Abstract
Keywords
Introduction
In early April 2020, the world was clamoring for more details about the outbreak of the pandemic SARS-COV-2, commonly referred to as COVID-19. Individuals clung to their mobile devices and tuned in to news programs in hope of better understanding of the pandemic as it advanced. Governments all over the world hoped to take advantage of the public’s keen interest by offering reliable and practical information about taking adequate precautions (i.e., self-isolation, quarantines, travel bans, and social distancing). Travelers were exposed to intense threats of infection as COVID-19 spread, due to a series of unanticipated incidents. For example, due to the abrupt closing of borders, travelers were refused access to destinations with little warning (Nguyen & Coca-Stefaniak, 2020; Zhan et al., 2022). Their plans were badly disrupted by the erratic cancellations of flight and hotel bookings. Moreover, the close proximity of travelers and crew on cruise ships resulted in hundreds of reported cases of COVID-19 among travelers (Koch & Schermuly, 2021). Beyond question, travel is nowadays regarded as a high-risk, high-uncertainty operation, which has aroused a wide range of fears.
The Protective Action Decision Model (PADM) was developed to explore individuals’ actions in response to natural hazards and disaster events. According to the PADM, various sources of information cause an individual’s attention, exploration, and comprehension to generate threat perceptions, protective action perceptions, and stakeholder perceptions, prompting them to decide how to take self-protective actions (Dai et al., 2020). Using this framework, the current study proposes a sequence of information-perception/consideration-action to elucidate protective behaviors during a pandemic (i.e., travel avoidance). In this model, government emergency public information is considered to be the source of information, and the individual’s emotional perception and cognitive consideration are considered to represent an extension of perceptions in the PADM model. Protective behaviors (i.e., travel avoidance) are also considered to be the actions. One important issue that should be explored is how government emergency public information and individuals’ variables can persuade travelers to adopt recommended protective behaviors (i.e., travel avoidance) to control the spread of COVID-19.
Prior research reveals that public information from the government in emergencies is a critical factor that can persuade the public to follow prescribed protective behavior (in this case, travel avoidance during the COVID-19 pandemic) in order to stop the virus from spreading (Dai et al., 2020). This information is referred to as effective because it has a significant impact on the UK’s current policy initiatives to combat the COVID-19 pandemic. Some governments (e.g., those of the UK) introduced successful strategies effective emergency public information initiatives via rumor refutation, effective pandemic information and effective risk communication (Dai et al., 2020; Y. Wang et al., 2021). Effective pandemic information publicizes reported cases, recovered cases, dynamic suspected cases, and deaths as cumulative totals and by regular updates, and also by monitored data, such as the numbers of flights taken and the travel history of particular confirmed or suspected patients. The present policy actions in the UK’s fight against the COVID-19 pandemic are founded on this depth of knowledge and experience (P. Sharma et al., 2020).
Prior research indicates that effective information plays a critical role in promoting individuals’ protective behavior (e.g., Assaf et al., 2022; Dai et al., 2020). Effective risk communication, which includes effective educational knowledge and information, may lead to further protective behaviors (Dai et al., 2020). The successes in the battle against the virus, as well as reports of frontline medical employees and volunteers published in the mass media, may inspire individuals to engage in initiatives to control the pandemic (Litvin et al., 2022; H. Liu et al., 2020). Meanwhile, rumors amplify the unpredictability of public data, triggering conspiracy theories and pseudoscientific statements (Song et al., 2021). Numerous rumors and misinformation formed a significant obstacle to monitoring the COVID-19 outbreak (Kalgotra et al., 2021).
In a pandemic context, prior research has given attention to the factors affecting protective behavior (i.e., travel avoidance) by investigating the “net effect” of antecedents on behaviors, without interpreting the complexity of individuals’ behaviors (e.g., Dai et al., 2020). Concentrating on the symmetrical and net effect can, however, be misleading, since this kind of impact does not matter to all travelers in the dataset. Hence, it is highly improbable that the interaction of two structures is symmetric (Pappas & Woodside, 2021). Examining the net effect does not offer rigorous findings on the complex processes of individuals’ behaviors (G. Agag et al., 2020; Farmaki et al., 2021), since besides the main relation amongst the variables, an opposite relationship will exist for some cases in the same sample, thus creating the need to test the data for such contrarian cases (Pappas & Woodside, 2021). It must be confessed that prior research has ignored the fact that individuals’ behaviors are unlikely to change until the complex predictors constituting the behavior reach a certain “tipping point” (Pappas & Woodside, 2021). Guidelines which overlook the complex relationships of antecedents result in unanticipated outcomes that can cost more than the problem itself. In testing and constructing the configurational models of the complex conditions preceding individuals’ protective behaviors, scholars can test and construct the complex drivers of the demographic and socio-economic conditions that stimulate travel avoidance. This claim is made by our study in testing and constructing a theory of the complex precursor demographic and socio-economic conditions affecting travel avoidance. This raises the research question: Research Question: Which configurations of government emergency public information and public trust lead to travel avoidance?
Our research aims to fill this research gap by operationalizing and testing a configurational model using the protective action decision framework and complexity theory to explore the effect of government emergency public information and public trust on travel avoidance during the COVID-19 pandemic, as a state-of-the-art technique that would stimulate travel avoidance. This research has important implications for the tourism and travel industry as well as national and international government authorities in terms of designing and implementing targeted intervention programs to stimulate travel avoidance during the present pandemic.
This study is structured as follows. The second section reviews the literature in the field and the study’s conceptual framework. The third section describes the study methods and data collection. The fourth section presents the study analysis and findings. The fifth section elaborates the discussion and implications of the findings.
Literature Review
Public Trust
Trust is important in today’s society for the sake of political, social and community ties (Park et al., 2016). Public trust is defined as the public expectation that the political system, or portions of it, will produce desired outcomes even in the absence of constant scrutiny (Schmidthuber et al., 2021) and many sociologists have turned their attention to this concept. Political scholars (e.g., Zhao & Hu, 2017) have demonstrated keen interest in learning more about individuals’ trust in government. Such research is motivated by the idea that trust connects people to the institutions that are supposed to serve them (G. Agag et al., 2022). Trust is critical for good governance, institutional consolidation, and the long-term viability of political institutions, since it allows a government to uphold effective credibility and power in decision-making (Grimmelikhuijsen & Knies, 2017). As a result, maintaining people’s confidence is a critical political goal for every government in power.
The Pew Research Centre has analyzed polling data since the 1950s and uncovered a period of government distrust (Pew Research Center, 2020). While early studies are rare, they indicate reasonably high levels of confidence in the 1950s and 1960s, which began to decline in the mid-1960s and continued to do so until the 1970s and Watergate, when trust began to increase. This pattern is depicted in Figure 1.

Polling Averages for Trust in Government Since the late 1950s.
