seller relationships. J. Mark. 1997, 61, 35–51. [Google Scholar] [CrossRef]
  65. Poppo, L.; Zhou, K.Z.; Kevin, Z.; Ryu, S. Alternative origins to interorganizational Trust: An interdependence perspective on the shadow of the past and the shadow of the Future. Organ. Sci. 2008, 19, 39–55. [Google Scholar] [CrossRef] [Green Version]
  66. Wang, Z.; Ye, F.; Tan, K.H. Effects of managerial ties and trust on supply chain information sharing and supplier opportunism. Int. J. Prod. Res. 2014, 52, 7046–7061. [Google Scholar] [CrossRef]
  67. Cadden, T.; Marshall, D.; Cao, G. Opposites Attract: Organisational Culture and Supply Chain Performance. Supply Chain Manag. 2013, 18, 86–103. [Google Scholar] [CrossRef] [Green Version]
  68. Vlachos, P.I.; Bourlakis, M. Supply chain collaboration between retailers and manufacturers, do they trust each other? Supply Chain Forum Int. J. 2006, 7, 70–80. [Google Scholar] [CrossRef]
  69. Hou, Y.Z.; Wang, X.L.; Wu, Y.C.; He, P.X. How does the trust affect the topology of supply chain network and its resilience? An agent-based approach. Transp. Res. E-Logist. 2018, 116, 229–241. [Google Scholar] [CrossRef]
  70. Dyer, J.H.; Singh, H. The relational view: Cooperative strategy and sources of inter-organisational competitive advantage. Acad. Manag. Rev. 1998, 23, 660–679. [Google Scholar] [CrossRef] [Green Version]
  71. McEvily, B.; Marcus, A. Embedded ties and the acquisition of competitive capabilities. Strateg. Manag. J. 2005, 26, 1033–1055. [Google Scholar] [CrossRef]
  72. Bode, C.; Wagner, S.M.; Petersen, K.; Ellram, L. Understanding responses to supply chain disruptions: Insights from information processing and resource dependence perspectives. Acad. Manag. J. 2011, 54, 833–856. [Google Scholar] [CrossRef]
  73. Cook, K. Trust in Society; Sage: New York, NY, USA, 2003. [Google Scholar]
  74. Faisal, M.; Banwet, D.; Shankar, R. Information risks management in supply chains: An assessment and mitigation framework. J. Enterp. Inf. Manag. 2007, 20, 677–699. [Google Scholar] [CrossRef]
  75. Mandal, S.; Sarathy, R.; Korasiga, V.R.; Bhattacharya, S.; Dastidar, S.G. Achieving supply chain resilience: The contribution of logistics and supply chain capabilities. Int. J. Disaster Resil. 2016, 7, 544–562. [Google Scholar] [CrossRef]
  76. Spekman, R.E.; Kamauff, J.W., Jr.; Myhr, N. An empirical investigation into supply chain management: A perspective on partnerships. Int. J. Phys. Distr. Logist. 1998, 28, 630–650. [Google Scholar] [CrossRef]
  77. Oliveira, N.; Lumineau, F. The dark side of interorganizational relationships: An integrative review and research agenda. J. Manag. 2019, 45, 231–261. [Google Scholar] [CrossRef] [Green Version]
  78. Dyer, J.H.; Singh, H.; Hesterly, W.S. The relational view revisited: A dynamic perspective on value creation and value capture. Strateg. Manag. J. 2018, 39, 3140–3162. [Google Scholar] [CrossRef]
  79. Kumar, P.; Kumar, S.R. Strategic framework for developing resilience in agri-food supply chains during COVID 19 pandemic. Int. J. Logist.-Res. Appl. 2021. [Google Scholar] [CrossRef]
  80. Sarkis, J.; Gonzalez-Torre, P.; Adenso-Diaz, B. Stakeholder pressure and the adoption of environmental practices: The mediating effect of training. J. Oper. R Manag. 2010, 28, 163–176. [Google Scholar] [CrossRef]
  81. Fan, Y.Y.; Stevenson, M.; Li, F. Supplier-initiating risk management behaviour and supply-side resilience: The effects of interpersonal relationships and dependence asymmetry in buyer-supplier relationships. Int. J. Oper. Prod. Manag. 2020, 40, 971–995. [Google Scholar] [CrossRef]
  82. Frohlich, M.T.E. Integration in the supply chain: Barriers and performance. Decis. Sci. 2002, 33, 537–556. [Google Scholar] [CrossRef]
  83. Kumar, S.; Raut, R.D.; Narwane, V.S.; Narkhede, B.E. Applications of industry 4.0 to overcome the COVID-19 operational challenges. Diabetes Metab. Syndr. Clin. Res. Rev. 2020, 14, 1283–1289. [Google Scholar] [CrossRef]
