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Article

Research on Credit Evaluation Indicator System of High-Tech SMEs: From the Social Capital Perspective

1
School of Information Technology and Management, University of International Business and Economics, Beijing 100029, China
2
Department of Network Security and Information Technology, University of International Business and Economics, Beijing 100029, China
*
Author to whom correspondence should be addressed.
Systems 2023, 11(3), 141; https://doi.org/10.3390/systems11030141
Submission received: 20 January 2023 / Revised: 18 February 2023 / Accepted: 2 March 2023 / Published: 7 March 2023

Abstract

:
High-tech small- and medium-sized enterprises (SMEs) play an important role in the high-quality economic development in a country. Nevertheless, due to the difficulties banks or other financial institutions have in accurately assessing their credit levels, financing difficulties have become the biggest bottleneck restricting the progress of high-tech SMEs, and therefore, this paper aims to construct a credit evaluation indicator system of high-tech SMEs. Based on prior studies and the characteristics of high-tech SMEs, this paper constructs an indicator system from financial and nonfinancial dimensions, including 22 measurement indicators reflecting the operation status, development potential, quality, and competitiveness of an enterprise. Principal component analysis (PCA) and a Delphi-analytic hierarchy process (AHP) method are employed for the evaluation. This indicator system innovates from the social capital perspective, and by setting more novel nonfinancial indicators, the system achieves a more comprehensive evaluation of credit level. This paper also performs an empirical application using the data from 125 enterprises in the Beijing–Tianjin–Hebei region of China, and further performs an empirical study on the external environment’s impact on the credit level. The empirical results all show consistency with existing studies, verifying the workability and validity of the indicator system we constructed.

1. Introduction

High-tech enterprises are those which utilize engineering and science more than the average industry norm, with characteristics of high innovation and significant development potential [1]. They are the main sources of creation, innovation, and transformation of technology, playing an essential role in promoting high-quality growth of the economy [2,3,4]. Among enterprises, small- and medium-sized enterprises (SMEs) are significantly different from large-sized ones. The criteria defining SMEs are usually based on certain items which reflect the enterprise scale, such as the number of employees, sales value, etc. But the definition is not universal, varying from country to country, and from one institution to another [5]. Except for the scale difference, SMEs additionally have some features, such as strengths of reactivity and flexibility, and the weaknesses of resource limitation and fund shortage [6].
High-tech SMEs are the most active groups in the innovation market [7]; however, they often suffer from obtaining financial support from credit institutions, and even go bankrupt due to a break in the capital chain, which has always been a major constraint on their growth and development [8]. This may be because there is information asymmetry between high-tech SMEs and the credit market, such as incomplete financial system records and information opacity [9,10]. Whether credit institutions pass loan applications for enterprises heavily depends on their credit level [11]. In other words, if financial institutions can better predict the credit levels of high-tech SMEs, the efficiency of the loan can be improved greatly [12].
The purpose of this paper is to construct a credit evaluation indicator system to accurately and comprehensively assess the credit level of high-tech SMEs. With regard to the credit evaluation systems of high-tech SMEs, early research focused on financial indicators such as operating capacity, solvency, profitability, and growth capacity [13,14]. With the deepening of research, scholars began to add some nonfinancial indicators to the evaluation system such as innovation ability and public supervision [15,16]. Although the existing research on the construction of the indicator system has been relatively comprehensive, the vital impact of social capital on enterprise credit has been ignored. The term “social capital” is the sum of the actual and potential resources embedded within, available through, and derived from the network of relationships possessed by an individual or social unit [17]. Previous studies have shown that high social capital represents a high level of external trust for individuals and social units [18,19]. Considering the importance of social capital in the evaluation of credit levels, we construct an indicator system of high-tech SMEs from the perspective of social capital.
According to the previous indicator setting and characteristics of high-tech SMEs, the indicator system, with an emphasis on nonfinancial indicators, consists of four first-level indicators, eight second-level indicators, and twenty-two third-level indicators. This paper utilizes the data from 125 enterprises in the Beijing–Tianjin–Hebei region of China to calculate the credit levels of three provincial administrative regions, verifying the workability and effectiveness of the indicator system. Subsequently, this paper conducts an empirical study on the impact of the external environment on the regional credit level, results of which show consistency with existing research, further demonstrating the robustness of the indicator system. This indicator system plays an important role in helping financial institutions identify the credit and qualification of enterprises, and thus make their lending decisions, contributing to broadening financing channels for SMEs [15]. At the same time, benefiting from the credit level evaluation results, high-tech SMEs are more willing to regulate their behavior in a targeted way, which will further alleviate the capital constraints they face [13].
The remainder of this paper is organized as follows. Section 2 summarizes the previous literature relevant to this study. Section 3 shows the construction and empirical application of the credit level evaluation indicator system. Section 4 further conducts an empirical study on the impact of the external environment on the credit level to verify the validity of the evaluation results. Section 5 concludes and points out the contributions of this paper.

2. Literature Review

2.1. Credit Evaluation Indicator Systems of High-Tech SMEs

Credit evaluation is popular in existing studies of SMEs, and various methods such as model evaluation [20,21] and indicator system evaluation have been adopted in relevant literatures to study such issues. We are concerned with the latter, which has become one hotspot in this field [22], but there is still a lot of room for research. Table 1 summarizes some of the credit evaluation indicator systems for high-tech SMEs using this method.
Financial characteristics usually reflect the financial performance and repayment ability of SMEs [25]. As shown in Table 1, all of the scholars pay attention to financial characteristics and set financial indicators in the evaluation system they developed [15,16]. Among all financial attributes, solvency, profitability, operating capability, and growth capability are the most common, which can be measured by some specific indicators [13,14,23,24]. As for solvency, it is usual to use the current ratio, asset liability ratio and other relevant indicators for measurement [24]. With regard to profitability, scholars usually use ROE (Return on Equity) to measure [13]. As to the operating capability attribute, the turnover index can well reflect the actual performance [14], such as the accounts receivable turnover, inventory turnover, etc. Growth capability, unlike other attributes, reflects the long-term survival of enterprises, which is usually measured by certain growth rate indicators, such as the net profit growth rate [14].
Although financial indicators can be used as objective quantitative information to measure the credit level of SMEs, previous studies have also stated that the majority of SMEs are not listed on the financial market, and their financial statements may be incomplete or unaudited [26], resulting in the widespread of financial information distortion of high-tech SMEs [24]. This is a global problem and it has been suggested that existing market arrangements and regulatory oversight should be strengthened to ensure the truthful disclosure of financial quality [27]. Therefore, some studies have begun to shift their focus to nonfinancial indicators in the credit evaluation of SMEs [28], such as management style [29], production efficiency, business plans, public supervision [30,31,32], etc. With the deepening of research in this field, more nonfinancial indicators have been proposed and used to evaluate the credit level of high-tech SMEs. For example, distributor and customer networks and supply chain information provide the material of relevant external subjects of enterprises, the corporate resume and awards won by enterprises reflect the public perception of the corporate image, and the innovation ability and development prospects highlight the soft power of enterprises to a certain extent [30,33,34]. However, SMEs usually lack sophisticated information disclosure mechanisms [35,36], and therefore there is also a significant challenge in obtaining nonfinancial information and verifying its authenticity.