In the tourism and travel setting, prior research has considered trust from two perspectives: that of residents and travelers, for example (interpersonal trust) and that of tourism enterprises and governments (institutional trust) (Zheng et al., 2021). However, it is suggested that trust is a multifaceted term that can vary depending on the context of the action to be taken (J. Liu et al., 2019). In the context of a public health crisis, research splits trust into trust in government (e.g., Zheng et al., 2021), trust in the media (e.g., Pop et al., 2022) and trust in other individuals (e.g., Su et al., 2020). Since governments are in charge of travel regulations and assist the tourism and travel sectors in managing a public health crisis, citizens’ trust in governments may have a major impact on their assessment of the risks of travel and protective behaviors (Zheng et al., 2021). Furthermore, since the media form an essential source of information for travelers who want to understand the situation at their destination, the public’s confidence in the media may have a major effect on their awareness and understanding of the risks of travel (Su et al., 2020).
It has been suggested that trust in certain stakeholders, especially governments and public health organizations, increases people’s willingness to adopt recommended behaviors (Johnson & Mayorga, 2021), which implies that these people believe that the information provided by these organizations is true and unbiased (Bearth et al., 2021). Moreover, travelers behavior brings them into direct contact with other people, increasing their chances of becoming infected (Nguyen & Coca-Stefaniak, 2020).
Given travelers mobility, people’s trust in other individuals’ health (i.e., their being “noninfectious”) may be related to their perception of the post-pandemic travel risks. However, most tourism research has used a universal measure to assess travelers trust in their destinations (Uddin et al., 2021), which has failed to explore the impact on various stakeholders of travel avoidance during the COVID-19 pandemic. Since travel safety after a pandemic depends on the credibility of key stakeholders who want to prevent and control the infection, it is believed that tourists’ trust in government, media, and tourists will significantly impact on their travel decisions
Government Emergency Public Information
Effective governmental communication plays a critical role in raising citizens’ awareness of travel risks and promotes protective behaviors during and after a pandemic (Xu et al., 2020). The aim of government emergency public information is to boost people’s courage and resolve, increase their risk perception and encourage them to take successful pandemic security measures (Paek et al., 2008). Some governments around the world took successful emergency public information measures to control the pandemic and promote citizens’ protective behaviors by refuting rumors and providing effective information about the pandemic and its risks (A. Sharma et al., 2021; Zheng et al., 2021). Effective pandemic information, for example, on dynamic suspected cases, reported cases, recovered cases, and deaths, both in cumulative numbers and regular updates, together with monitored data, such as the travel history of particular confirmed or suspected patients and the trains or flights that they took, have played a critical role in promoting protective behaviors during the COVID-19 pandemic and become the cornerstone of current governments’ policy efforts to tackle it (Dai et al., 2020; Zheng et al., 2021). In the present research, the term “effective” refers to timely and reliable information on the ongoing impact of the pandemic that travelers need for making informed and independent judgments about travel and can receive from the government.
Qazi et al. (2020) show that effective information can play a crucial role in the increase of citizens’ risk perception and the promotion of protective behaviors. Fewtrell and Bartram (2001) find that effective risk communication, consisting of constructive, effective and informative material, may help people to act in more prudent ways. Success in the fight against the virus, as well as reporting from frontline medical personnel and volunteers in the news, can motivate people to participate in pandemic-control initiatives (China Daily, 2020). Yet rumors exacerbate the unpredictability of public information, triggering pseudoscientific statements and conspiracy theories (Huang et al., 2020). The many rumors at the time were a significant obstacle in monitoring the “Ebola hemorrhagic outbreak” (Fung et al., 2016). Governments can reduce public uncertainty and perceived danger and fear; they can create public trust and stimulate protective behaviors by refuting rumors promptly (Paek & Hove, 2019). In addition, medical supplies are critical in a pandemic (Xu et al., 2020). For example, evidence indicates that early supplies lowered the mortality rate in the 2014 West African Ebola epidemic (Blair et al., 2017). Efforts to build public interest and inspire people to access health services include the prompt provision of equipment such as trained physicians and life-saving medications (Y. Wang et al., 2020).
Protective Action Decision Model
Lindell et al. (2005) developed the protective action decision model (PADM), a critical multistage model for understanding public reactions to potentially dangerous events such as environmental risks and catastrophes. The PADM was first created to explain defensive behaviors in the face of immediate danger and was later expanded to account for people’s reactions to the long-term threat of catastrophes (Terpstra & Lindell, 2012). The PADM highlighted that people in risk regions got information through social and environmental signals and those perceived dangers are generated from the combination of this information and pre-existing attitudes based on prior knowledge (Lindell et al., 2005). An individual’s response to environmental hazards and disasters, according to the PADM (Lindell et al., 2005), is a process that begins with the reception of social and environmental cues and information about a hazard or disaster and progresses through psychological processes, such as predication processes, perception, and the making of decisions to take protective action. This process eventually produces behavioral responses to mitigate risk.
The PADM has been primarily used with impending or long-term environmental risks and catastrophes, and it establishes a fundamental causal chain of psychological perceptions from receiving risk information to behavioral reaction (Lindell et al., 2005). To our knowledge, no research has used the PADM to examine residents’ behavioral intentions to avoid travel during the COVID-19 pandemic. This being the case, the present study will apply this model to the COVID-19 pandemic and concentrate on residents’ reactions to travel avoidance during COVID-19. For a variety of reasons, the PADM is appropriate in the context of the COVID-19 pandemic. To begin with, people are concerned about the long-term health risks associated with the virus, which may harm the lungs, heart, and brain, increasing the likelihood of long-term health issues. Thus, the COVID-19 operation may be regarded as a long-term danger to inhabitants.
Complexity Theory
Chaos theory was introduced in the 1960s to provide an adequate explanation of composite situations (Mahmoudabadi, 2015). It assigns “a broad set of loosely related theoretical and meta-theoretical orientations to the behavior of complex nonlinear systems” (Seeger, 2002, p. 329). Chaos theory suggests that even minimal variance in actions can create substantial deviations in consequences for a dynamic ecosystem, which may make it hard to forecast future patterns (Kellert, 1994). This disruption can be ascribed to the chaotic nature of systems, which follow a nonlinear pattern and are sensitive to situational triggers (Göksu et al., 2015). While chaos theory addresses the complex, random and dynamic characteristics of systems and questions their predictability, it does not suggest they are random or disordered (Speakman & Sharpley, 2012).
Chaos theory led to the development of complexity theory, which “deals with systems that have many interacting agents … although hard to predict, these systems have structure and permit improvement” (Zahra & Ryan, 2007, p. 855). Complex systems are characterized by nonlinear interactions, meaning that unexpected changes can result in either minor or significant impacts on the overall system (Byrne & Callaghan, 2014). As a consequence of the nature of nonlinearity, consistent minor alterations can significantly impair the development of the system as a whole (Room, 2011). Interference or an event—such as the COVID-19 pandemic—may prompt disparities in a complex system. Therefore, it is essential to detect shifts and address changes despite the complexity of forecasting (Room, 2011).