  84. Li, G.; Yang, H.; Sun, L. The impact of IT implementation on supply chain integration and performance. Int. J. Prod. Econ. 2009, 120, 125–138. [Google Scholar] [CrossRef]
  85. Philip, G.; Booth, M.E. A new six ‘S’ framework on the relationship between the role of information systems (IS) and competencies in ‘IS’ management. J. Bus. Res. 2001, 51, 233–247. [Google Scholar] [CrossRef]
  86. Daugherty, P.J. Review of logistics and supply chain relationship literature and suggested research agenda. Int. J. Phys. Distr. Logist. 2011, 41, 16–33. [Google Scholar] [CrossRef]
  87. Piprani, A.Z.; Mohezar, S.; Jaafar, N.I. Supply chain integration and supply chain performance: The mediating role of supply chain resilience. Int. J. Supply Chain Manag. 2020, 9, 58–73. [Google Scholar]
  88. Munir, M.; Sadiq, J.M.S.; Chatha, K.A.; Farooq, S. Supply chain risk management and operational performance: The enabling role of supply chain integration. Int. J. Prod. Econ. 2020, 227, 107667. [Google Scholar] [CrossRef]
  89. Ding, M.J.; Jie, F.; Parton, K.A.; Matanda, M.J. Relationships between quality of information sharing and supply chain food quality in the australian beef processing industry. Int. J. Logist. Manag. 2014, 25, 85–108. [Google Scholar] [CrossRef]
  90. Trivellas, P.; Malindretos, G.; Reklitis, P. Implications of green logistics management on sustainable business and supply chain performance: Evidence from a survey in the Greek Agri-Food sector. Sustainability 2020, 12, 10515. [Google Scholar] [CrossRef]
  91. Reklitis, P.; Sakas, D.P.; Trivellas, P.; Tsoulfas, G.T. Performance implications of aligning supply chain practices with competitive advantage: Empirical evidence from the Agri-Food sector. Sustainability 2021, 13, 8734. [Google Scholar] [CrossRef]
  92. Parashar, S.; Sood, G.; Agrawal, N. Modelling the enablers of food supply chain for reduction in carbon footprint. J. Clean Prod. 2020, 275, 122932. [Google Scholar] [CrossRef]
  93. Aslam, H.; Khan, A.Q.; Rashid, K.; Rehman, S.-U. Achieving supply chain resilience: The role of supply chain ambidexterity and supply chain agility. J. Manuf. Technol. Manag. 2020, 31, 1185–1204. [Google Scholar] [CrossRef]
  94. Prajogo, D.; Olhager, J. Supply chain integration and performance: The effects of long-term relationships, information technology and sharing, and logistics integration. Int. J. Prod. Econ. 2012, 135, 514–522. [Google Scholar] [CrossRef]
  95. Xu, K.; Dong, Y.; Evers, P.T. Towards better coordination of the supply chain. Transp. Res. E-Logist. 2001, 37, 35–54. [Google Scholar] [CrossRef]
  96. Pulkkinen, M.; Naumenko, A.; Luostarinen, K. Managing information security in a business network of machinery maintenance services business-enterprise architecture as a coordination tool. J. Syst. Softw. 2007, 80, 1607–1620. [Google Scholar] [CrossRef]
  97. Bharadwaj, A.S. A Resource-based perspective on information technology capability and firm performance: An empirical investigation. MIS Quart. 2000, 24, 169–196. [Google Scholar] [CrossRef]
  98. Müller, M.; Gaudig, S. An empirical investigation of antecedents to information exchange in supply chains. Int. J. Prod. Res. 2011, 49, 1531–1555. [Google Scholar] [CrossRef] [Green Version]
  99. Sinha, P.R.; Whitman, L.E.; Malzahn, D. Methodology to mitigate supplier risk in an aerospace supply chain. Supply Chain Manag. 2004, 9, 154–168. [Google Scholar] [CrossRef]
  100. Zhang, Q.H.; Liu, Z.Y.; Yan, J. Information technology and relational governance: The moderating effect of special investment. Nankai Bus. Rev. Nt. 2010, 13, 125–133. [Google Scholar]
  101. Paulraj, A.; Lado, A.A.; Chen, I.J. Inter-organisational communication as a relational competency: Antecedents and performance outcomes in collaborative buyer–supplier relationships. J. Oper. Manag. 2008, 26, 45–64. [Google Scholar] [CrossRef]
