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Article

How Fear of COVID-19 Affects the Behavioral Intention of Festival Participants—A Case of the HANFU Festival

1
School of Journalism and Communication, Guangzhou University, Guangzhou 510006, China
2
Faculty of International Tourism and Management, City University of Macau, Macau, China
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2022, 19(4), 2133; https://doi.org/10.3390/ijerph19042133
Submission received: 13 January 2022 / Revised: 7 February 2022 / Accepted: 12 February 2022 / Published: 14 February 2022

Abstract

:
The recovery of the tourism industry is an important issue that has attracted much attention during the COVID-19 pandemic. Sustainable and safe festival tourism is considered an effective way of aiding in the recovery of the industry. A face-to-face survey of participants in the Guangzhou Hanfu Festival was conducted to examine the relationship between fears of COVID-19, perceived risks, perceptual evaluations, festival attitudes, behavioral intentions, and crowding during this difficult time. Results clarified how fear affects behavioral intentions in festival research, and the mediation role of perceived risk and the moderation role of crowding was confirmed. A timely set of recommendations was provided to festival operators and local governments.

1. Introduction

Human travel has been significantly disrupted by the COVID-19 pandemic to the greatest extent since World War II [1]. The pandemic’s effects on the tourism industry not only relates to the invalidation or suspension of visas, requirements for medical certification, self-isolation or quarantine, and complete or partial blockade but also to the situation that the fear of COVID-19 has increased dramatically around the world, thereby changing people’s future travel behavior [2].
Consequently, tourism research seeks to identify appropriate solutions to mitigate these disruptive effects. Some studies have attempted to explore the feasibility of new forms of tourism during the pandemic, including untact tourism [3], travel bubbles [4], and 360 degree virtual tours [5], which are believed to help ensure travellers’ safety, health, and social distancing. Other studies have focused on domestic and protected natural areas tourism, which has been viewed as an important way to mitigate the tourism crisis and benefit residents’ physical and mental health [6,7,8,9]. With the unpredictability of pandemics on a global level, sustainable festival tourism tactics are an essential issue because festivals significantly affect tourists’ norms and pro-social intentions [10]. Positive behavioral intentions associated with the festival contribute not only to the social cohesion of the community but also to the local economy [11,12], which would benefit both the social and economic recovery from the pandemic. However, few studies on the pandemic are related to the behavioral intentions of festival participants.
The Hanfu Festival is held every year on the third weekend of November in China, which Hanfu enthusiasts designated. The Hanfu Festival originated from a Hanfu movement around the year 2003. The Hanfu movement was launched by enthusiasts participating in public displays of Hanfu attire, forming local Hanfu communities, and organising activities about Hanfu and traditional Chinese culture [13]. The purpose of the activity is to introduce and promote Hanfu as well as to encourage the wearing of Hanfu during festivals, sacrifices, and other important occasions [14]. As a cultural heritage with more than 3000 years of recorded history, Hanfu has been transformed from a niche interest into a fashion trend [13]. However, the Hanfu Festival in 2021 has been cancelled in many cities because of the effects of the COVID-19 pandemic. According to the Chinese Health Department, on 21 November 2021, there were five high-risk areas and 62 medium-risk areas in Mainland China (wsjkw.gd.gov.cn/xxgzbdfk/fkdt/content/post_3668356.html (in Chinese), accessed on 12 January 2022). Guangzhou is one of the few cities that can hold the Hanfu Festival as scheduled. The Guangzhou Hanfu Festival will undoubtedly provide opportunities for festival research in the context of COVID-19.
According to Rather [15], fear of COVID-19 and perceived risk play important roles in influencing attitude and behavioral intention. Zajonc’s [16] theories suggested that researchers should consider cognition and emotion to work independently during mental processing. However, few studies have verified the relationship and difference between cognition and emotion. Additionally, because of the social distancing measures, most of the tourism research related to COVID-19 is based on online survey data, and the respondents are only considering travelling [3,4,10,15,17,18]. Few studies can evaluate behavioral intentions after participation in festive events during the pandemic [19].
Therefore, to fill these two gaps in festival theory, the primary research question of this study is how COVID-19 influences behavioral intention in domestic festivals from an emotional and cognitive perspective, and what are the differences between the two perspectives.
In order to conclude this study, the remaining sections are arranged as follows: Hypotheses development is presented in the Literature Review section. Methodology and respondent profile are summarised in the Research Method section. Data analysis is shown in the Results section. Under the section Discussion and Conclusions, the findings are discussed and concluded. Finally, theoretical implications, recommendations, and suggestions to festivals operators and local governments are provided.