Complexity theory has been employed in a number of research fields. In particular, it has been employed to study human behavior (H. G. T. Olya & Al-ansi, 2018) because it helps explain the connections between human motives and behaviors, and suggests that a pattern of circumstances can lead to future predictions (Woodside, 2017). It is often employed in social media and branding studies because it helps researchers to understand complex relationships; for example, social media channels helping to form user participation and engagement (Alaimo & Kallinikos, 2017). The theory is also important in these fields because human behaviors derive from complicated decision-making practices and network-based interactions (Martín-Rojas et al., 2021). It can describe particular circumstances that accelerate consumer behavior (Farmaki et al., 2021).
Unlike the traditional hypotheses, research propositions under complexity theory can capture such causal recipes via a holistic approach that presupposes complex, interconnected systems and processes which should be studied together. This study formulates such research propositions and performs a configuration analysis using the data analysis tool fsQCA to examine the asymmetric relationships between the factors. This methodology has recently received increased attention in the travel and tourism context (Gannon et al., 2019; H. Olya & Nia, 2021), and, when applied together with complexity theory, can contribute to the creation of new hypotheses and theories (Fiss, 2007; Woodside, 2014). To this end, we build on complexity theory to propose a conceptual model for predicting travel avoidance behavior. H. Olya and Nia (2021) employed the theory when exploring the activities and behaviors of tourists, while Stevenson et al. (2009) used it to investigate tourism governance concerns. Following their example, our research uses complexity theory to clarify the effect of the particular antecedents of public trust and government emergency public information on travel avoidance in this case, and to identify the primary variables that affected travel avoidance during COVID-19 pandemic.
A Configuration Model of Travel Avoidance Behavior
Our paper seeks to explore how the combination of demographic and socio-economic variables, government emergency public information and public trust explain the conditions that led to travel avoidance in the COVID-19 pandemic setting. As the preceding discussion has shown, travel avoidance behavior is a complex behavioral manifestation formed by the interplay of socio-economic variables, government emergency public information and public trust. Nevertheless, little is known about the influence of these variables on people’s protective behavior (in this case, travel avoidance during the COVID-19 pandemic). As a result, our study used complexity theory and the protective action decision model to form our conceptual framework (Figure 2). Below, we try to justify the use of complexity theory and the protective action decision model in this research.

The conceptual framework.
H. G. T. Olya et al. (2019) state that complexity theory has been used in different contexts to understand specific phenomena in dynamic processes, such as individuals’ behaviors. Through explaining the heterogeneous, nonlinear and dynamic relationships among an individual’s motivational and behavioral responses, complexity theory describes how a mixture of predictors can be used as a causal recipe for complex phenomena (Farmaki et al., 2021). For instance, several causal configurations can exist, each of which is sufficient to drive an outcome (G. Agag et al., 2020; Olya et al., 2020). Widespread use of complexity theory in explaining protective behaviors has been made, because it explains how a range of configurations can lead to protective behavior, including pro-environmental behaviors (G. Agag et al., 2020). The theory has also proven especially useful in tourism and travel settings, where decision-making is based on a number of factors (H. G. T. Olya & Han, 2020). In the context of tourism and travel, complexity theory has been used to explore green travel products (G. Agag et al., 2020), aspects of individuals’ behavioral problems (Dai et al., 2020) and tourism governance problems (Farmaki et al., 2021). Furthermore, our study argues that complexity theory can describe combinations of antecedents (i.e., causal recipes) that can persuade individuals to behave in some desired way.
PADM has been used to investigate behavior in a wide range of risk-specific scenarios such as floods, earthquakes and pro-environmental movements (Y. Liu et al., 2019). With the PADM, individuals’ focus on, discovery and understanding of different sources of knowledge lead to risk perceptions, protective behaviors and the perceptions of stakeholders, leading the individuals to make decisions on protective behaviors (Dai et al., 2020). Working from this paradigm, the present study suggests a conceptual framework of information-perceptions/considerations-actions to explain travelers protective behaviors during the pandemic. The source of information in this conceptual framework is government emergency public information, while potential travelers travel avoidance is perceived to be the action. One important concern to investigate is how government-issued disaster public awareness persuades the public to engage in recommended preventive behaviors such as travel avoidance during a pandemic to halt the transmission of the infection.
Prior research revealed that demographics variables (i.e., Age, gender, education, income) influencing consumers protective behavior. For instance, Leung et al. (2005) examined the influence of age on behaviors to protect against SARS (i.e., “hand washing, respiratory hygiene, mask wearing, and using utensils”). Their study results revealed that older individuals are more willing to adopt precautionary behaviors. Another study by Jones and Salathé (2009) revealed that older age was associated with more frequent hand washing during the H1N1 swine flu outbreak. In the context of COVID-19, a study by Taylor et al. (2020), indicated that male, older, and higher educated individuals are more likely to vaccinate against COVID-19. In contrast, a study by Rubin et al. (2009) revealed that young individuals are more likely to follow recommended behaviors (i.e., “hand washing and cleaning surfaces”) more than old people. Another research indicated that demographics variables (i.e., age, gender, education level) have no influence on protective behaviors (Eastwood et al., 2009). While numerous studies explored the influence of demographics on protective behaviors, these studies produced evidence that is sometimes contradictory. Hence, our study explores the influence of demographics variables on travel avoidance behavior. Furthermore, the demographic variables might be an indirect way to approximate the groups of similar complex behavioral processes.
Using both theories as a theoretical basis for investigating the interplay that affects travel avoidance behavior by means of a configuration of the demographic factors, government emergency public information and public trust helps us to explore and better comprehend the role of individual variables or combinations of variables in stimulating travel avoidance during the COVID-19 pandemic. The advantage of using both theories is that they complement one another. First, complexity theory can be used to understand how demographic factors, government emergency public records and public trust have lately played a counterintuitive role in fostering travel avoidance. As a result, researchers can explain why the causal recipes for travel avoidance are nowadays more than mirror images of the causal recipes that generally cause travel avoidance. Second, according to the PADM, travelers focus on, discovery of and understanding of various sources of information play a critical role in risk perceptions, protective behaviors and the stakeholders’ perceptions, prompting them to decide how to act in a self-protective way (Dai et al., 2020). In this regard, the PADM can contribute to our comprehension of behavioral consequences, for instance, how government emergency public information can persuade travelers to follow suggestions and recommendations for self-protective actions and can thereby explain the combined impacts of the drivers, justified by complexity theory.