2.2. Influencing Factors of Enterprise Credit

According to existing research, the influencing factors of enterprise credit can be broadly divided into two aspects: internal factors and external factors. In terms of internal factors, Altman (1968) [37] found that the solvency, profitability, liquidity, asset scale, and asset utilization efficiency of enterprises may have greater influence on enterprise credit levels. Zhang et al. (2013) [38] performed a comprehensive analysis, the result of which also showed that the financial situation and innovation capacity have a significant effect on the credit risk of high-tech enterprises. In addition, some studies focus on one specific factor, among which Bao et al. (2020) [39] found that other comprehensive income (OCI) volatility influences the credit rating, and Cao et al. (2022) [40] substantiated the impact of innovation strategies on enterprise credit.
Previous studies have shown that external environmental factors, such as the social environment, economic environment, political environment, cultural environment and so on, may have influence on the credit levels of enterprises. For example, Liu and Zeng (2014) [41] found that government supervision and the punishment of dishonesty enable enterprises to choose different credit strategies. Chi and Li (2017) examined the effects of economic policy uncertainty on banks’ credit risks [42]. Li et al. (2020) indicated that culture plays a vital role in fostering honesty and thus promoting credit levels [43]. Zhao and Chen (2022) [44] concluded that government departments, financial institutions, and other stockholders all have different degrees of influence on enterprise credit risk.

2.3. Comment on Literature

In sum, although the current research on the credit evaluation of high-tech SMEs has gradually deepened, and a considerable number of evaluation systems have been formed, the selection of specific indicators still needs to be improved. For example, some indicators measuring the social capital can be added. Furthermore, most existing studies have focused on verifying the effects of certain single factors, and studies related to comprehensive credit evaluation need to be supplemented urgently. Considering that most of the internal influencing factors in existing studies have a high degree of coincidence with the selection of credit evaluation system indicators, this paper chooses external variables as influencing factors to carry out the empirical test.

3. Research on Credit Evaluation Indicator System of High-Tech SMEs

3.1. Construction of Indicator System

Based on previous research and the characteristics of high-tech SMEs, an evaluation indicator system was constructed in accordance with the basic design principles, meaning that it must be scientific, objective, complete, and workable [45]. The indicator system is generally divided into financial and nonfinancial dimensions. For high-tech SMEs, financial indicators are the intuitive and direct mapping of the performance over the past period, while nonfinancial indicators reflect the status of other aspects [24].

3.1.1. Financial Indicators

A total of 10 third-level financial indicators (x1–x10 in Table 2) were selected under the four second-level indicators of operating capacity, solvency, profitability, and growth capacity. Operating capacity refers to the asset operation efficiency of an enterprise [14]. Solvency refers to the ability to repay debt [23]. Profitability refers to the capacity to make a profit [14], and growth capacity refers to the ability to extend the existing business [13]. The first describes the operation status of an enterprise, while the last three manifest the enterprise development potential.
The design of the financial indicators in this paper drew on well-established practices from the existing literature [13,14,15], while innovation and development took place mainly in nonfinancial indicators. Therefore, nonfinancial indicators are presented in detail below.

3.1.2. Nonfinancial Indicators

We constructed two first-level indicators, four second-level indicators, and twelve third-level indicators (x11–x22 in Table 2) for nonfinancial indicators. One of the first-level indicators is enterprise quality, which contains two second-level indicators of enterprise credit activity records and external evaluation. Another is enterprise competitiveness, which also sets two second-level indicators of innovation ability and social capital. The descriptions of these indicators are as follows:
Enterprise credit activity records: “Tax credit rating (x11)” was included to measure the credit level from the perspective of taxation, reflecting the fundamental credit activity of an enterprise [46]. “Number of lawsuits (x12)” judges whether SMEs operate in compliance [45].
External evaluation: “Risk information (x13)” describes the enterprise risk objectively assessed by external organizations [47], and we summed the self-risk, related risk, and prompt risk provided by a public information inquiry platform to measure this indicator. “Public opinion information (x14)” dynamically responds to external public opinion evaluation of an enterprise [48]. In this paper, the ratio of positive information to negative information was used as the proxy variable of this indicator.
Innovation capability: Based on the “R&D investment (x16)” [14] which is commonly used in existing studies to measure the innovation capability, this paper added “total content of scientific and technological innovation (x15)” and “patent implementation rate (x17)” to measure the achievement level of innovation. “Total content of scientific and technological innovation (x15)” contains comprehensive information on multiple types of scientific and technological innovation achievements [49]. “Patent implementation rate (x17)” reflects the ability of enterprises to commercialize their innovation achievements, which are calculated by the number of authorized patents, not just the number of applied patents [50].
Social capital: Existing literature has shown that social capital exerts an important influence on high-tech SMEs by providing them with resources [7,17]. From manager and organizational perspectives, five third-level indicators reflecting the social connections and resources were embedded in this indicator. “Working years of senior manager (x18),” “educational level of senior manager (x19)” and “number of affiliated companies of senior manager (x20),” evaluate the intangible value of social resources possessed by employees at the manager level [5]. From the perspective of organizations, “number of foreign investment enterprises (x21)” and “number of suppliers and customers (x22)” reflect the business transactions and social interaction between enterprises and relevant external entities [51].
With reference to the above indicator settings, this research established a credit evaluation indicator system, as shown in Table 2, which consists of four first-level indicators, eight second-level indicators, and twenty-two third-level indicators in financial and nonfinancial domains.

3.2. Empirical Application of Indicator System

In this section, we conducted an empirical application using enterprise data from 2014–2018 in the Beijing–Tianjin–Hebei region to verify the operability and validity of the indicator system.