2. Literature Review

2.1. Fear of COVID-19

Fear is defined as a primary, intense emotion that is triggered when a person detects an imminent threat, causing a series of physiological changes and an immediate alarm in the body [20,21]. Fear is a result of interactions in which actors are subjected to the power of others, which is greater than their own [22]. For years, the outbreak of diseases or pandemics has been considered a source of fear [23]. Because fear stems from perceived threats, the intensity of fear and concern about COVID-19 can indicate the perceived threat of the virus [24].
Vaccines are one of the most efficient ways to prevent the spread of infectious illnesses [25]. However, the vast number of illnesses and deaths associated with COVID-19 vaccination may have heightened risk perception and fear [26,27]. The effect of fear is not only statistically but also economically significant, and city-level data across countries indicate fear is the primary reason for a fall in mobility [28]. To make matters worse, the sharing of fears and observing the behavior of others has resulted in a significant increase in fear of COVID-19 and spread among individuals [29].
Current research explored how fear affects individuals’ behavior and attitudes to reduce the effects of fear on COVID-19. Yildirim and Guler [30] believe that under the influence of the COVID-19 pandemic, the individual’s perceived risk is affected by psychological conditions, such as fear and worry because the emotional dimension of perceived risk is related to the individual’s worries and fears on the experience of potential threats [31]. Thus, a person’s fear of COVID-19 could significantly predict their risk perception [32].
For people who are considering travelling, intentions and attitudes toward travel are negatively affected by the fear of COVID-19 [4,15], which negatively moderates the link between intention to revisit and its antecedents, such as customer brand engagement, brand co-creation, and destination reputation [2,33]. However, the effects of fear on behavior and attitude are not static, and varying degrees of fear may have opposite effects [34,35]. People who are feeling fear have a sense of uncertainty and lack of control and need to experience certainty and control that makes them avoid risk [36,37]. Based on this theory, the perception and attitudes of people who have participated in scheduled festivals are likely to be positive, since the scheduled events compared with festivals that have been suspended because of the pandemic offer more certainty.
The following hypotheses are derived from the previous literature:
H1. 
Fear of COVID-19 is positively associated with perceived risk.
H2. 
Fear of COVID-19 is positively associated with perceptual evaluation.
H3. 
Fear of COVID-19 is positively associated with festival attitude.

2.2. Perceived Risk

Perceived risk in this research is a cognitive variable, as perceived risk represents the cognitive probability of being exposed to threats and dangers [38]. Perceived risk can be defined as the subjective belief that a loss may occur when attempting to achieve desired outcomes through a product or service [39,40]. Particularly, perceived risk in tourism refers to situations that clearly determine whether a traveller will choose to avoid specific destinations [41]. As a result, perceived risk in tourism is associated mainly with the tourist’s uncertainty and is influenced by the inherent subjective biases informed by the potential adverse consequences of tourism consumption [42,43,44].
Previous research has verified that perceived risk is determined by the perceived danger of travelling [45]. If the perceived risk exceeds an individual’s acceptable level, then they may change their minds about travelling [46]. Most travellers will change their travel plans if a destination is deemed to be a high risk [47]. These potential dangers during travel are often caused by terrorism, psychological, or natural disaster [41,48,49]. In particular, in the face of the variant virus of COVID-19, even if vaccination is widely carried out globally, the global epidemic is still not under control, and tourists will feel a higher risk.
Because the perceived risk of tourists is likely to have a considerable effect on their satisfaction and attitude toward tourism [3,18,50], the possibility of a negative evaluation can be increased by unexpected perceived risk [51]. Thus, as part of COVID-19 research, the risk associated with festivals also needs to be discussed in conjunction with evaluation and attitudes. It is important for festival organisers and marketers to minimise negative evaluations and attitudes during the recovery of the travel market.
The following two hypotheses are derived from the previous literature:
H4. 
Perceived risk is negatively associated with perceptual evaluation.
H5. 
Perceived risk is negatively associated with festival attitude.