The aim of complexity theory is to identify patterns and combinations of conditions and reveal how their synergistic effects lead to specific outcomes (J. Wang et al., 2020). Configurations occur as different combinations of causal variables that affect an outcome of interest (Mikalef et al., 2019). The main difference of complexity theory is that it views elements through a holistic lens that must be examined simultaneously and is therefore particularly attractive for context-related studies looking into complex causality (Pappas & Woodside, 2021). Travel avoidance behavior fits well into the lens of complexity theory, since multiple interacting actors, objects, processes and contextual elements shape individuals’ decisions (Pappas & Woodside, 2021). In addition, the interactions between these components of such complex systems give rise to emergent properties that cannot be fully understood by examining the individual components (Pappas & Woodside, 2021). Seeing that travel avoidance behavior is applied in different ways depending on a number of factors, applying a complexity theory perspective to examine emergent properties such as government emergency public information, is deemed as appropriate (Woodside et al., 2015). A substantial body of literature builds on the theoretical tenants of complexity theory by utilizing the novel methodological approach fsQCA to examine phenomena in organization science (Pappas & Woodside, 2021), marketing (Pappas et al., 2020), service science (Woodside et al., 2015), and information systems research (Olan et al., 2016). Researchers have traditionally conducted data analysis and hypothesis testing to examine the symmetric relationship between X and Y. Nevertheless, the presence of asymmetrical relationships in most real-life contexts has signaled a theoretical and methodological shift (Pappas et al., 2020). Therefore, this study builds on this call as well as on past empirical studies that are grounded in complexity theory and appropriate methodological approaches to explore the complexity of travel avoidance.
Theoretically, the examples of causal components are visible as configurations that share a typical theme. It follows from this that solitary causal element such as travel avoidance behavior during COVID-19are probably insufficient to achieve a result. What is more significant for understanding avoidance behavior is the recipe, that is, the configurational causes during COVID-19. Prior research indicates that protective behavior is a complex phenomenon that is influenced by various factors (Dai et al., 2020). This viewpoint leads to proposition 1.
Equifinality is a further tenet of complexity theory; it maintains that various configurations of causal variables can all lead to similar outcomes. The configurations vary in their specific arrangements but inevitably lead to a similar result. Accordingly, instead of looking for one widely inclusive model that clarifies most of the variety in a result, equifinality and the complexity theory idea point to the occurrence of various configurational reasons for travel avoidance behavior during COVID-19. This logic leads to proposition 2.
Asymmetry occurrence can be proposed by the complexity theory. Urry (2005, p. 4) notes that “relationships between causal variables can be non-linear with abrupt switches occurring and the same cause can produce different effects.” The fundamental assumption underlying this dictum is the presence of supposed tipping points (Gladwell, 2002), that is, moments when a framework passes a specific end point because of minor changes in its basic components, tips, and significant changes in scope and composition (Ragin, 2009). The total impact of configurational reasons for a result can arise out of configurations in which single conditions can take an inverse direction or turn out to be insignificant. Therefore, the third proposition reads as follows:
Research Methodology
Creswell and Plano Clark’s (2006) recommendations for adopting a mixed methods approach are intended to assist scholars in avoiding the inconsistencies that result from concentrating on quantitative or qualitative methods alone. By using an explanatory sequential design, the present research seeks to better understand the factors affecting travel avoidance behavior during the COVID-19 pandemic by a quantitative enquiry followed by a qualitative investigation with the same participants. Adopting the recommendation that fsQCAs should use a mixed-methods technique (Woodside, 2013), our study was divided into two main steps. In the first, we collected quantitative data through an online survey sent to travelers in the UK. In the second, we conducted a qualitative follow-up phase with the same participants in order to expand and interpret the explanatory power of the findings of fsQCA.
The Quantitative Phase
Sample and Data Collection
We recruited the participants from a well-known U.K. online survey firm (www.SurveyMonkey.com). This marketing company had access to a representative panel of British travelers. Adult British citizens who had been exposed to the COVID-19 epidemic formed the target population. Although online surveys have some sample representativeness problems and poor response rates, they provide accessible data in light of the restrictions enforced by the pandemic’s regulations. Furthermore, they have essential benefits such as regional scope, cost-effectiveness and good time performance. The invitation to take part in this survey included details about the main aim of the study, the URL hyperlink and the time needed to fill out the survey.
The questionnaire was available online between February 5th and April 20th, 2021. We used a screening question to confirm that the participants were British people living in the U.K. who had traveled at least once for vacation and leisure purposes during the previous year. Our study is in line with previous studies that used the same criteria to study travel avoidance in the COVID-19 context (e.g., Chua et al., 2021; Zheng et al., 2021). A 1-year recall time frame is usually adopted in the literature to give respondents the best chance of recalling incidents and to provide deeper understanding of their travel experiences and furnish the best data.
on UK population data from the Office for National Statistics (2020), national representativeness quotas were established on the basis of age, gender and geographic area. In total, 2,000 travelers started the survey; of those, around 64.5% successfully completed it. Thus, 1,290 useable responses were valid for further analysis. Of the 1,290 respondents, females supplied 52.0% and males supplied 48.0%. The average age of the participants was 46.5 years. The largest group of participants (29.3%) gave their household income as between £15,000 and £25,000. Most of them were well educated, 26% having received a university degree. The respondents mostly indicated that they lived in an urban area (64.3%), with 35.7% in a rural area or village. The average frequency of international travel per year among the respondents was 2.4 times (see Table 1).
Profile of Respondents.
Questionnaire and Measurements
Due to the paucity of previous research on this topic, qualitative study was undertaken before the main study to develop the study measures and to improve the study’s validity (Churchill, 1979; Foroudi et al., 2016). The qualitative phase included 10 expert interviews (Table 2) and six focus groups (Table 3). We carried out the interviews in January 2021. We recruited respondents from the online survey firm. Then we conducted a pilot study using academics (lecturers, doctorate researchers) in the UK. The 100 surveys were evaluated for reliability and validity to see if the “measures [were] free from error and [would] therefore yield consistent results” (Peter, 1979, p. 6). Following the qualitative study and pilot research, the main survey was used to collect data for scale refinement and hypothesis testing.
Informant’s Profile of Qualitative Study.
- Their understanding of public trust and emergency public information.
- The factors that influence travel avoidance during the COVID-19 pandemic.
- Their experience of what they understand about trust in government, trust in media, detailed pandemic information, and rumor refutation.
- The influence of emergency public information and public trust on travel avoidance during the COVID-19 pandemic.
Details of the Participants in the Focus Groups.
Topics discussed –
- Their understanding of public trust and emergency public information.
- The factors that influence travel avoidance during the COVID-19 pandemic.
- Their experience of what they understand about trust in government, trust in media, detailed pandemic information, and rumor refutation.
- The influence of emergency public information and public trust on travel avoidance during the COVID-19 pandemic.