3.2.1. Sample Selection

This study chose the Beijing–Tianjin–Hebei region of China as the sample research area. This region, which includes two municipalities of Beijing and Tianjin and 11 cities in Hebei province, is a typical urban cluster for economic development in China. According to the strategy of the coordinated development of the Beijing–Tianjin–Hebei region, the urban cluster put emphasis on innovation-driven development [52]. Furthermore, existing studies, such as China’s Regional Science and Technology Innovation Evaluation Report, show that the Beijing–Tianjin–Hebei region has generally outperformed other areas in terms of science and technology innovation, with Beijing and Tianjin in particular taking the lead in China [53,54]. Considering that it is typical and representative, the Beijing–Tianjin–Hebei region is an ideal sample region for our empirical study.
For the Beijing–Tianjin–Hebei region, China initiated the strategy of the coordinated development of this region in early 2014 [55]. From then until now, significant progress has been made in the development of science and technology innovation. Chinese President Xi concluded and divided two phases of the work, taking the end of 2018 as the time node [56]. As he said, in the five years before 2018, the work had achieved the expected results of seeking ideas, laying foundations and making a breakthrough; starting from 2019, the coordinated development of the Beijing–Tianjin–Hebei region has entered a new phase of advancing challenging work. The first stage of 2014–2018 is mature and complete given that the work in this period has been accomplished; in contrast, the work in the second stage from 2019 to the present is still under way, and existing research has also shown that the credit level of high-tech SMEs in this region presented a reverse trend in 2018 [57]. Therefore, it is a better choice to use the data which is relatively stable in 2014–2018 as the sample to perform the verification of the indicator system.
As for sample enterprises, following the principle of typicality, the SMEs in the growth enterprise market (GEM) from the Shenzhen Stock Exchange (SZSE) were chosen to conduct the empirical study, because they had outstanding performances among high-tech SMEs, and their financial data were easily acquired. We screened out the SMEs according to Statistical Classification of Large, Small and Micro Enterprises [58] in China, which differentiate SMEs from large enterprises by the number of employees and operation revenue scale in different industries. For example, SMEs in software and information technology services industry refer to enterprises with business revenues of up to 100,000,000 CNY and no more than 300 employees. Based on this criterion, 125 enterprises (as shown in Table A1 in Appendix A) were finally selected as the study sample in this paper.

3.2.2. Data Collection and Processing

This study collected data from multiple sources. All the financial data were from the RESSET database (https://db.resset.com/common/main.jsp, accessed on 8 September 2022), while the nonfinancial data were mainly obtained from the enterprises’ official websites and annual reports, as well as from credit information reference platforms such as Qichacha (https://www.qcc.com/, accessed on 8 September 2022).
In this paper, the data were processed as follows. Firstly, the median values of corresponding indicators were used to fill in the missing data. Secondly, the PCA method is very sensitive to the numerical variance, and if the dimensionality difference of each indicator is significantly large, it may lead to bias in the extraction of principal components [59,60]. Therefore, this study used the range standardization method for data normalization, as shown in formula (1). Thirdly, for the negative indicators, the final value is 1 minus the normalized original value.
X i = x i x m i n x m a x x m i n
where x i is the original value of the indicator, X i is the standard value, and x m a x and x m i n represent the maximum and minimum values, respectively.

3.2.3. Evaluation Process

The comprehensive evaluation methods can be roughly divided into two categories: objective and subjective methods [59]. Objective methods include the principal component analysis (PCA) method, whose evaluation process depends on the values themselves, and does not involve the subjective judgment of experts [61,62]. In contrast, subjective methods, such as the Delphi-analytic hierarchy process (AHP) method, are not influenced by specific values of the sample, but depend entirely on the subjective experience of the experts [63]. Nevertheless, both methods have their own limitations. Considering the characteristics of the credit evaluation indicator we selected, this study used a combination of these two methods.
Currently, there is a general consensus on the specific indicator settings for the financial dimension and the PCA method has been applied maturely to this type of study [24]; we therefore followed this objective method for the financial dimension. As for the nonfinancial dimension, considering that most of the indicators in this section were introduced innovatively and the data were collected from multiple channels, the Delphi technology is more applicable to the process of determining the weights of nonfinancial indicators, which require expert advice in this study.
  • Financial indicators
Firstly, we checked whether the sample was suitable for PCA. The Kaiser–Meyer–Olkin (KMO) value of 0.614 was greater than 0.5, and the p-value of the Bartlett sphericity test was close to 0, meaning that it passed the significance test. Secondly, we conducted PCA on the sample data. According to the PCA results, there were four actors with eigenvalues greater than 1 and the cumulative variance contribution of 71.14%, which means that the four principal components (PCs) contained 71.14% of the information from the original indicators. Therefore, the PCA results were deemed satisfactory.
As shown in Table 3, “Current ratio (X4)” and “Quick ratio (X5)” had higher loadings on PC1, “Accounts receivable turnover rate (X1)” and “Inventory turnover rate (X2)” had higher loadings on PC2, “Growth rate of operating revenue (X8)” and “Capital accumulation rate (X10)” loaded higher on PC3, and “Asset liability ratio (X6)” and “Return on equity (X7)” loaded higher on PC4. Except for PC4, the rest of the extracted principal components explained most of the information about the solvency, operating capacity, and growth ability of the company, respectively, which also indicated that the classification of the third-level indicators in the previous section was credible and robust.
According to the factor score coefficient in Table 3, the expression of four principal components Z1– Z4 could be obtained:
Principal component Z1 = − 0.005X1 + 0.009X2 + 0.025X3 + …… + 0.018X10
Principal component Z2 = 0.527X1 + 0.535X2 + 0.125X3 + ……− 0.072X10
Principal component Z3 = − 0.070X1 − 0.014X2 + 0.392X3 + …… + 0.398X10
Principal component Z4 = − 0.055X1 − 0.014X2 – 0.286X3 + …… + 0.002X10
Taking the factor variance contribution rate as the weight, the financial indicator score was obtained:
Financial score = 21.584%Z1 + 17.141%Z2 + 17.064%Z3 + 15.352%Z4
  • Nonfinancial indicators
We applied the integrated Delphi–AHP method to evaluate nonfinancial indicators. Firstly, the Delphi technique was used to identify major indicators, which usually need several rounds of consultation with an expert group [64]. Secondly, the AHP method can solve the complex decision-making problems of unstructured multi-elements and multi-level correlations, which are employed to determine the weight or relative importance of the indicators [64].
We performed the evaluation following the steps of this method. Firstly, we constructed the evaluation model with a hierarchical structure, based on which we designed the scoring questionnaire and invited the expert group to score it, and obtained a total of 21 valid questionnaires. Secondly, based on the results of the questionnaires, Yaahp (a software which can perform AHP) was applied to conduct the consistency test in this study. The results showed a satisfactory consistency index Cr of 0.068 < 0.1. Combining the weights of each indicator finally determined by Yaahp, we can see that the expression (7) for the nonfinancial indicators is as follows:
Nonfinancial score = 0.0245 X11 + 0.0980 X12 + 0.0179 X13 + 0.0026 X14 + 0.4535 X15 + 0.0557 X16 + 0.2051 X17 +
0.0230 X18 + 0.0071 X19 + 0.0272 X20 + 0.0232 X21 + 0.0624 X22