2.3. Perceptual Evaluation, Festival Attitude, and Behavioral Intention

Davis [52] suggested that festivals cannot be evaluated in isolation without considering their geographic location. Because perceptions of a place are influenced mainly by images presented before and during the visit [53], festival research on perception evaluation is often carried out with destination-related theories, such as place identity, place dependence, and place image [54,55]. Therefore, perceptual evaluation in this research is defined as the process of understanding a festival based on beliefs and knowledge of the host place [56]. Previous studies confirmed that perception evaluation was associated closely with consumer behavior and marketing studies in the tourism industry [57]. A tourist’s perceptual evaluation of a destination is a good determinant of emotional evaluation and overall image [56,58,59]. Behavioral intention and satisfaction are negatively correlated with the festival’s negative evaluation [60,61]. Positive perceptual evaluations can enhance engagement and interactions among diverse groups, and even enrich communal livability [62].
The term attitude describes an enduring combination of beliefs around a situation or object that predisposes one to respond in a preferred manner [63]. As part of the overall attitude measurement, consumers are interrogated using a wide range of information to determine their beliefs and attributes about a particular subject [64]. A person’s overall satisfaction with the festival can be defined as their attitude toward the festival as a whole [65]. It has been suggested that attitudes toward festivals can be divided into cognitive and affective attitudes, corresponding to festival quality and satisfaction, respectively [66]. The attitude of a tourist is considered to be an important factor in determining their behavior, especially in the research based on the theory of planned behavior [67,68].
Intention refers to a determination to take a specific action in the future and represents the probability of putting one’s beliefs into practice [69]. Tourism studies generally believe a tourist’s behavioral intention can be measured by their visit to the destination again or by recommending it to others [70,71]. In this study, behavioral intentions refer to visitors’ intentions to participate in the Hanfu festival again or recommend it to others. A well-established relationship exists between attitude and intention in marketing literature [72]. Behavioral intentions are determined by an individual’s overall attitude toward an object [67,73]. Numerous studies in the tourism field have established a positive correlation between attitudes and behavior [74,75,76,77]. It is believed that travellers’ behavioral intentions, which can be used to predict visitors’ actual behavior and predict the future behavior of tourists [78,79], indicate the successful development of a destination [80] and maintain it [81,82].
The following three hypotheses are derived from the previous literature:
H6. 
Perceptual evaluation is positively associated with festival attitude.
H7. 
Perceptual evaluation is positively associated with behavioral intention.
H8. 
Festival attitude is positively associated with behavioral intention.

2.4. Crowding

Crowding is defined as a pressure situation caused by a limitation on space, but these limitations do not account for all factors that influence the perception of crowding because this perception may also be driven by psychological variables [83]. In general, crowding of destinations would hurt tourists’ emotions, attitude, destination appraisal, attractiveness, activity safety, and festival experience [84,85,86,87,88]. Problems are likely to arise, especially for festivals with subsequent dense crowding [89]. Crowding is an important issue when organising risk and safety management in festivals [90].
In response to the COVID-19 pandemic, social distancing measures have been adopted around the globe because COVID-19 incidence and mortality decreased by 26% and 31%, respectively, with each unit increase in social distance [91]. Consequently, in the post-COVID-19 period, tourists will be more sensitive to crowding and prefer to avoid crowded areas in the short run [92]. Psychological theories suggest that this phenomenon occurs because the behavioral immune system is activated, and people feel negatively affected by crowded environments and perceive them as dangerous, which is considered an adaptive method of avoiding disease [93]. Because people pay attention to their physical vulnerabilities which activate people’s deep-rooted evolutionary protection mechanisms, perceived COVID-19 infectability has a significant psychological effect on tourists’ perception of crowding [17]. Given Albayrak et al. [94], crowding moderates the link between tourist emotional responses and attitude.
The three hypotheses are derived from the previous literature:
H9. 
Crowding moderates the relationship between fear of COVID-19 and perceived risk.
H10. 
Crowding moderates the relationship between fear of COVID-19 and perceptual evaluation.
H11. 
Crowding moderates the relationship between fear of COVID-19 and festival attitude.

3. Research Methods

Referring to the hypotheses developed in the previous section, a research model with fear of COVID-19 as the independent variable and behavioral intention as the dependent variable is presented in Figure 1.
The quantitative research method was used in this study. The previous research suggested that the PLS-SEM has been demonstrated to be effective for complex or exploratory research models [95]. Further, PLS-SEM can be used to analyse the moderator’s influence on the relationship between two constructs [96]. This research model consists of 8 direct influence hypotheses and 3 moderating hypotheses. The main research objective is to explore the fear of COVID-19 in festival research and how it can predict behavioral intentions. Therefore, the PLS-SEM is a more suitable method for this research. This research used SmartPLS 3 for research model analysis. The entire data analysis process was completed in two parts, including Measurement Model Evaluation and Structure Model Evaluation [97].