Appendix 1 includes the study measures that were derived from the previous studies and qualitative phase findings. Ten academic members of marketing departments evaluated the face and content validity. Five bilingual academics from a variety of disciplines (including marketing, management, psychology, and global health) participated as academic expert judges acquainted with the study topic (Bearden et al., 1993; Foroudi et al., 2016; Zaichkowsky, 1985). Academics who had served as expert judges in prior research were invited to remark on the items’ relevance, the clarity of their language, and their representation of the topic of interest (Foroudi et al., 2016). Following confirmation of strong inter-judge reliability, a thorough procedure of questionnaire testing, and piloting was performed (Bearden et al., 1993; Foroudi et al., 2016; Zaichkowsky, 1985).
The scales on which to indicate effective pandemic information, effective risk information, rumor refutation and supplies were adopted from related prior research that had been statistically validated by quantitative studies (e.g., Chon & Park, 2021; Dai et al., 2020; M. Sharma et al., 2017) as well as some items that have been added according to the findings of the qualitative phase. The scales of public trust (i.e., trust in government, trust in the media and trust in travelers) were adapted from the validated item scales (e.g., Baek & Jung, 2015; Komiak & Benbasat, 2006; Zheng et al., 2021) and from the qualitative findings. Finally, travel avoidance during the pandemic was built on the validated item scales from Mahoney et al. (2016) and Zheng et al. (2021) and two items were added based on the results of the qualitative phase. Travelers were asked to demonstrate their perceptions and feelings when they thought about traveling during this pandemic. The items were assessed using a 5-point Likert-type scale, with 5 indicating “strongly agree” with the given statement and 1 indicating “strongly disagree.”
Common Method Variance
In order to avoid common method bias, we took preventative and post-detection measures. The respondents completed the survey anonymously and the items for measurement were in random order. The latent factor method was used, which entailed aggregating all of the study’s variables into a common latent factor (CLF). After incorporating the CLF into the measurement model, we contrasted the standardized regression weights of the two models with and without the CLF. The analysis found that the values were almost identical (the difference was less than 0.20) (Gaskin, 2017). The models’ fit indices were almost identical in both cases (model with CLF: χ2/
Analytical Approaches
This study used fsQCA in conjunction with complexity theory to get deeper and richer insights into the results (G. Agag et al., 2020; Foroudi et al., 2016; Pappas & Papatheodorou, 2017; Woodside, 2014). fsQCA is a set-theoretic method that identifies the causal configurations of components that result in an outcome, going beyond a collection of empirical instances involving independent and dependent constructs (Pappas & Woodside, 2021; Woodside et al., 2018).
Qualitative comparative analysis (QCA) has gained increasing acceptance in social science research for systematic comparative case analysis (Rihoux, 2006). The QCA approach is built upon the set-theoretic comparative technique, primarily Boolean algebra, and has been introduced as a “synthetic strategy” for integrating the strengths of qualitative and quantitative methods while overcoming the key concerns inherent in both these approaches (Ragin, 1987, p. 84). The QCA approach is fundamentally based on the idea that the patterns and attributes will exhibit different features and lead to different outcomes, depending on how they are arranged (Rihoux & Ragin, 2009). Fuzzy set qualitative comparative analysis (fsQCA) is a much later extension to QCA and is built upon fuzzy set theory (Ragin, 2008). Ragin (1987) contends that the QCA approach resolves some of the methodological issues inherent in qualitative and quantitative approaches and strengthens the connection between the two approaches. The scope of small-N to full-N enables fsQCA to be used in qualitative and quantitative investigations. fsQCA in the latter is mostly used to complement quantitative findings in providing asymmetric relationships of the analysis (Ragin, 2008).
The software package fsQCA3.0 (Ragin & Davey, 2014) was used to analyze the relationship between the set of causal variables and the outcome variable (travel avoidance). The advantages of qualitative comparative analysis in comparison with traditional analysis techniques are twofold: (1) equifinality, which means that different paths can lead to the same outcome (by using Boolean algebra, fsQCA identifies the configurations of conditions that lead to an outcome); (2) asymmetry, meaning that the presence and the absence of the outcome may require different explanations. This method allows us to study how factors combine into configurations of the necessary and sufficient conditions for different outcomes (Rihoux & Ragin, 2009). Furthermore, from a mathematical point of view, the fsQCA sets no limit on sample size. Therefore, fsQCA analyses are equally conclusive for small or large N, making fsQCA an appropriate tool for a wide range of studies (Woodside, 2012).
fsQCA generates alternate templates from vector mixtures (i.e., “causal recipes”) in order to predict outcomes, unlike a symmetrical approach, which attempts to generalize results to a whole population by omitting any contrary views (Farmaki et al., 2021). This allows scholars to model the perspectives of people who have a variety of views on the research topic. The necessary conditions were analyzed to explore the antecedents that were the prerequisites of travel avoidance. While fsQCA allows us to identify sufficient causal recipes, an investigation of the necessary conditions explores the need for the antecedents (Pappas & Woodside, 2021). Both the antecedents (i.e., government emergency public information, public trust) and the outcome (travel avoidance) were calibrated using fuzzy set scores before analyzing the fsQCA (Ragin, 2009). Calibration begins with the establishment of three values that correspond to three qualitative anchors reflecting the fuzzy set thresholds for complete membership (1), cross over point (0.5), and full non-membership (0). (Ragin, 2009). To convert the original Likert ratings to fuzzy set scores, the following values were used: 1 (strongly disagree), 3 (neutral), and 5 (strongly agree) to indicate non-membership, the cross over point, and complete membership, respectively.
Construct Validity
The psychometric properties of the study variables are indicated in Table 4. The items loadings on their corresponding variables ranged from 0.879 to 0.950 and all items’ loadings were found to be significant at 0.01. According to Hair et al. (2019), these loadings can be considered satisfactory. The values of Cronbach’s α and composite reliability were higher than the threshold values 0.70, demonstrating that the variables of this study were reliable. To ensure convergent validity, the t-statistic values of each variable loading were included. The Kaiser-Meyer-Olkin estimate of sampling adequacy was 0.861, and Bartlett’s test of sphericity gave a statistically meaningful chi-square value of1,269 (
Measurement Statistics of Construct Scales.
Discriminant Validity of the Correlations Between Constructs.
Composite reliabilities are along the diagonal
Correlations.
Findings of the fsQCA
The results of the fsQCA are demonstrated in Tables 6 and 7, indicated by Arrows A-C2. The results in Table 6 support proposition 1: no single best configuration of variables results in travel avoidance during the COVID-19 pandemic, but there are multiple, equally effective configurations of the causal variables. According to the Quine-McCluskey approach, the fsQCA function relies on calculating causal recipes that allow us to predict the conditions which, in turn, lead to high and low TRV. For the UK sample, Table 6 indicates that using demographics and socio-economic variables as predictors [A: TRV =
Configural Model TRV and Their Negation (Models A, B1, C1, and Their Negations).
Casual Recipes for Predicting TRV With All Antecedents.