3.2.4. Evaluation Results

Based on the credit evaluation process above, the financial and nonfinancial scores can be calculated separately, and the final credit score can be obtained by summing the two components. The scoring results are shown in Figure 1.
Figure 1 shows that the credit scores of high-tech SMEs in Beijing and Tianjin are significantly better than those in Hebei, which is consistent with the existing research. For example, He et al. (2022) evaluated the credit risk of high-tech SMEs in the Beijing–Tianjin–Hebei region through the data envelopment analysis method and drew the conclusion that the credit risks of enterprises in Hebei were higher than those in Beijing and Tianjin [57]. In other words, the high-tech SMEs in Beijing and Tianjin had better performance in credit evaluation than Hebei. However, it may not be a satisfactory conclusion for the government, which emphasizes the coordinated development of the whole region in the long term. Therefore, the Hebei government should pay more attention to improving the credit situation of high-tech SMEs, narrowing the gap with the other two municipalities and achieving balanced development.
In addition to the cross-sectional variance analysis of the three provincial-level administrative regions, this paper additionally analyzed the development trend from 2014–2018 vertically as a whole. Except for a brief decline in Hebei in 2017, the credit level of the Beijing–Tianjin–Hebei region showed a continuous upward trend in these years. Furthermore, this finding also shows consistency with the existing studies [57]. The decline in Hebei province in 2017 is comprehensible according with the reality. Hebei formulated a Development plan for high-tech SMEs [65] in 2016, which stimulated the high-tech SMEs and resulted in a great promotion in the credit level in 2016, followed by a fall back to the normal level in 2017. In conclusion, the findings of this paper imply that the credit levels of the high-tech SMEs in the Beijing–Tianjin–Hebei region are improving gradually, and there is hope that the financing difficulties constraining the development of SMEs will be alleviated.

4. Empirical Study on External Environment’s Impact on Credit Levels

To further examine the validity of the indicator system, we conducted an empirical analysis of the impact of the external environment on credit levels based on the scores calculated in Section 3.

4.1. Hypotheses Development

Considering the regional environmental factors in previous studies and the characteristics of high-tech SMEs, the study selected five external environmental influencing factors: namely economic, financial, infrastructural, cultural, as well as the scientific and technological innovation environment. We then proposed the hypothesis respectively as follows.
Previous studies have shown that the regional economy has a positive effect on the credit levels of enterprises in the region [66]. In the case of stagnant economic growth, firms face business difficulties and some of them may act dishonestly as a consequence in order to gain short-term benefits, which would lower their credit levels [67]. Therefore, we hypothesized the following:
Hypothesis 1 (H1).
Regional economic level positively affects the credit levels of regional enterprises.
The development of enterprises is inseparable from financial support. In general, the higher the financial level in a region, the larger the scale of financing, which helps high-tech SMEs to obtain funding support for their production and business activities [68], and further improves the credit level [44]. Based on these arguments, we formulated the following hypothesis:
Hypothesis 2 (H2).
The regional financial level positively affects the credit levels of regional enterprises.
Regional infrastructure influences credit levels by affecting the information balance [69] of enterprises. For instance, platform information-sharing can reduce information asymmetry and lower transaction costs [70]. In addition, network traces play an increasingly positive role in enhancing enterprise credit awareness [71]. The following hypothesis was proposed:
Hypothesis 3 (H3).
The regional infrastructural level positively affects the credit levels of regional enterprises.
Prior studies have indicated that regional culture affects the quality of life of residents [72], including managers and employees of enterprises. Further, the integrity and corporate social responsibility of entrepreneurs can also affect the credit level of a firm [73]. Accordingly, we formulated the following hypothesis:
Hypothesis 4 (H4).
The regional cultural level positively affects the credit level of regional enterprises.
Scientific and technological innovation is important to enhance competitiveness of high-tech SMEs. Previous studies have shown that enterprises with higher innovation capacity mostly have higher credit levels [74], and technological innovation in SMEs has a positive impact on enterprise credit [75,76]. Thus, we hypothesized the following:
Hypothesis 5 (H5).
Regional scientific and technological innovation level positively affects the credit levels of regional enterprises.
Based on the hypotheses above, this study further selected specific variables to measure the five external environmental influencing factors, as shown in Table 4.

4.2. Empirical Test

4.2.1. Data Collection

Clearly, the explained variable is the credit scores of regional SMEs, which have already been calculated in the empirical application of the evaluation indicator system in Section 3.2.4.
As for explanatory variables, we obtained the data of 15 variables (d1–d15) of five external environmental factors from the Easy Professional Superior (EPS) platform (http://www.epsnet.com.cn/, accessed on 25 October 2022), which is a professional data service platform in China. A series of professional databases, such as the China Regional Economy Database, China City Data, China High-tech Industry Database, and China Finance Database, are included in this platform, which are the main data sources used in our research.

4.2.2. Data Analysis and Results

We would like to use a multiple regression model to test the effect of five external environmental factors on credit levels. One of the assumptions in multiple regression is that explanatory variables should not be highly correlated with each other [87], and the Pearson correlation coefficient is usually used to measure the strength of the association between two variables. As shown in the correlation matrix in Table A2 (see Appendix B), some variables were highly correlated with each other; for example, the correlation coefficient of d2 and d4 was as high as 0.9, which may lead to a severe multicollinearity problem, resulting in the distortion of model estimates [88]. Therefore, it is necessary to select a more appropriate regression method to eliminate the effects of multicollinearity.
To overcome the interference of multicollinearity, this paper used the principal component regression (PCR) method for empirical testing. Using principal component analysis (PCA) to extract several uncorrelated principal components (PCs) and making them replace the original variables of the linear regression model [89] can effectively avoid regression bias caused by multicollinearity. The PCR procedure is divided into two stages. The first stage uses the PCA method to extract principal components, and the second stage establishes a linear regression model and estimates the regression coefficients [90]. The detailed analysis process is as follows.
  • PCA
The result of the KMO (Kaiser–Meyer–Olkin) test showed the KMO value of 0.857, indicating that the explanatory variables were suitable for PCA. Two principal components with eigenvalues greater than 1 were extracted, the cumulative variance contribution of which was 91.22% (see Table A3 in Appendix C), indicating that it reflected most of the information of the original variables. The results of the PCA were satisfactory.
According to the factor score coefficients (see Table A4 in Appendix C) of the two principal components, F 1 and F 2 , we obtained the expression (8–9) of them:
F 1 = 9.023 × ( 0.122 d 1 + 0.101 d 2 0.116 d 3 + 0.083 d 4 + 0.007 d 5 0.048 d 6 + 0.015 d 7 0.124 d 8 0.127 d 9 + 0.066 d 10 + 0.114 d 11 + 0.049 d 12 + 0.058 d 13 + 0.082 d 14 + 0 . 118 d 15 )
F 2 = 4.661 × ( 0.070 d 1 + 0.017 d 2 + 0.220 d 3 + 0.053 d 4 + 0.187 d 5 + 0.227 d 6 + 0.161 d 7 + 0.069 d 8 + 0.080 d 9 0.150 d 10 0.025 d 11 + 0.128 d 12 + 0.112 d 13 + 0.065 d 14 0 . 050 d 15 )
According to the loading coefficients of F 1 and F 2 , we concluded that:
F 1 mainly included the information on variables d 1 , d 2 , d 8 ,   d 9 , d 11 , etc., reflecting the economic, infrastructural, and cultural environmental factors.
F 2 mainly included the information on variables d 5 , d 6 , d 7 , d 12 , d 13 , etc., reflecting the financial, as well as scientific and technological innovation environmental factors.
  • Regression model
We established a principal component regression model with the regional credit level as the dependent variable and two principal components as independent variables.
Y = α 0 + α 1 F 1 + α 2 F 2 + ε
In model (10), Y represents the credit score of regional high-tech SMEs; F 1 and F 2 represent the two principal components; α 0 represents the intercept term; α 1 and α 2 represent the coefficient of each principal component; and ε represents the residual term.
Before the analysis of regression model (10), tests of the classical linear regression model (CLRM) assumptions such as normality, heteroscedasticity, and autocorrelation were conducted on the data, as shown in Appendix D. After these tests, a bivariate regression model was conducted and the regression results were given as follows:
As shown in Table 5, R-squared was 0.889, indicating that the extracted principal components had strong interpretability on the credit level. Moreover, the p-value of both F 1 and F 2 were less than 0.01, reflecting that the relationship between the two principal components and the dependent variable was significant, as well as suggesting that five external environmental factors had significant impacts on the credit levels of regional high-tech SMEs.
As a whole, the empirical results are congruent with existing research on the influence of the external economic environment [42,67], financial environment [44,68], infrastructural environment [69,70], cultural environment [43,73], and scientific and technological innovation environment [75,76] on the regional credit level. Therefore, we can conclude that the evaluation indicator system we constructed is valid and the evaluation results are reliable.