3.1. Research Instrument

In order to collect data for this quantitative study, questionnaires were used. The questionnaire was developed based on measurement scales from existing research. A seven-point Likert scale was employed in this study. Back-translation was adopted because the measurement items were written in English [98]. Bilingual tourism scholars verified the translation. Items with unsatisfactory loading values were eliminated. The questionnaire and item details can be found in Table 1.

3.2. Data Collection and Respondent Profile

The 2021 Guangzhou Hanfu festival was held at Haizhu Lake Park from 19 to 21 November 2021. Since Guangzhou was a non-pandemic area during the period of the Guangzhou Hanfu Festival, this study obtained a safe face-to-face survey scenario. The data collection was carried out by using a field survey. The survey data was closer to the travel behavioral intentions in the post-pandemic period.
In these three days, 22 well-trained assistants distributed the questionnaire to visitors who had participated in the Hanfu Festival. Each research assistant had a tablet for data collection. In order to collect enough samples without disturbing visitor’s participation in the Hanfu Festival, our research selected multiple sites inside and outside the park for data collection, such as festival hotspots, exits, nearby bus stops, and the Datang subway station (the only subway station near Haizhu Lake Park). A convenience sampling method was used in this study. A filter question was used to ensure that the respondents had participated in the Hanfu Festival. A total of 358 valid questionnaires were obtained after excluding incomplete questionnaires and those with flatlining responses.
Table 2 summarises the respondents’ demographic information collected during the formal investigation stage, including gender, age, educational background, and monthly income. The gender distribution is approximately equal. There were 48.6% male respondents and 51.4% female respondents. A number of respondents had ages between 18 to 40 years old and had an undergraduate degree.

4. Results

This section presents the results of the research model analysis performed by SmartPLS 3. According to Hair Jr., Hult, Ringle, and Sarstedt [97], this section first presents the evaluation results of the measurement model, followed by the structural model evaluation results, and the results of moderating and mediating effect as supplements to the structural model evaluation.

4.1. Measurement Model Evaluation

The evaluation results in this section are mainly used to show that the measurement model has reliability, convergent validity, and discriminant validity.
Table 3 demonstrates the result of reliability and convergent validity. The Cronbach’s α values ranging from 0.763 to 0.888 are above 0.7. The CR values fall in a reasonable range, between 0.862 and 0.93. Thus, the internal consistency reliability of the measurement model is established [103,104].
Both of the factor loadings ranging from 0.746 to 0.926 and AVE values ranging from 0.586 to 0.817 are above the threshold [97,105]. Thus, the convergent validity of the measurement model can be confirmed.
The results of the Fornell-Larcker criterion and HTMT analysis demonstrate that the measurement model has discriminant validity. Table 4 shows the satisfactory discriminant validity. It can be seen from bold fonts that the square roots of AVEs on each construct are greater than the correlations between constructs [106]. All HTMT ratios were below 0.85, ranging from 0.836 to 0.084, again with satisfactory results [107].

4.2. Structure Model Evaluation

Table 5 shows the value of the determination coefficient (R2) and predictive correlation (Q2). R2 values, which are between 0.268 and 0.651, confirmed that all external variables have a satisfactory impact on internal dependent variables [95]. All Q2 evaluation results are above 0, indicating that the structural model in this study is capable of predicting the data accurately [108,109].
The statistical significance between variables was tested using the bootstrapping resampling method (5000 resamples). The results can be found in Table 6 and Figure 2. Fear of COVID-19 has a significant relationship with perceived risk (β = 0.537, t = 15.034, p < 0.001) and perceptual evaluation (β = 0.357, t = 6.276, p < 0.001), thus supporting H1 and H2. H4 is also supported because perceived risk is significantly related to perceptual evaluation (β = −0.158, t = 2.652, p < 0.01). The path coefficients of perceptual evaluation on festival attitude and behavioral intention are 0.602 (t = 14.331, p < 0.001) and 0.413 (t = 7.926, p < 0.001), respectively. The path coefficient from festival attitude on the behavioral intention is 0.472 (t = 9.08, p < 0.001). These results support H6, H7, and H8.
In addition to the hypothesis testing, the f2 values are used for the supplementary analysis of the hypothesis quality. The f2 values of all supported hypotheses shown in Table 6 are over 0.02, and thus, various exogenous factors have a significant effect on their corresponding endogenous factors [97]. Moreover, in Table 6, all VIFs are below five, which ranged from 1.000 to 1.773, indicating the absence of the issue of multicollinearity [91].