Our results are consistent with those of Zheng et al. (2021) and Fong et al. (2021), who revealed that trust in government, in the media and in other individuals has had a significant influence on travel avoidance during the COVID-19 pandemic. Arrow B2 demonstrates a combination of demographics and government emergency public information configurations, indicating 4 causal recipes for stimulating TRV. For example, M1 shows high levels of TRV when travelers are highly educated, older, male, have a high income, live in an urban area, and enjoy high levels of effective pandemic effective risk communication, rumor refutation and supplies [(Table 7, B2, M1. *age*inc*edu*gen*rsd*epi*pcr∼rum*sup)]. Table 7 also shows that three other causal recipes (M2 to M4) produce high levels of TRV. Their negation is also demonstrated by B2 and ∼
In the fsQCA, conducting additional analyses of the inverse of the outcome to explore which configurations may consistently lead to the negation of the outcome is a good practice (Schneider & Wagemann, 2010). This study further examined which conditions consistently lead to ∼TRV by applying the frequency threshold (3), similar consistency (0.92), and PRI score threshold (0.70) for TRV in the fsQCA. Notably, this application generates a complex solution (consistency = 0.890; coverage = 0.628) and comprises three configurations [(*age∼inc*edu*gen*∼rsd*epi*rum*trg∼trm)], which shows that when the travel avoidance behavior is more complex, rumor refutation is higher, trust in government is low, and the trust in media is low, which would lead to lower intentions to travel. Furthermore, this shows the causal asymmetry of fsQCA in explaining the results.
Table 7 shows that a combination of demographics, government emergency public information and public trust result in four causal recipes, leading to high levels of TRV as indicated by C2 (coverage = 0.806, consistency = 0.995). The results in Table 7 support proposition 2: no single best, but multiple configurations of demographic and socio-economic, government emergency public information, and public trust explain travel avoidance behavior during COVID-19. For instance, M1 indicates that being male, with a high income, older, highly educated, living in an urban area, and receiving high levels of effective pandemic effective risk communication, rumor refutation, and supplies, with trust in government and trust in the media, leads to high levels of TRV [(Table A, C2: M1.*age*inc*edu*gen*rsd*epi*ecr*rum*sup*trg∼trm*trt)]. The results indicate that there are three other causal recipes (M2 to M4) for high levels of TRV. The results also indicated three causal recipes for TRV negation (M1:M3) (coverage = 0.628, consistency = 0.890).
Necessary Conditions Analysis
Table 8 shows the findings of the necessary conditions analysis, which indicates the necessary predictors for travel avoidance. In other words, without these prerequisites, this outcome will not be achieved. Our analysis indicated that effective pandemic information, effective risk communication, supplies, trust in government and trust in the media are necessary antecedents for travel avoidance in the UK context.
Necessary Conditions Analysis Results.
In summary, the fsQCA results revealed that no single driver condition is sufficient to predict travel avoidance behavior, but configurations of causal recipes can sufficiently predict these behaviors with high levels of consistency. These results support proposition 1. Furthermore, the findings revealed alternative causal recipes that can lead to high levels of travel avoidance behavior. Therefore, various pathways to travel avoidance behavior exist. These findings support proposition 2, which proposed the occurrence of different antecedent conditions for travel avoidance behavior. Finally, the results indicate that asymmetrical effects occur when one specific driver condition integrates with another driver condition to generate a configurational cause. For instance, strong effective pandemic information and trust in government is an ingredient in configurations 1 to 4, whereas their negation is an ingredient in configurations 1 and 2. These results support proposition 3, which suggested the occurrence of these asymmetrical effects.
Robustness Checks
We used three additional analyses to check the robustness of our study findings. We validated our findings by examining the relationship between travelers intentions to avoid travel during the pandemic and their actual behavior using 3-month (
We performed the analysis once more, changing the threshold values for inclusion/exclusion in the set by using the extreme points of the scales as thresholds (i.e., 2 instead of 1 to be fully out of the set and 4 instead of 5 to be fully in it). The findings of the re-analysis were the same as in Table 7. Next, the cut-off point was altered, from 3 to 2.5 and 3.5 in separate analyses. Finally, we ran the analysis again, this time using a stronger consistency criterion of 0.8 instead of 0.75. Our study revealed four adequate configurations with a consistency goal of 0.8, which are identical to the solutions in Table 7. The collective findings from our different reanalyses confirm that the results are by and large stable and robust.
Qualitative Follow-Up
Sample and Measures
Phase 2 invited respondents who completed the e-survey in phase 1 to engage in follow-up interviews based on their fsQCA configurations. The interviews given by the travelers lasted approximately 46 min each on average. The interviews were conducted in the UK. The researcher started each interview with general questions that established the profile of the participants; then he asked questions from a predetermined list aimed at examining participants’ perceptions of their public trust and government emergency public information (see Table 9).
Overview of Qualitative Follow-up Sample.
Results of the Qualitative Follow-Up
The results from the 20 interviewees revealed that effective pandemic information, effective risk communication, trust in government, trust in media, and trust in other travelers are key drivers of travel avoidance. Table 10 indicates an overview main quote for the four variable configurations identified by fsQCA.
Configurations With Key Interview Quotes.
The respondents were asked about the role of the governments in releasing statistical information about COVID-19, such as infected active cases, suspected cases, deaths, and recovered cases daily:
This result is in line with the result of quantitative analysis, indicating that effective pandemic information has a significant influence on travel avoidance. This finding is in agreement with the conclusions of Dai et al. (2020), suggesting that effective pandemic information is a key driver of travel avoidance behavior during COVID-19. As a result, travelers may choose to follow the authorities’ recommendations during the pandemic (e.g., avoid traveling) because government provides updated information about reported cases, recovered cases, dynamic suspected cases, and deaths.
We also examined the critical role of effective risk communication in influencing people’s travel avoidance behaviors. Our respondents indicated that the government in their city provided them with honest and effective communication about COVID-19:
This finding is consistent with prior research (e.g., Chua et al., 2021), revealing that updated and transparent communication with citizens about COVID-19 is a key driver of travel decisions during the pandemic.
In addition, travelers were also more inclined to avoid implementing travel plans when they felt that medical staff and essential supplies in their city were insufficient. This result confirms the quantitative analysis results, suggesting that sufficient medical staff and essential supplies play a critical role in controlling the spread of COVID-19:
The result revealed that travelers trust in government can determine their fear and risk perception of a pandemic outbreak, which further encourages public support and participation in government-recommended actions (e.g., travel avoidance during the COVID-19). This finding is in line with the quantitative results and prior research (e.g., Zheng et al., 2022), suggesting that trust in government, trust in the media, and trust in other travelers during the travel play a critical role in influencing travel avoidance during the pandemic:
Discussion and Conclusion
Key Findings
COVID-19 has halted international travel, resulting in an unparalleled degree of economic recession and public mental stress. To the best of the authors’ knowledge, this research is the first to explore the factors affecting travel avoidance during the COVID-19 pandemic in the UK context. Our study used complexity theory and FsQCA to explore the main determinants of travel avoidance. Therefore, this paper provides a promising exploration with a view to a fuller understanding of the extent to which combinations of demographics and socio-economic variables, government emergency public information and public trust may explain the conditions leading to travel avoidance during the COVID-19 pandemic. We supported these configurations by the findings of the qualitative phase (see Table 10).