5. Discussion

5.1. Summary

This study constructed a credit evaluation indicator system for high-tech SMEs from the social capital perspective, which consists of four first-level indicators, eight second-level indicators, and twenty-two third-level indicators.
Using the data of high-tech SMEs in the Beijing–Tianjin–Hebei region to apply the indicator system empirically, this paper verified that the evaluation results are consistent with existing research on the ranking of the credit level of high-tech SMEs in this region, which indicated that the indicator system we constructed is workable and valid. Furthermore, the result of the empirical analysis of the impact of the external environment on the credit level was also supported by existing studies, further proving the robustness of the indicator system.

5.2. Theoretical Contribution

This paper contributes to deepening the relevant literature in the field of credit evaluation of high-tech SMEs. Firstly, compared with previous indicator systems, this paper put forward a new perspective of credit evaluation, namely social capital perspective, which takes another important step forward in the construction of indicator systems for high-tech SMEs [17]. The introduction of the new perspective enriches the existing credit evaluation research and makes it possible to accurately assess the credit level of SMEs that lack historical financial data [91].
Secondly, this paper innovates the data acquisition method for credit level-related studies. Previous studies mostly obtained data from a single channel, such as Wind database or other official data agencies [57], which made the evaluation results less comprehensive and difficult to update dynamically. This paper provides a multi-channel data acquisition method that makes full use of internet big data (e.g., public opinion information), which greatly improves the completeness and real-time updating ability of the data.
Thirdly, this paper enriches and extends the existing research related to the credit evaluation of high-tech SMEs by establishing an indicator system. Previously, most international studies in this field have been conducted through mathematical modeling [20], and the indicator system evaluation method has been widely used because of its superior interpretability. However, there is still ample room for in-depth exploration and research. This paper provides a new and unique perspective to further understand the credit level of high-tech SMEs by developing a feasible and effective multilevel indicator system.

5.3. Practical Implications

This study performs an empirical application with the sample of high-tech SMEs in the Beijing–Tianjin–Hebei region of China, and its results further provide some practical implications to the high-tech SMEs, financial institutions, and government departments.
First, this paper provides directions for high-tech SMEs to improve their credit level. The establishment of the indicator system makes it no longer difficult for high-tech SMEs to carry out self-examination of their own credit level. The self-assessment helps high-tech enterprises to identify their own deficiencies and improve their credit level in the right direction, thus reducing financing barriers and alleviating the financing difficulties commonly faced by SMEs.
Second, the indicator system constructed in this paper helps financial institutions to assess the credit level of high-tech SMEs. It helps banks and other departments to accurately identify the credit and qualification of enterprises, provides ex-ante prevention of non-performing loans, plays a crucial role in enhancing the efficiency of investment decisions, and helps to promote the healthy and orderly development of the financial industry.
Third, the evaluation results show that the credit scores of high-tech SMEs in the research region are still of varying levels, especially in Hebei Province, which is detrimental to the coordinated development of this region. Therefore, policy- and decision-makers should pay attention to the credit level improvement of high-tech SMEs and create a good external business environment (e.g., an economic, scientific and technological innovation environment) to promote the upward development of high-tech SMEs.

5.4. Limitations and Future Research

This paper has the following limitations. First, the research sample used in this paper only includes 125 high-tech SMEs in the Beijing–Tianjin–Hebei region from 2014 to 2018, and subsequent studies can be conducted by expanding the sample scope in multiple dimensions, such as selecting more regions to join the sample, not just the better-performing Beijing–Tianjin–Hebei city cluster, or other important time periods can also be selected to examine the similarities and differences between their findings and those of this study. Second, as for the weight determination method of the indicator system, neither the objective nor the subjective methods are perfect. Future research could apply a combination of the methods which effectively avoid the drawbacks of these two traditional methods [92] and use more accurate techniques to evaluate the quality, such as bootstrap [93]. Third, the data analysis methods in this paper are all classical statistic methods, such as principal component analysis. Currently, big data algorithms can help to improve the efficiency and accuracy of credit assessments [94], and thus, future research could make full use of big data technology and AI algorithms in order to conduct research related to corporate credit.

Author Contributions

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

Funding

This research was funded by the Key Project of the National Social Science Foundation of China (No.21AJL013) and Distinguished Young Scholar Project of UIBE (No.20JQ09).

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Publicly available datasets were analyzed in this study. The link to RESSET database is: https://db.resset.com/common/main.jsp, accessed on 8 September 2022. The link to Qichacha platform is: https://www.qcc.com/, accessed on 8 September 2022.The link to EPS platform is: http://www.epsnet.com.cn/, accessed on 25 October 2022.

Conflicts of Interest

The authors declare no conflict of interest.