  102. Kwon, I.W.G.; Suh, T. Factors affecting the level of trust and commitment in supply chain relationships. J. Supply Chain Manag. 2004, 40, 4–14. [Google Scholar] [CrossRef]
  103. Mohr, J.; Spekman, R. Characteristics of partnership success-partnership attributes, communication behavior, and conflict-resolution techniques. Strateg. Manag. J. 1994, 15, 135–152. [Google Scholar] [CrossRef]
  104. Moshtari, M. Inter-Organizational fit, relationship management capability, and collaborative performance within a humanitarian setting. Prod. Oper. Manag. 2016, 25, 1542–1557. [Google Scholar] [CrossRef]
  105. Dubey, R.; Gunasekaran, A.; Childe, S.J.; Roubaud, D.; Wamba, S.F.; Giannakis, M.; Foropon, C. Big Data analytics and organizational culture as complements to swift trust and collaborative performance in the humanitarian supply chain. Int. J. Prod. Econ. 2019, 210, 120–136. [Google Scholar] [CrossRef]
  106. Li, S.C.; Yang, G.Q. Research on the impact of IT capability and information sharing against the R&D collaboration between enterprises. Sci. Res. Manag. 2008, 29, 55–63. [Google Scholar] [CrossRef]
  107. Shan, S.; Luo, Y.; Zhou, Y.; Wei, Y. Big Data analysis adaptation and enterprises’ competitive advantages: The perspective of dynamic capability and resource-based theories. Technol. Anal. Strateg. 2019, 31, 406–420. [Google Scholar] [CrossRef]
  108. Nandi, M.L.; Nandi, S.; Moya, H.; Kaynak, H. Blockchain technology-enabled supply chain systems and supply chain performance: A resource-based view. Supply Chain Manag. 2020, 25, 841–862. [Google Scholar] [CrossRef]
  109. Chin, W.W. The Partial Least Squares Approach to Structural Equation Modeling. Modern Methods for Business Research; Marcoulides, G.A., Ed.; Erlbaum: Mahwah, NJ, USA, 1998; pp. 295–358. [Google Scholar]
  110. Nunnally, J. Psychometric Methods; McGraw-Hill: New York, NY, USA, 1978. [Google Scholar]
  111. Baron, R.M.; Kenny, D.A. The moderator-mediator variable distinction in social psychological research: Conceptual, strategic, and statistical considerations. J. Pers. Soc Psychol. 1986, 51, 1173–1182. [Google Scholar] [CrossRef]
  112. MacKinnon, D. Introduction to Statistical Mediation Analysis; Routledge: London, UK, 2008. [Google Scholar]
  113. Preacher, K.J.; Hayes, A.F. SPSS and SAS procedures for estimating indirect effects in simple mediation models. Behav. Res. Methods Instrum. Comput. 2004, 36, 717–731. [Google Scholar] [CrossRef] [Green Version]
  114. Kroes, J.R.; Ghosh, S. Outsourcing congruence with competitive priorities: Impact on supply chain and firm performance. J. Oper. Manag. 2010, 28, 124–143. [Google Scholar] [CrossRef]
  115. Riley, J.M.; Klein, R.; Miller, J.; Sridharan, V. How internal integration, information sharing, and training affect supply chain risk management capabilities. Int. J. Phys. Distr. Logist. 2016, 46, 953–980. [Google Scholar] [CrossRef]
  116. Feng, H.; Nie, L.; Hai, F. Research on the interaction between information sharing level and SC capability: A Mediating Effect of Social Control. Nankai Bus. Rev. Nt. 2018, 21, 85–92. [Google Scholar]
  117. Podsakoff, P.M.; Mackenzie, S.B.; Lee, J.Y.; Podsakoff, N.P. Common method biases in behavioral research: A critical review of the literature and recommended remedies. J. Appl. Psychol. 2003, 88, 879–903. [Google Scholar] [CrossRef]
  118. Tortorella, G.L.; Giglio, R.; Dun, D.H. Industry 4.0 adoption as a moderator of the impact of lean production practices on operational performance improvement. Int. J. Oper. Prod. Manag. 2019, 39, 860–886. [Google Scholar] [CrossRef]
  119. Mitchell, T. An evaluation of the validity of correlational research conducted in organisations. Acad. Manag. Rev. 1985, 10, 192. [Google Scholar] [CrossRef]