4.3. Moderating Effect

The interactive effect of crowding and fear of COVID-19 are significantly associated with perceptual evaluation (β = −0.301, t = 6.599) and festival attitude (β = −0.129, t = 4.735), suggesting that the moderating effect of crowding is supported, and thus, H10 and H11 are supported. The results of the simple slope analysis (Figure 3) demonstrate that participants who perceived high crowding in the Hanfu festival have lower perceptual evaluation and festival attitude when they perceive the same level of fear. Because the lower crowding line has a steeper slope, the moderation effect of crowding is negative.

4.4. Mediation Effect

The results of the mediation analysis of perceived risk, perception evaluation, and festival attitude can be found in Table 7. Because H3 and H5 are rejected, the result indicates that perceptual evaluation acts as a complete mediation role between fear of COVID-19 and festival attitude (β = 0.215, t = 5.704, p < 0.001) and between perceived risk and festival attitude (β = −0.093, t = 2.614, p < 0.01). Results also suggest that fear of COVID-19 influenced behavioral intention through perceived risk, perceptual evaluation, and festival attitude. A comparison of the path coefficients in the mediation test indicates that perceived risk is the critical variable determining whether path coefficients are positive or negative. The indirect path through perceived risk are negative (β = −0.024, t = 2.458, p < 0.05 and β = −0.035, t = 2.368, p < 0.05), respectively, and the path without perceived risk are positive (β = 0.101, t = 5.071, p < 0.001 and β = 0.147, t = 4.588, p < 0.001).

5. Discussion

In the wake of the WHO’s announcement that COVID-19 is a pandemic, many people realised that they were at risk for this deadly disease [110], and fear spread in human society. According to the results of this study, fear of COVID-19 does not necessarily negatively affect the intention to participate in the Hanfu festival, and the critical negative factor is participants’ perceived risk. This study finds that perceptual evaluation and festival attitude contribute to increased behavioral intention in festival participants. Fear of COVID-19 has a direct positive effect on perceptual evaluation and perceived risk, but the perceived risk has a direct negative impact on perceptual evaluation. Although fear of COVID-19 and perceived risk do not directly impact festival attitude, perceptual evaluation is a complete mediation factor in these two relationships. Crowding plays a moderating role in the relationship between fear of COVID-19 and perceptual evaluation and between fear of COVID-19 and festival attitude. In conclusion, Hypotheses 1, 2, 4, 6–8, 10 and 11 are supported, while Hypotheses 3, 5 and 9 are not.
The findings were in line with those reported in the literature. Fear of COVID-19 is positively correlated with both perceived risk and perceptual evaluation toward the festival (H1 and H2). The results reinforce previous literature [32,36,37] but contradict the statement of Rather [15] and Luo and Lam [4]. One possible explanation is that this study focused on people who took part in a festival, whereas respondents of previous studies only assumed they would travel. The positive effect of perceived risk on perceptual evaluation (H4) and the relationship between perceptual evaluation, attitude, and behavioral intention (H6 to 9) confirm previous studies’ findings [51,68,75,111].
The mediating test confirmed the reason H3 and H5 are rejected. Fear of COVID-19 and perceived risk indirectly affect festival attitude via perceptual evaluation, which aligns with the findings of previous studies [51]. This study also introduced perceived risk, perceptual evaluation, and festival attitude as mediators between the fear of COVID-19 and festival participating intention. Perceived risk is an essential variable influencing whether fear of COVID-19 is positively or negatively correlated with behavioral intention.
As an individual value, the crowding perception of festival participants has changed considerably in the context of the pandemic. In this study, crowding negatively moderates the link between fear of COVID-19 and perceptual evaluation (H10) and the connection between fear of COVID-19 and festival attitude (H11), meaning that the higher crowding perception, the weaker the influence of fear of COVID-19 on perceptual evaluation and festival attitude. However, this scenario does not apply to the effects of perceived risk (H9). A possible explanation for this result is that many factors jointly affect the perceived risk of participants, and the perception of crowding is not the most important factor.