Appendix A

The following 125 high-tech SMEs in the Beijing-Tianjin-Hebei region were selected in this study.
Table A1. Key information of 125 sample enterprises.
Table A1. Key information of 125 sample enterprises.
NumberCompany NameLocationStock Code
1Beijing Zhongkehaixun Digital S&T Co., Ltd.Beijing300810
2Beijing Compass Technology Development Co., Ltd.Beijing300803
3Beijing Zuojiang Technology Co., Ltd.Beijing300799
4NCS TESTING TECHNOLOGY Co., Ltd.Beijing300797
5Citic Press CorporationBeijing300788
6Beijing Zhidemai Technology Co., Ltd.Beijing300785
7Lakala Payment Co., Ltd.Beijing300773
8CSPC Innovation Pharmaceutical Co., Ltd.Hebei300765
9Pharmaron Beijing Co., Ltd.Beijing300759
10BYBON Group Company LimitedBeijing300736
11Beijing Andawell Science& Technology Co., LtdBeijing300719
12Dark Horse Technology Group Co., Ltd.Beijing300688
13JONES TECH PLCBeijing300684
14Yusys Technologies Co., Ltd.Beijing300674
15Beijing Beetech Inc.Beijing300667
16Client Service International, Inc.Beijing300663
17Beijing Career International Co., Ltd.Beijing300662
18SG MICRO CORPBeijing300661
19Shunya International Martech (Beijing) Co., Ltd.Beijing300612
20Si-Tech Information Technology Co., Ltd.Beijing300608
21Rianlon CorporationTianjin300596
22Suplet Power Co., Ltd.Beijing300593
23BeiJing Certificate Authority Co., Ltd.Beijing300579
24BEIJING WANJI TECHNOLOGY Co., Ltd.Beijing300552
25Brilliance Technology Co., Ltd.Beijing300542
26Beijing Advanced Digital Technology Co., Ltd.Beijing300541
27Beijing Global Safety Technology Co., Ltd.Beijing300523
28Beijing E-techstar Co., LtdBeijing300513
29Thunder Software Technology Co., Ltd.Beijing300496
30Shijiazhuang Tonhe Electronics Technologies
Co., Ltd.
Hebei300491
31Beijing Science Sun Pharmaceutical Co., Ltd.Beijing300485
32Beijing Hezong Science&Technology Co., Ltd.Beijing300477
33Global Infotech Co., Ltd.Beijing300465
34NAVTECH INC.Beijing300456
35Beijing Ctrowell Technology Corporation LimitedBeijing300455
36Beijing Hanbang Technology Corp.Beijing300449
37Baoding Lucky Innovative Materials Co., Ltd.Hebei300446
38Beijing ConST Instruments Technology Inc.Beijing300445
39Beijing SOJO Electric Co., Ltd.Beijing300444
40Baofeng Group Co., Ltd.Beijing300431
41Beijing Chieftain Control Engineering Technology Co., Ltd.Beijing300430
42Hebei Sitong New Metal Material Co., Ltd.Hebei300428
43BEIJING INTERACT TECHNOLOGY Co., Ltd.Beijing300419
44Beijing Kunlun Tech Co., Ltd.Beijing300418
45Tianjin Keyvia Electric Co., LtdTianjin300407
46Beijing Strong Biotechnologies, IncBeijing300406
47Beijing Tianli Mobile Service Integration, INC.Beijing300399
48Beijing Tensyn Digital Marketing Technology Joint Stock CompanyBeijing300392
49Feitian Technologies Co., Ltd.Beijing300386
50Beijing Sanlian Hope Shin-Gosen Technical Service Co., Ltd.Beijing300384
51Beijing Sinnet Technology Co., Ltd.Beijing300383
52BEIJING TONGTECH Co., Ltd.Beijing300379
53TIANJIN PENGLING GROUP CO., LTDTianjin300375
54Beijing Hengtong Innovation Luxwood Technology Co., Ltd.Beijing300374
55Huizhong Instrumentation Co., Ltd.Hebei300371
56Beijing Etrol Technologies Co., Ltd.Beijing300370
57Nsfocus Information Technology Co., Ltd.Beijing300369
58Hebei Huijin Electromechanical Co., Ltd.Hebei300368
59NetPosa Technologies, Ltd.Beijing300367
60BEIJING FOREVER TECHNOLOGY CO., LTDBeijing300365
61COL Digital Publishing Group Co., Ltd.Beijing300364
62Kyland Technology Co., Ltd.Beijing300353
63Beijing VRV Software Corporation Limited.Beijing300352
64Taikong Intelligent Construction Co., Ltd.Beijing300344
65TIANJIN MOTIMO MEMBRANE TECHNOLOGY Co., Ltd.Tianjin300334
66Top Resource Conservation & Environment Corp.Beijing300332
67Beijing Watertek Information Technology Co., Ltd.Beijing300324
68Beijing Bohui Innovation Biotechnology Co., Ltd.Beijing300318
69OURPALM Co., Ltd.Beijing300315
70Boomsense Technology Co., Ltd.Beijing300312
71GI Technologies Group Co., Ltd.Beijing300309
72TOYOU FEIJI ELECTRONICS Co., Ltd.Beijing300302
73Leyard Optoelectronic Co., Ltd.Beijing300296
74Beijing HualuBaina Film&Tv Co., Ltd.Beijing300291
75BEIJING LEADMAN BIOCHEMISTRY Co., Ltd.Beijing300289
76Beijing Philisense Technology Co., Ltd.Beijing300287
77Sansheng Intellectual Education Technology
CO., LTD
Beijing300282
78BEIJING THUNISOFT CORPORATION LIMITEDBeijing300271
79Hebei Changshan Biochemical Pharmaceutical
Co., Ltd.
Hebei300255
80Beijing Enlight Media Co., Ltd.Beijing300251
81Beijing Trust&Far Technology CO., LTDBeijing300231
82TRS Information Technology Co., Ltd.Beijing300229
83Ingenic Semiconductor Co., Ltd.Beijing300223
84Beijing Jiaxun Feihong Electrical Co., LtdBeijing300213
85BEIJING E-HUALU INFORMATION
TECHNOLOGY CO., LTD
Beijing300212
86Staidson (Beijing) Biopharmaceuticals Co., Ltd.Beijing300204
87Beijing Comens New Materials Co., Ltd.Beijing300200
88MASTERWORK GROUP Co., Ltd.Tianjin300195
89SINO GEOPHYSICAL CO., LTDBeijing300191
90Beijing Jetsen Technology Co., Ltd.Beijing300182
91Business-intelligence of Oriental Nations
Corporation Ltd.
Beijing300166
92LandOcean Energy Services Co., Ltd.Beijing300157
93Shenwu Environmental Technology CO., LTDBeijing300156
94Xiongan Kerong Environment Technology Co., Ltd.Hebei300152
95Beijing Century Real Technology Co., Ltd.Beijing300150
96Beijing XIAOCHENG Technology Stock Co., Ltd.Beijing300139
97CHENGUANG BIOTECH GROUP Co., Ltd.Hebei300138
98Hebei Sailhero Environmental Protection High-tech Co., ltd.Hebei300137
99Tianjin Jingwei Huikai Optoelectronic Co., Ltd.Tianjin300120
100Tianjin Ringpu Bio-Technology Co., Ltd.Tianjin300119
101Beijing JIAYU Door, Window and Curtain Wall Joint-Stock Co., Ltd.Beijing300117
102Hebei Jianxin Chemical Co., Ltd.Hebei300107
103LESHI INTERNET INFORMATION &
TECHNOLOGY CORP., BEIJING
Beijing300104
104HENGXIN SHAMBALA CULTURE Co., Ltd.Beijing300081
105Sumavision Technologies Co., LtdBeijing300079
106Beijing eGOVA Co., Ltd.Beijing300075
107Beijing Easpring Material Technology Co., Ltd.Beijing300073
108Beijing Sanju Environmental Protection & New
Materials Co., Ltd.
Beijing300072
109Spearhead Integrated Marketing Communication GroupBeijing300071
110BEIJING ORIGINWATER TECHNOLOGY
Co., Ltd.
Beijing300070
111Beijing Highlander Digital Technology Co., Ltd.Beijing300065
112BlueFocus Intelligent Communications Group
Co., Ltd.
Beijing300058
113Beijing Water Business Doctor Co., Ltd.Beijing300055
114Hiconics Eco-energy Technology Co., Ltd.Beijing300048
115Hwa Create Co., Ltd.Beijing300045
116Beijing Shuzhi Technology Co., LtdBeijing300038
117Beijing SuperMap Software Co., Ltd.Beijing300036
118Gaona Aero Material Co., Ltd.Beijing300034
119Tianjin Chase Sun Pharmaceutical Co., Ltd.Tianjin300026
120Beijing Beilu Pharmaceutical Co., LtdBeijing300016
121Beijing Dinghan Technology Group Co., Ltd.Beijing300011
122BEIJING LANXUM TECHNOLOGY Co., Ltd.Beijing300010
123Toread Holdings Group Co., Ltd.Beijing300005
124Lepu Medical Technology (Beijing) Co., Ltd.Beijing300003
125Beijing Ultrapower Software Co., Ltd.Beijing300002