  120. Podsakoff, P.M.; Organ, D.W. Self-reports in organizational research-problems and prospects. J. Manag. 1986, 12, 531–544. [Google Scholar] [CrossRef]
  121. Williams, L.J.; Cote, J.A.; Buckley, M.R. Lack of method variance in self-reported affect and perceptions at work: Reality or artifact. J. Appl. Psychol. 1989, 74, 462–468. [Google Scholar] [CrossRef]
  122. Li, G.; Li, L.; Choi, T.M.; Sethi, S.P. Green supply chain management in Chinese firms: Innovative measures and the moderating role of quick response technology. J. Oper. Manag. 2020, 66, 958–988. [Google Scholar] [CrossRef]
  123. Kline, R. Methodology in the Social Sciences: Principles and Practice of Structural Equation Modeling, 2nd ed.; Guilford Press: New York, NY, USA, 2005. [Google Scholar]
  124. Fornell, C.; Larcker, D.F. Structural equation models with unobservable variables and measurement error: Algebra and statistics. J. Mark. Res. 1981, 18, 382–388. [Google Scholar] [CrossRef]
  125. Deng, Z.; Mo, X.; Liu, S. Comparison of the middle-aged and older users’ adoption of mobile health services in China. Int. J. Med. Inform. 2014, 83, 210–224. [Google Scholar] [CrossRef]
  126. Hu, L.T.; Bentler, P.M. Cutoff criteria for fit indexes in covariance structure analysis: Conventional criteria versus new alternatives. Struct. Equ. Modeling 1999, 6, 1–55. [Google Scholar] [CrossRef]
  127. Shrout, P.E.; Bolger, N. Mediation in experimental and non-experimental studies: New procedures and recommendations. Psychol. Methods 2002, 7, 422–445. [Google Scholar] [CrossRef]
  128. Datta, P.P.; Christopher, M.; Allen, P. Agent-based modelling of complex production/distribution systems to improve resilience. Int. J. Logist.-Res. Appl. 2007, 10, 187–203. [Google Scholar] [CrossRef]
  129. Pereira, J.V. The new supply chain’s frontier: Information management. Int. J. Inf. Manag. 2009, 29, 372–379. [Google Scholar] [CrossRef]
  130. Golgeci, I.; Ponomarov, S.Y. Does firm innovativeness enable effective responses to supply chain disruptions? An empirical study. Supply Chain Manag. 2013, 18, 604–617. [Google Scholar] [CrossRef]
  131. Pettit, T.J.; Croxton, K.L.; Fiksel, J. Ensuring supply chain resilience: Development and implementation of an assessment tool. J. Bus. Logist. 2013, 34, 46–76. [Google Scholar] [CrossRef]
  132. Poppo, L.; Zenger, T. Do formal contracts and relational governance function as substitutes or complements? Strateg. Manag. J. 2002, 23, 707–725. [Google Scholar] [CrossRef]
  133. Liu, Y.; Luo, Y.; Liu, T. Governing buyer–supplier relationships through transactional and relational mechanisms: Evidence from China. J. Oper. Manag. 2009, 27, 294–309. [Google Scholar] [CrossRef]
  134. Ryall, M.D.; Sampson, R.C. Formal contracts in the presence of relational enforcement mechanisms: Evidence from technology development projects. Manag. Sci. 2009, 55, 906–925. [Google Scholar] [CrossRef]
  135. Huber, T.; Fischer, T.A.; Dibbern, J.; Hirschheim, R. A process model of complementarity and substitution of contractual and relational governance in IS outsourcing. J. Manag. Inform. Syst. 2013, 30, 81–114. [Google Scholar] [CrossRef]
  136. Adobor, H. Supply chain resilience: A multi-level framework. Int. J. Logist. Manag. 2019, 22, 533–556. [Google Scholar] [CrossRef]
  137. Schmoltzi, C.; Wallenburg, C.M. Operational governance in horizontal cooperation of logistics service providers: Performance effects and the moderating role of cooperation complexity. J. Supply Chain Manag. 2012, 48, 53–74. [Google Scholar] [CrossRef]
Figure 1. Theoretical model.
Figure 1. Theoretical model.
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Figure 2. The main process of statistical analysis methods.
Figure 2. The main process of statistical analysis methods.
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Figure 3. Structure Equation Model.