6. Conclusions and Future Research

6.1. Theoretical Implications

Literature indicated that fear of COVID-19 is not just a variable that negatively affects behavioral intentions. Even if individuals are in fear of COVID-19, they can have a positive effect on behavioral intention without the influence of perceived risk. This study expands the understanding of the mediating role of perceived risk and reinforces the theories that fear can be a powerful, persuasive strategy, but it can also backfire when misused [35]. These results lend support to the theory that cognition and emotion are independent during mental processing [16,112]. The findings also can explain why emotions have different effects on behavioral intention.
In this study, several mediators are introduced to assess the indirect effects of fear of COVID-19 on behavioral intention. Our results verified the mediating effects of perceived risk, perceptual evaluation, and festival attitude. In addition to perceived risk, perceptual evaluation is another important mediating variable. Because perceptual evaluation is related closely to the place where the festival is held, this study shows that an individual’s attitude toward festivals comes from an individual’s evaluation of the relationship between festivals and host places.
In the context of the pandemic, the perception of crowding becomes a sensitive factor affecting individual attitudes and behaviors. In previous studies, crowding has been studied primarily from a direct effect perspective [85,86], and this study is the pioneer in showing how crowding moderates the relationship between emotion and attitude. The result contributes to the literature that the positive value of holding a festival during a pandemic, which is very fragile, can be offset by crowding perception. The theory of protection mechanisms proposed by previous studies [17,93] continues to play a role in tourists’ attitudes during and after the pandemic.

6.2. Practical Implications

The study provides valuable insight into how fear affects the intentions of festival participants on a practical level. An important finding of the study is that the fear of the virus does not undermine an individual’s behavioral intention to participate in festivals, while perceived risk does. Festival operators and related organisers should not ignore the tourists’ demand for local festivals and events during the pandemic. Suppose festival operators and related organisers can put risk reduction measures in place and meet the needs of potential visitors during the pandemic. In that case, the festival can still receive a positive response from participants despite the considerable personal fears that the two-year-long COVID-19 pandemic has caused.
Therefore, festival operators and related organisers should first consider measures to reduce the perceived risks of participants. Festival organisers should strengthen cooperation with service personnel to jointly formulate service specifications during the pandemic, such as requiring service personnel and performers to be vaccinated and submit virus test certificates, requiring the wearing of masks throughout the event, and ensuring that the facilities used by crowds are cleaned. At the same time, non-contact services or self-service (such as participation by appointment, online ticketing, or robot sales) should be expanded. For festival participants, festival organisers should consider introducing epidemic prevention knowledge and health protection measures through broadcast at the event site, such as reminding visitors to wear masks, maintain safe social distancing, use hand sanitiser, verify visitors’ healthy travel code at the entrance, and monitor visitors’ body temperature through infrared thermography. Since the pandemic affects personal crowding perception, festival operators should consider organising festivals and events outdoors or in an open place during the pandemic. Smaller community festivals may be better suited, as these types of festivals are more likely to limit attendance and reduce festival host and attendee costs [113]. Participants’ itineraries need to be designed carefully. A layout with scattered hot spots can avoid excessive aggregation of personnel. A mobile app can be used to inform participants of the waiting time at the hotspot so that participants can arrange the tour reasonably.
This research has verified festival activities during the pandemic produced positive evaluations and are beneficial to the destination city. Therefore, the government should control the pandemic as soon as possible and create a safe social environment. When the epidemic is under control, the government should take a positive attitude towards holding the festival activities and provide convenience for festival operators. During the festival, the local government should manage the flow of people outside the festival venue, ensure smooth traffic in the surrounding areas of the festival, and strengthen public transportation services. The future of public health is likely to become increasingly digital [114]. In order to build public trust and reduce risk perceptions for individuals involved in festival activities, governments are encouraged to use digital technologies to create safe community environments and strong communication strategies, such as contact tracing and epidemiological intelligence.

6.3. Limitations and Future Research

Our research data were collected at a specific time. Fears vary depending on vaccine effectiveness, vaccination rates, and the use of specific drugs. Different countries also have different social distancing restrictions, which affect individuals’ risk perception of participating in festivals. Consequently, in the future, the research model can be tested on samples from different countries and regions to determine its relevance under different circumstances. Furthermore, factors such as individual differences, time and space, and the crowding environment can be regarded as antecedents of perceived crowding [86]. Future studies should consider comparing different types of participants (such as vaccinated and unvaccinated individuals, young and old, male and female) and festivals (such as held day and night, indoor and outdoor). The constructs in our research are limited, and some constructs affect each other in our research models, such as the relationship between perceived risk and fear [115,116]. Therefore, the research model can be enhanced by incorporating other constructs in the future.