Appendix B

Result of the correlation coefficient test of original variables is as follows:
Table A2. Correlation matrix of variables.
Table A2. Correlation matrix of variables.
Yd1d2d3d4d5d6d7d8d9d10d11d12d13d14d15
Y10.511 **−0.3580.409 **0.750 **0.344 **0.2970.145 *−0.442 **−0.289 **0.0210.500 **0.442 **0.830 **0.717 **0.238 **
d10.511 **10.350 **−0.650 **0.262 **0.368−0.0150.317−0.507 **−0.959 **0.2630.712 **0.242 **0.252 **0.181 **0.612 **
d2−0.3580.350 **1−0.3420.900 **0.675 **0.2760.681 **−0.119 **−0.406 **0.0710.879 **0.549 **0.302 **0.862 **0.495 **
d30.409 **−0.650 **−0.3421−0.1910.4380.153 **0.3540.641 **0.690 **−0.504−0.4850.1230.057−0.145−0.545 *
d40.750 **0.262 **0.900 **−0.19110.375 **0.4530.539 *−0.782 **−0.804 **−0.0330.479 **0.117 **0.500 **0.930 **0.609 **
d50.344 **0.3680.675 **0.4380.375 **10.274 **0.874 **−0.366−0.341−0.3340.553 *0.937 **0.104 **0.305 **0.431
d60.297−0.0150.2760.0153 **0.4530.274 **10.734 **0.0690.093−0.3990.1330.109 **0.436 *0.4790.088
d70.145 *0.3170.681 **0.3540.539 *0.874 **0.734 **1−0.426−0.349−0.2010.560 *0.239 **0.857 **0.764 **0.491
d8−0.442 **−0.507 **−0.119 **0.0641 **−0.782 **−0.3660.069−0.42610.967 **−0.253−0.256 **−0.622 *−0.406 **-0.081−0.724 **
d9−0.289 **−0.959 **−0.406 **0.0690 **−0.804 **−0.3410.093−0.3490.967 **1−0.254 **−0.955 **−0.114 *−0.006−0.083−0.920 **
d100.0210.2630.071−0.504−0.033−0.334−0.399−0.201−0.253−0.254 **10.207−0.177−0.1420.0020.364
d110.500 **0.712 **0.879 **−0.4850.479 **0.553 *0.1330.560 *−0.256 **−0.955 **0.20710.165 **0.714 **0.309 **0.931 **
d120.442 **0.242 **0.549 **0.1230.117 **0.937 **0.109 **0.239 **−0.622 *−0.114 *−0.1770.165 **10.972 **0.635 **0.056
d130.830 **0.252 **0.302 **0.0570.500 **0.104 **0.436 *0.857 **−0.406 **−0.006−0.1420.714 **0.972 **10.958 **0.334 **
d140.717 **0.181 **0.862 **−0.1450.930 **0.305 **0.4790.764 **−0.081−0.0830.0020.309 **0.635 **0.958 **10.434 **
d150.238 **0.612 **0.495 **−0.545 *0.609 **0.4310.0880.491−0.724 **−0.0920 **0.3640.931 **0.0560.334**0.434 **1
* Correlation is significantly at 0.1 level (both sides). ** Correlation is significantly at 0.05 level (both sides).

Appendix C

Results of PCA are as follows:
Table A3. Total variance explained.
Table A3. Total variance explained.
PCsInitial EigenvaluesSum of the Squares of Extracted LoadsSum of the Squares of Rotated Loads
TotalVar%Sum%TotalVar%Sum%TotalVar%Sum%
F19.83765.57765.5779.83765.57765.5779.02360.15060.150
F23.84725.64691.2233.84725.64691.2234.66131.07391.223
F30.7274.85096.073
F40.3192.12698.199
F50.0990.66198.859
F60.0660.44099.299
F70.0400.26699.565
F80.0320.21399.778
F90.0190.12599.903
F100.0100.06699.969
F110.0020.01699.985
F120.0010.00999.994
F130.0010.00599.999
F140.0000.001100.000
F150.0000.000100.000
Table A4. Factor score coefficient matrix.
Table A4. Factor score coefficient matrix.
VariablesElements
PC1PC2
GDP per capita (d1)0.122−0.070
Total import and export volume (d2)0.1010.017
Total retail sales of social consumer goods (d3)−0.1160.220
Average monetary wage (d4)0.0830.053
Balance of loans of financial institutions (d5)0.0070.187
General budget expenditure of local finance (d6)−0.0480.227
Scale of social financing (d7)0.0150.161
Urban road area at the end of the year (d8)−0.1240.069
Turnover of goods (d9)−0.1270.080
Internet penetration rate (d10)0.066−0.150
Average number of students in colleges of per 100,000 residents (d11)0.114−0.025
Number of patents licensing (d12)0.0490.128
Turnover of technology market (d13)0.0580.112
Internal expenditure of R&D funds (d14)0.0820.065
Main business income of high-tech enterprises (d15)0.118−0.050

Appendix D

Normality test. We conducted Shapiro-Wilk test on the disturbances. Theoretically in the test, null hypothesis is that the disturbances are normally distributed. Therefore, if p-value is above 0.05, it shows that the test result is insignificant, then we couldn’t reject the null hypothesis, and normal distribution is accepted. Oppositely, if p-value is less than 0.05, then null hypothesis is rejected and we can conclude it is not normal. The S-W test result showed that p-value was 0.512, indicating that the data are normally distributed.
Heteroskedasticity test. We carried out White’s test in this paper. White’s test for null hypothesis is homoskedasticity, against alternative hypothesis is unrestricted heteroskedasticity. The results showed that p-value was 0.225, so that the null hypothesis was accepted, revealing that there was no evidence of heteroskedasticity.
Autocorrelation test. The assumption of uncorrelated error terms was checked using Wooldridge test on the panel data in this paper. The null hypothesis is no first-order autocorrelation. The result of p-value was equal to 0.657, therefore we couldn’t reject the null hypothesis, indicating that autocorrelation didn’t significantly affect the model.
Multicollinearity test. After extracting two PCs from original variables, the multicollinearity problem was eliminated, and we further conducted the VIF test to confirm it. As we expected, the VIF of two PCs were all 1.00, showing that there was no multicollinearity in the model.