Figure 3. Structure Equation Model.
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Table 1. Descriptive statistics.
Table 1. Descriptive statistics.
DescriptionFrequenciesPercentage
Nature of enterprisesState-Owned or State-Owned Holding8023%
Private Enterprise22865%
Foreign-Owned or Sino-Foreign Joint Ventures.103%
Other339%
Industry typeFood and Beverage7321%
Metallurgical Manufacturing and Processing/Industry of Metal Products/Mechanical and Equipment5115%
Pharmaceutical/Chemical Raw Materials and Chemical Products6218%
Textile and Clothing4112%
Wood Furniture/Paper Printing/Sports Goods4412%
Communications Equipment, Computers and Other Electronic Equipment5014%
Others309%
Enterprise size (Employee
Number)
1–50257%
51–3004513%
301–200013839%
>200114341%
Table 2. Reliability and Convergent Validity.
Table 2. Reliability and Convergent Validity.
Constructs and ItemsCodingFL
Trust Relationship with Suppliers (CR = 0.9101, AVE = 0.5916, α = 0.953)TRS
Our company trusts our suppliers to understand us when we share issues with them.TRS10.783
We trust our suppliers to be honest and keep their promises.TRS20.811
We trust our suppliers to have adequate personnel and equipment.TRS30.772
We believe that the quality and quantity of products delivered by our suppliers meet the contract requirements.TRS40.716
We believe that our suppliers are always ready to help and support us.TRS50.772
Suppliers will consider our interests when making decisions.TRS60.738
Our suppliers share our goal to pursue successful cooperation.TRS70.788
Information-sharing level (CR = 0.9263, AVE = 0.6423, α = 0.961)ISL
The company uses information technology to process information.ISL10.792
We can exchange information electronically with our suppliers.ISL20.799
We have IT system troubleshooting procedures and performance evaluations.ISL30.802
Employees are familiar with the business processes of information systems.ISL40.808
We are willing to provide information to our suppliers that may be helpful to them.ISL50.810
We exchange information with our suppliers in a frequent and timely manner.ISL60.774
We exchange accurate and complete information with our suppliers.ISL70.824
Preparedness (CR = 0.9157, AVE = 0.6448, α = 0.922)PPA
We can pre-identify and eliminate potential risk that can be controlled.PPA10.821
Basic safety stocks and buffer stocks can be maintained.PPA20.802
The inventory level is visible.PPA30.806
We have set up personnel to monitor the operation process to prevent accidents.PPA40.848
Material preparedness and personnel training to face disruptions are in place.PPA50.830
There are contingency plans formed based on experience to deal with the disruption.PPA60.703
Responsiveness (CR = 0.9333, AVE = 0.6666, α = 0.935)RPA
The workflow between departments can be flexibly adjusted.RPA10.834
Contingency plans can be quickly carried out and executed.RPA20.835
We can respond quickly to unforeseen emergencies and realign resources.RPA30.798
We can keep our staff and production running steadily to meet the demand of orders.RPA40.829
We can increase or decrease the number of suppliers reasonably.RPA50.810
We can detect the root cause of supply or production disruptions.RPA60.786
We can identify opportunities and risks arising from emergencies quickly based on the knowledge.RPA70.822
Recovery Capability (CR = 0.8897, AVE = 0.5741, α = 0.922)RCA
After interruptions caused by unexpected events such as epidemics, our company can return to a new normal state.RCA10.801
Interruptions can be resolved quickly.RCA20.796
We will quickly restart production to respond to unexpected disruptions.RCA30.771
Basic normal operation of departments can be maintained after an interruption.RCA40.731
We will coordinate resources to reduce the negative impact of disruptions.RCA50.739
We can learn from our experience and integrate resources to cope with the changing environment in the future.RCA60.703
Note. TRS: trust relationship with suppliers; ISL: information-sharing level; PPA: preparedness; RPA: responsiveness; RCA: recovery capability; AVE: average variance extracted; SD: standard deviation; FL: factor loading; CR: composite reliability.
Table 3. Common Method Bias Test.
Table 3. Common Method Bias Test.
χ2/dfRMSEASRMRCFIGFIIFITLI
Original Model1.5090.0380.0410.9760.8920.9760.974
Single-Factor Model9.1750.1530.1230.6120.3870.6130.586
Common Method
Factor Model
1.3090.0300.0330.9870.910.9870.984
Model Fit Variation ΔRMSEAΔSRMRΔCFIΔGFIΔIFIΔTLI
0.0080.008−0.011−0.018−0.011−0.01
Criteria <0.05<0.05<0.1<0.1<0.1<0.1
Table 4. Rotating Component Matrix.