Author Contributions

Conceptualisation, J.Y.; Data curation, J.Y.; Formal analysis, J.Y.; Funding acquisition, J.Y.; Investigation, J.Y.; Methodology, J.Y.; Project administration, R.Y.; Resources, J.Y.; Supervision, J.M.L.; Validation, J.M.L.; Visualization, J.Y.; Writing—original draft, J.Y.; Writing—review & editing, J.Y., J.M.L. and R.Y. All authors have read and agreed to the published version of the manuscript.

Funding

Guangdong Provincial Philosophy and Social Sciences Lingnan Culture Project, GD21LN14.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

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 privacy issues.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. Conceptual framework.
Figure 1. Conceptual framework.
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Figure 2. Results of the hypotheses (Note: *** p value < 0.001;** p value < 0.01).
Figure 2. Results of the hypotheses (Note: *** p value < 0.001;** p value < 0.01).
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Figure 3. Simple slope test.
Figure 3. Simple slope test.
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Table 1. Measurement Items and Study Constructs.
Table 1. Measurement Items and Study Constructs.
ConstructsMeasurement ItemsPrevious Study
Fear of COVID-19
(FCV)
FCV1: I am most afraid of the novel coronavirus.
FCV2: It makes me uncomfortable to think about the novel coronavirus.
FCV3: I am afraid of losing my life because of COVID-19.
FCV4: When watching news and stories about the novel coronavirus on social media or any other media (i.e., TV, radio), I become nervous or anxious.
FCV5: I cannot sleep because I am worried about being infected with the novel coronavirus.
Ahorsu, Lin, Imani, Saffari, Griffiths and Pakpour [29]
Perceived Risk
(PRK)
PRK1: Given the current situation, I prefer to avoid attending large festival activities.
PRK2: Given the current situation, I prefer to shorten the duration of my attendance in festival activities.
PRK3: I feel more averse to attending festival activities because of the risk from COVID 19.
Karl [49]; Sánchez-Cañizares, et al. [99]
Festival Attitude
(FA)
FA1: Hanfu Festival is useful.
FA2: Hanfu Festival is valuable.
FA3: Hanfu Festival is beneficial.
FA4: Hanfu Festival is attractive.
Rather [15]; Bae and Chang [3]
Perceptual Evaluation
(PE)
PE1: Hanfu Festival made Guangzhou more attractive as a tourist destination.
PE2: Hanfu Festival increased the competitiveness of Guangzhou as a tourist destination.
PE3: Hanfu Festival contributed to the improvement of the regional image.
Ross [100]; Baloglu and McCleary [56]
Behavioral Intention
(BI)
BI1: I will recommend the Hanfu Festival to others.
BI2: I will talk about the Hanfu Festival positively.
BI3: I will revisit the Hanfu Festival.
Chen and Tsai [101]; Chi and Qu [102]
Crowding (CD)CD1: People are very close to me in the Hanfu Festival area.
CD2: There are many people in the Hanfu Festival area.
CD3: The Hanfu Festival area is crowded.
CD4: The rest areas are crowded in Hanfu Festival.
Yin, Cheng, Bi and Ni [86]; Liu and Ma [85]
Table 2. Descriptive summary of sociodemographic profile.
Table 2. Descriptive summary of sociodemographic profile.
DemographicCategoriesFrequencyPercentage
GenderMale17448.6%
Female18451.4%
Age18–3022462.6%
31–4011231.3%
41–50164.5%
51–6041.1%
Over 6020.5%
EducationHigh school or below5916.5%
Diploma10529.3%
Undergraduates17548.9%
Graduates or above195.3%
IncomeRMB 5000 or below9125.4%
RMB 5001–10,00014039.1%
RMB 10,001–20,00010228.5%
RMB 20,001–30,000195.3%
RMB 30,001 or above61.7%
Table 3. Result of reliability and convergent validity.
Table 3. Result of reliability and convergent validity.
ConstructsMeasured ItemFactor LoadingCronbach’s AlphaCRAVE
Fear of COVID-19 (FCV) 0.8240.8760.586