The results indicated that the first sufficient configuration focuses on demographics and socio-economic factors. It was clear that factors such as gender, level of education, age, income and area of residence play a critical role in predicting travel avoidance. Our study indicated that travel avoidance behavior is found most often when travelers are male, older, highly educated, have a high income, and live in an urban area. The second sufficient configuration focuses on government public information in an emergency. Factors such as effective pandemic information, effective risk communication, rumor refutation, and supplies are deemed to be critical variables in the formation of travel avoidance in the UK during the COVID-19 pandemic. These results are consistent with prior research, such as that by Dai et al. (2020). Furthermore, our results indicated that configurations of both demographic and government emergency public information play an important role in predicting travel avoidance. This solution generates a high level of consistency and wide coverage.
Our study suggested that to combat the COVID-19 pandemic effectively, governments should take effective measures in combination with governmental and public trust. For instance, governments are encouraged to prioritize improving the implementation of detailed pandemic information and the dissemination of positive risk communication to the public and to put forth effort to refute rumors and increase supplies. These results are in line with prior research that indicated that detailed pandemic information and positive risk communication are key drivers of protective behavior (Dai et al., 2020).
The fourth sufficient configuration deals with public trust. As the previous studies reveal, public trust including trust in government, in the media and in other travelers is closely related to individuals’ travel avoidance behavior (see also quote M1; Table 10), which is consistent with prior research which suggested that trust in the media and government are key drivers of protective behavior (e.g., Bhati et al., 2021; Itani & Hollebeek, 2021). The fifth sufficient configuration focuses on demographics, government emergency public information and public trust. These results are consistent with previous studies (e.g., Dai et al., 2020; Daly & Robinson, 2021; Itani & Hollebeek, 2021).
Theoretical Implications
Our study offers the following theoretical contributions. Previous studies have evaluated complexity theory and the protective action decision model in a variety of settings, providing empirical evidence for both theories (e.g., G. Agag et al., 2020; Dai et al., 2020; H. Olya & Nia, 2021; Zheng et al., 2021). However, to our knowledge, this is the first investigation to use these theories to support our proposed model. In particular, this study adds to our understanding of complexity and the protective action decision model (Dai et al., 2020; Woodside, 2017) by examining the interaction between government emergency public information, demographic variables, public trust and travel avoidance in complex travel settings. The findings reveal that government emergency public information, demographic variables and public trust can lead to travel avoidance.
Similarly, the protective action decision model supports the significant role of effective pandemic information, effective risk communication, rumor refutation and supplies because it provides insights into the effect of these variables in encouraging travel avoidance. Our findings indicate that effective pandemic information, effective risk communication, and supplies are key drivers of travel avoidance in the UK context. This result is in line with previous studies which show that the magnitude of the hazard affects protective behaviors against infectious diseases (Zheng et al., 2021). This illustrates the need to boost public risk awareness, since high risk perception contributes to preventive measures in many outbreaks of infectious disease and has been shown to help contain epidemics. On a more optimistic note, our findings show that trust in government and the media has played a significant role in encouraging travel avoidance during the COVID-19 pandemic. Thus, our study adds to the existing stock of knowledge on the protective action decision model.
Given that the role of government emergency public information in promoting protective conduct in the travel context has received little attention, this paper also adds to our understanding of the vital role of effective pandemic information, effective risk information, rumor refutation and adequate supplies in promoting travel avoidance (Dai et al., 2020). This study suggests that government emergency public information should improve people’s courage and resolve, increase their awareness of risk, and enable them to take more effective precautions to fight the pandemic.
More importantly, this research is the first to explore the concept of public trust in the international travel context during the COVID-19 pandemic and to explore its importance. Although several studies have been conducted on tourists’ trust in the context of tourism (Zheng et al., 2021), little research has illuminated the context of a health crisis. The present study emphasizes that trust in government and trust in the media are crucial factors for motivating travel avoidance during the pandemic. Rather than measuring the single dimension of an individual’s confidence in an epidemic crisis (Ramon et al., 2021), this paper indicates that the public’s trust during the pandemic has been contingent on different stakeholders. Travel during a pandemic is dependent on interpersonal and institutional effectiveness in disease control and prevention, as well as personal protective behaviors. As a result, the tourism and travel context provide a fresh perspective on public trust in the face of a pandemic. Our results indicate that British people demonstrated a high level of trust in government, the media and other travelers. Individuals’ interpersonal trust, however, continues to be shaky, providing new insights into their trust over health problems in an individualistic culture.
In line with other travel and tourism studies, our examination also demonstrates that travelers trust can be a key driver of travel behavior (Zheng et al., 2022). Although trust in travelers can reduce travel avoidance behavior, the study reveals that travelers who trust in government tend to avoid travel during the pandemic. This finding is consistent with public compliance with policies in public health research (Han et al., 2020). Since governments advised the public to travel less during the pandemic, travelers may have been more cautious in making travel decisions. Additionally, the results indicated that the influence of trust in travelers on travel avoidance is stronger among highly educated, older males with a high income, who live in an urban area, further highlighting the necessity of segmentation.
The priorities of our study are aimed at both synthesizing the results of our main research and of addressing “white spots” in the existing literature that need to be investigated further. These white spots are consistent with the idea of the protective action decision model concept that we have used in our research. As a result, by highlighting previously overlooked aspects, our research objectives contribute to theory building in the field of travel avoidance behavior in the travel and tourism industry. The greater part of the existing research on individual protective behavior takes a net driver approach, examining the effect of individual factors on protective behavior. Although this has greatly improved our knowledge, looking at protective behavior drivers in isolation gives us only a limited picture. The existing research suggests that the protective action decision model would consist of emergency public information (Dai et al., 2020; Zheng et al., 2021) and public trust (Zheng et al., 2021) as part of the consumers’ decision-making process. If taken as a configuration, this might be argued to be an optimal explanation for individuals’ protective behavior.
Different combinations that drive protective behavior are identified (i.e., travel avoidance). For instance, some combinations of emergency public information and public trust have resulted in a high degree of travel avoidance. As a result, we find that numerous and equifinal configurations of emergency public information and public trust lead to high levels of travel avoidance. Our findings highlight the significance of developing protective behavior theories that are not dependent on a single individual characteristic. There are many “recipes for understanding protective behavior” (G. Agag et al., 2020). Furthermore, “more is not always better,” and certain factors need to be absent in certain configurations, to induce high levels of travel avoidance behavior. This is related to the interaction of many factors, which means that the existence of certain variables may result in unnecessary costs. Therefore, our study motivates the following priority for future research in protective behavior in the travel and tourism industry.