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Figure 1. Credit scores of high-tech SMEs in Beijing–Tianjin–Hebei region.
Figure 1. Credit scores of high-tech SMEs in Beijing–Tianjin–Hebei region.
Systems 11 00141 g001
Table 1. Summary of partial credit evaluation indicator system of high-tech SMEs.
Table 1. Summary of partial credit evaluation indicator system of high-tech SMEs.
ReferencesKey Evaluation Attributes of Indicator System
Bao, S.; Yin, Y. (2009) [23]Debt paying ability, Profitability, Operating ability, Cash flow analysis, Innovation ability, Development ability, Basic enterprise quality,
Enterprise development prospects, Historical credit record
Huo, H. (2012) [24]Profitability, Solvency, Operation ability, Development ability,
Enterprise scientific and technological value, Enterprise basic quality,
Innovation ability, Development potential
Chen, D. (2017) [13]Basic quality, Profitability, Operation ability, Cash flow status, Solvency, Innovation ability, Growth ability
Tong, Q.; et al. (2017) [15]Asset credit, Financial credit, Innovation and development ability, Public credit supervision, Bidding supervision
Chen, Y. (2018) [14]Solvency, Profitability, Operating capability, Growth capability,
Technology innovation capability, Enterprise quality, Enterprise credit record, Enterprise development prospects
Du, J. (2022) [16]Enterprise quality, Operators quality, Industry prospects, Financial
situation, Innovation ability
Table 2. Credit evaluation indicator system of high-tech SMEs.
Table 2. Credit evaluation indicator system of high-tech SMEs.
DimensionsFirst-Level
Indicators
Second-Level
Indicators
Third-Level IndicatorsData Description
Financial
indicators
Enterprise
operation status
Operating capacityAccounts receivable
turnover rate (x1)
Net income from credit sales/average balance of accounts receivable
Inventory turnover rate (x2)Operating cost/average inventory
balance
Turnover rate of current
assets (x3)
Net main business income/average
total current assets
Enterprise
development potential
SolvencyCurrent ratio (x4)Current assets/current liabilities
Quick ratio (x5)Quick assets/current liabilities
Asset liability ratio (x6)Total liabilities/total assets
ProfitabilityReturn on equity (x7)Net profit/net assets
Growth abilityGrowth rate of operating revenue (x8)Increase in operating
Revenue/revenue of the previous
period
Net profit growth rate (x9)Net profit growth/net profit of the previous period
Capital accumulation rate (x10)Increase in owner’s equity/amount at the beginning of the year
Nonfinancial indicatorsEnterprise
quality
Enterprise credit
activity record
Tax credit rating (x11)Rated by the tax assessment score
Number of lawsuits (x12)Number of judicial cases related to the enterprise
External evaluationRisk information (x13)Self-risk + associated risk + prompt risk information
Public opinion information (x14)Positive information/negative information
Enterprise
competitiveness
Innovation abilityTotal content of scientific and technological
innovation (x15)
Converted from several intellectual property right indicators
R&D investment (x16)Investment amount in research and development
Patent implementation rate (x17)Number of patents authorized/total number of patents
Social capitalWorking years of senior manager (x18)Average number of working years of the legal person and the chairman
Educational level of senior manager (x19)Associate degree or below = 1,
bachelor degree = 2, master degree = 3, doctor degree = 4
Number of affiliated
enterprises of senior
manager (x20)
Number of enterprises that is directly or indirectly controlled by the senior manager
Number of foreign
investment enterprises (x21)
Number of enterprises abroad that is invested by the focal enterprise
Number of suppliers and customers (x22)Number of suppliers + number of
customers
Table 3. Factor score coefficient matrix.
Table 3. Factor score coefficient matrix.
Financial IndicatorsElements
PC1PC2PC3PC4
Accounts receivable turnover rate (X1)−0.0050.527−0.0700.055
Inventory turnover rate (X2)0.0090.535−0.014−0.014
Turnover rate of current assets (X3)0.0250.1250.392−0.286
Current ratio (X4)0.4920.0020.046−0.120
Quick ratio (X5)0.4950.0130.049−0.128
Asset liability ratio (X6)−0.052−0.0070.118−0.503
Return on equity (X7)−0.1660.0220.0620.604
Growth rate of operating revenue (X8)0.064−0.0600.506−0.028
Net profit growth rate (X9)−0.033−0.0030.1580.146
Capital accumulation rate (X10)0.018−0.0720.3980.002
Table 4. Specific variables of external environmental influencing factors.
Table 4. Specific variables of external environmental influencing factors.
Influencing FactorsSpecific VariablesReferences
Economic environment (D1)Per capita GDP (d1)[77,78,79]
Total imports and exports (d2)
Total retail sales of social consumer goods (d3)
Average monetary wage (d4)
Financial environment (D2)Balance of loans of financial institutions (d5)[80,81]
General budget expenditure of local
finance (d6)
Scale of social financing (d7)
Infrastructural
environment (D3)
Urban road area at the end of the year (d8)[82,83]
Turnover of goods (d9)
Internet penetration rate (d10)
Cultural environment (D4)Average number of students in colleges per 100,000 residents (d11)[73,84]
Scientific and technological innovation
environment (D5)
Number of patents licensing (d12)[85,86]
Turnover of technology market (d13)
Internal expenditure of R&D funds (d14)
Main business income of high-tech
enterprises (d15)
Table 5. Regression results.
Table 5. Regression results.
VariablesModel (10)
F116.426 ***
(1.750)
F24.861 ***
(1.750)
Constant65.569 ***
(1.691)
Observations15
R-squared0.889
Asterisk sign *** means the p-value is less than 0.01, and standard error is in parentheses.
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Liang, Z.; Du, J.; Hua, Y.; Si, Y.; Li, M. Research on Credit Evaluation Indicator System of High-Tech SMEs: From the Social Capital Perspective. Systems 2023, 11, 141. https://doi.org/10.3390/systems11030141

AMA Style

Liang Z, Du J, Hua Y, Si Y, Li M. Research on Credit Evaluation Indicator System of High-Tech SMEs: From the Social Capital Perspective. Systems. 2023; 11(3):141. https://doi.org/10.3390/systems11030141

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Liang, Zhihao, Jinming Du, Ying Hua, Yanbo Si, and Miao Li. 2023. "Research on Credit Evaluation Indicator System of High-Tech SMEs: From the Social Capital Perspective" Systems 11, no. 3: 141. https://doi.org/10.3390/systems11030141

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