FCV10.782
FCV20.746
FCV30.753
FCV40.751
FCV50.793
Perceived Risk (PRK) 0.7630.8620.675
PRK10.833
PRK20.827
PRK30.806
Festival Attitude (FA) 0.8740.9130.726
FA10.838
FA20.895
FA30.856
FA4 0.815
Perceptual Evaluation (PE) 0.8710.9210.795
PE10.907
PE20.900
PE30.867
Behavioral Intention (BI) 0.8880.930.817
BI10.893
BI20.913
BI30.906
Crowding (CD) 0.8820.9070.711
CD10.926
CD20.856
CD30.793
CD40.791
Table 4. Fornell–Larcker criterion and HTMT analysis.
Table 4. Fornell–Larcker criterion and HTMT analysis.
FCVPRKFAPEBI CD
Fear of COVID-19 (FCV)0.7650.6470.2440.3940.2730.197
Perceived Risk (PRK)0.5340.8220.0840.0850.0740.160
Festival Attitude (FA)0.2130.0580.8520.7410.8360.175
Perceptual Evaluation (PE)0.3370.0530.660.8910.8210.167
Behavioral intention (BI)0.2280.020.7450.7250.9040.092
Crowding (CD)0.1820.025−0.0240.1980.0670.843
Note: Bold fonts are the square root of the AVE. The values above the bold fonts are the HTMT ratios. The values below the bold fonts are estimated correlations.
Table 5. R2 and Q2.
Table 5. R2 and Q2.
Latent VariableR2Q2
Festival Attitude0.5040.348
Perceived Risk0.2930.182
Perceptual Evaluation0.2680.196
Revisit Intention0.6510.525
Table 6. Results of hypotheses analysis.
Table 6. Results of hypotheses analysis.
Hypothesis and Pathsβ-Valuest-Valuesp-Valuesf-SquareVIFResult
H1: Fear of COVID-19 → Perceived Risk
0.53715.0340.0000.4051.000Accept
H2: Fear of COVID-19 → Perceptual Evaluation
0.3576.2760.0000.1171.480Accept
H3: Fear of COVID-19 → Festival Attitude
0.0100.2000.8410.0001.656Reject
H4: Perceived Risk → Perceptual Evaluation
−0.1582.6520.0080.0241.416Accept
H5: Perceived Risk → Festival Attitude
0.0100.1840.8540.0001.451Reject
H6: Perceptual Evaluation → Festival Attitude
0.60214.3310.0000.5431.355Accept
H7: Perceptual EvaluationBehavioral Intention
0.4137.9260.0000.2761.773Accept
H8: Festival Attitude → Behavioral Intention
0.4729.0810.0000.3601.773Accept
H9: Crowding × Fear of COVID-19 → Perceived Risk
−0.0320.4840.6280.0041.021Reject
H10: Crowding × Fear of COVID-19Perceptual Evaluation
−0.3016.5990.0000.1591.016Accept
H11: Crowding × Fear of COVID-19 → Festival Attitude
−0.1294.7350.0000.0901.163Accept
Table 7. Results of the mediation tests.
Table 7. Results of the mediation tests.
PathsCoefficientt-Valuesp-ValuesDecision
Perceived Risk → Perceptual Evaluation → Festival Attitude
−0.0932.6140.009Accept
Fear of COVID-19 → Perceptual Evaluation → Festival Attitude
0.2155.7040.000Accept
Fear of COVID-19 → Perceived Risk → Perceptual Evaluation → Festival Attitude → Behavioral Intention
−0.0242.4580.014Accept
Fear of COVID-19 → Perceived Risk → Perceptual Evaluation → Behavioral Intention
−0.0352.3680.018Accept
Fear of COVID-19 → Perceptual Evaluation → Festival Attitude → Behavioral Intention
0.1015.0710.000Accept
Fear of COVID-19 → Perceptual Evaluation → Behavioral Intention
0.1474.5880.000Accept
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Yang, J.; Luo, J.M.; Yao, R. How Fear of COVID-19 Affects the Behavioral Intention of Festival Participants—A Case of the HANFU Festival. Int. J. Environ. Res. Public Health 2022, 19, 2133. https://doi.org/10.3390/ijerph19042133

AMA Style

Yang J, Luo JM, Yao R. How Fear of COVID-19 Affects the Behavioral Intention of Festival Participants—A Case of the HANFU Festival. International Journal of Environmental Research and Public Health. 2022; 19(4):2133. https://doi.org/10.3390/ijerph19042133

Chicago/Turabian Style

Yang, Jian, Jian Ming Luo, and Rui Yao. 2022. "How Fear of COVID-19 Affects the Behavioral Intention of Festival Participants—A Case of the HANFU Festival" International Journal of Environmental Research and Public Health 19, no. 4: 2133. https://doi.org/10.3390/ijerph19042133

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