Our fsQCA application also contributes to the wider methodology of travel and tourism research. fsQCA is regarded as an “inherently mixed" approach (Teddlie & Tashakkori, 2009, p. 273), since it mixes qualitative inductive reasoning with quantitative empirical testing in one study (Ragin, 2000). The employment of such mixed methods is helpful for analyzing phenomena defined by complex and interconnected issues, since the diversity of views contained in them leads to more robust and interesting findings (Venkatesh et al., 2013). In most business fields, the adoption of mixed methods like fsQCA is still in its infancy. This, along with the intrinsic complexities of many service phenomena, presents a unique opportunity for service researchers to encourage more widespread use of this potentially effective approach.
Managerial Implications
Our study provides a wealth of implications for travel and tourism companies, national and international government authorities in terms of designing and implementing targeted intervention programs for dealing with a pandemic crisis. The results of using mixed methods will in a variety of ways benefit the policy makers and practitioners who are coping with the pandemic crisis. First, our results revealed that effective pandemic information, effective risk communication and rumor refutation were key predictors of travel avoidance and have been identified as sufficient and necessary ingredients for encouraging travel avoidance. These results indicate that travelers are more likely to obey the government’s advice because they are more educated about the pandemic’s effects and what the government is doing about them. Effective pandemic information plays a critical role in enhancing travelers trust in governments and helping them to comply with governmental recommendations.
Travelers distrust the government if information about COVID-19 is misreported or withheld, leading to negative or hostile responses. Travel avoidance is influenced by effective risk communication. Information on the transportation of medical personnel and supplies can reduce public anxiety and improve community cohesion, encouraging people to take an active role in preventing the spread of the coronavirus. Rumor refutation was found to be positively related to travel avoidance during the COVID-19 pandemic. Rumor refutation is helpful and important for the government; it preserves an aura of honesty, undermines conspiracy theories and excessive public fear and encourages trust and protective behaviors in response to the pandemic.
Second, confidence in the government, the media and travelers were found to be significant in promoting travel avoidance once the disease spread. Given that travelers may choose to obey authorities’ advice during a pandemic (e.g., avoid travel), policymakers must revise travel recommendations and demarcate what is safe for travelers as the pandemic continues. It is critical for tourism destinations to increase travelers trust in the local government’s ability to monitor and avoid potential pandemic outbreaks. For example, tourism and travel authorities may create a set of regulations to govern the tourism sector’s responsibilities in the event of a public health crisis. In addition, policymakers must commit themselves to improving public communication and safeguarding travelers rights in the event of a pandemic (e.g., policies on cancellation and refunds). Tourism providers may collaborate with official outlets (e.g., government-run social networking platforms and research centers) and provide travel safety recommendations through online platforms, given that the media are the primary sources of information for travelers seeking information about travel destinations. Since travelers may become more wary of outsiders as a result of the pandemic, it has become critical to foster mutual understanding and prevent conflicts that involve travelers.
Furthermore, the findings revealed that in order to boost traveler confidence, tourism operators must enforce effective regulations. Destinations may, for example, popularize basic COVID-19 awareness, illustrate precautionary regulations in various languages and clarify cultural variations in pandemic protective behavior. As a result, this research can be used to establish strategies before engaging in COVID-related behavior change. Furthermore, recognizing recipes that apply to various countries helps policymakers to better understand where and how policy/policy combinations should be based, given that demographics, government emergency public knowledge, and public confidence conditions all play a role in explaining travel avoidance. This will help policymakers improve particular conditions in order to prevent travel during the pandemic.
When the pandemic ends, the government must declare travel to be safe and provide updated travel guidelines, since travelers may still be following the government recommendations for the pandemic (such as avoiding travel). It is critical for tourist hotspots to increase public trust in local authorities’ ability to contain and avoid future pandemics. For instance, in the event of a public health emergency, authorities in charge of the tourism industry can institute a set of regulations to govern business’s responsibilities. Meanwhile, governments should be dedicated to improving public outreach and preserving travelers rights in the event of a pandemic (e.g., cancellation and refund policies). Travelers rely heavily on the media for information about potential vacation spots; as a result, the tourism industry can work with official channels (such as government-run social media accounts and research centers) to promote safe vacationing. Due to the panic and dread caused by the epidemic outbreak, it is crucial to implement measures to reduce public anxiety and enhance traveler safety in a post-epidemic. If policymakers and service providers in the travel and tourism industry can understand travelers concerns, they may be able to better support the industry’s recovery from the recent epidemic. Hence, in the post-pandemic phase, practitioners need to show that the tourism and travel sector can regulate social distancing and reduce the possible dangers of COVID-19 infection among travelers by taking stringent measures. Consequently, it is vital to increase public confidence around more careful kinds of travel on a national or worldwide level to reduce travelers fear in a post-pandemic period.
Finally, males, the highly educated, the elderly, with a high income, and residing in urban areas were found to be more likely to intend to avoid travel during the pandemic. In addition to population-wide interventions, interventions targeted at females, the less educated, the young, and those residing in rural areas may be needed to correct inconsistencies in travel avoidance behaviors in the UK. As a result, in order to avoid health inequalities, policies in the UK should concentrate on motivating younger females with lower educational levels and those who live in rural areas to engage in protective action. To alleviate their fear of traveling, more support services (e.g., emergencies consulting and sanitation equipment) should be offered to young people, males, those less educated and residents in rural areas. Educational messages that are well-designed personalized and illustrated with descriptive diagrams may be one way of reaching out to this segment.
Limitations and Future Research Directions
Some limitations to this study that should be noted may provide fertile ground for future studies. First, this research concentrated on travel avoidance as a protective behavior; future research can explore the protective effect of, for example, preventive behaviors (i.e., wearing a face mask and social distancing). Second, since this research is confined to the travel context, future studies may explore the same model in other settings, adding to current knowledge if it can be validated in a different service setting. Furthermore, it is possible for the government not to be seen as a homogenous unit. In the event of a pandemic, executive leadership and public health administrators and officials with their respective expert panels may have divergent perspectives. Third, in exploring the role of public trust and government emergency public information in promoting protective behaviors, future studies should take the government’s views into account. Public trust in the current study has been studied primarily from the perspective of travelers. Fourth, this study focuses on exploring factors affecting travel avoidance behavior in the UK. Future studies could expand our model by testing it in other developed or developing countries for the purpose of generalizing the results. Finally, this research used the PADM and complexity theory to understand the causal recipes leading to travel avoidance, which neglects other factors that may affect travelers avoidance of journeys during the COVID-19 pandemic. To extend the proposed model, future research can incorporate other variables such as perceived fear and threats.