Table 4. Rotating Component Matrix.
Index12345
PPA1 0.782
PPA2 0.773
PPA3 0.784
PPA4 0.797
PPA5 0.789
PPA6 0.676
RPA1 0.820
RPA2 0.824
RPA3 0.790
RPA4 0.821
RPA5 0.801
RPA6 0.777
RPA7 0.825
RCA1 0.599
RCA2 0.711
RCA3 0.663
RCA4 0.698
RCA5 0.687
RCA6 0.629
TRS1 0.788
TRS2 0.814
TRS3 0.777
TRS4 0.721
TRS5 0.778
TRS6 0.744
TRS7 0.794
ISL10.788
ISL20.795
ISL30.799
ISL40.806
ISL50.802
ISL60.759
ISL70.822
Table 5. Correlations and Discriminate Validity.
Table 5. Correlations and Discriminate Validity.
ConstructMeanSDTRSISLPPARPARCA
TRS4.8001.5750.769
ISL4.9241.6680.645 **0.801
PPA3.3181.3400.568 **0.578 **0.803
RPA5.9311.0580.425 **0.439 **0.313 **0.816
RCA4.6791.0020.714 **0.623 **0.618 **0.547 **0.758
Note: All the correlations were significant at ** p < 0.01. Bold values in the diagonal are the square roots of average variance extracted from the constructs.
Table 6. Results of Model Fit.
Table 6. Results of Model Fit.
IndexCMIN/DFRMSEACFIRFIIFINFIPNFIPGFISRMR
Criteria<3<0.1>0.9>0.9>0.9>0.9>0.5>0.5<0.08
Result1.6380.0430.9700.9210.9700.9270.8570.7660.059
Table 7. Path Relationships of the Direct Effects.
Table 7. Path Relationships of the Direct Effects.
HypothesesPathβSEpResults
H1aTRS --> PPA0.3530.051***Supported
H1bTRS --> RPA0.2540.046***Supported
H1cTRS --> RCA0.5740.036***Supported
H2aISL --> PPA0.3820.050***Supported
H2bISL --> RPA0.3000.045***Supported
H2cISL --> RCA0.2960.032***Supported
H3TRS --> ISL0.6760.052***Supported
Note: *** p < 0.001. TRS: trust relationship with suppliers; ISL: information-sharing level; PPA: preparedness; RPA: responsiveness; RCA: recovery capability; SE: Standard error.
Table 8. Mediation Effect Results.
Table 8. Mediation Effect Results.
Bootstrapping
Bias-CorrectedPercentile
95% CI95% CI
Path EstimateSEZlowerupperlowerupper
TRS -> ISL -> PPAIndirect effect0.2020.0365.6110.1350.2750.1340.274
Direct effect0.2880.0515.6470.1950.3930.1950.393
Total effect0.490.03812.8950.4090.5710.4110.576
TRS -> ISL -> RPAIndirect effect0.1260.0383.3160.0560.2060.0550.205
Direct effect0.1710.0523.2880.0720.2780.0720.278
Total effect0.2970.0436.9070.220.3860.2170.383
TRS -> ISL -> RCAIndirect effect0.1180.0353.3710.0570.1930.0540.187
Direct effect0.3580.0487.4580.2690.4540.2690.455
Total effect0.4760.03314.4240.4140.5440.4120.543
Note: TRS: trust relationship with suppliers; ISL: information-sharing level; PPA: preparedness; RPA: responsiveness; RCA: recovery capability; SE: Standard error; CI: Confidence interval.
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Yang, J.; Liu, Y.; Jia, Y. Influence of Trust Relationships with Suppliers on Manufacturer Resilience in COVID-19 Era. Sustainability 2022, 14, 9235. https://doi.org/10.3390/su14159235

AMA Style

Yang J, Liu Y, Jia Y. Influence of Trust Relationships with Suppliers on Manufacturer Resilience in COVID-19 Era. Sustainability. 2022; 14(15):9235. https://doi.org/10.3390/su14159235

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Yang, Jianhua, Yuying Liu, and Yajun Jia. 2022. "Influence of Trust Relationships with Suppliers on Manufacturer Resilience in COVID-19 Era" Sustainability 14, no. 15: 9235. https://doi.org/10.3390/su14159235

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