Examining Interrelationships between Tourist Travel Mode and Trip Chain Choices Using the Nested Logit Model

: As tourism grows, determining methods to ease tra ﬃ c problems as a result of domestic tourism holidays has become a central issue in tra ﬃ c planning and management. Trip chain and travel mode choices as well as their interplays are crucial in analysing and understanding the travel behaviour of tourists, which can help to address these problems. Therefore, this study explored the relationship between destination transportation modes and trip chain choices using nested logit models wherein two nest structures were used to analyse the decision processes of travellers. Empirical analysis conﬁrmed the e ﬀ ectiveness of the rational model using survey data collected from 350 respondents in Nanjing, China in 2020. The results showed that tourists preferred deciding on the trip chain prior to the travel mode, and higher time and costs were acceptable when tourists selected a complex trip chain with tour activities. Moreover, non-local tourists owning a driver’s licence, travelling with companions, and staying for longer periods were more likely to use public transport with trip chains comprising tour activities; however, the relationship for trip chains with non-tour activities was the reverse. These ﬁndings are valuable for designing e ﬀ ective transport management strategies to ease tra ﬃ c during holiday periods.


Introduction
As global tourism continues to grow rapidly, the increase in tourist transport has been influenced by various factors, such as the growing number of trips per person and the increasing number of tourists from emerging countries such as Brazil, Russia, India, China, and South Africa. In China, tourism has grown rapidly, with 6.0 bn domestic tourists in 2019 compared to 3.6 bn in 2014 [1]. Rising populations (especially in urban areas) and the resulting increased demand for leisure and tourism activities have led to traffic problems in many tourist destinations. While the rapid development of long-distance transportation such as high-speed railways and airlines has promoted transport between cities and reduced traffic congestion on highways, severe traffic jams have still occurred, primarily on freeways and streets close to scenic inner cities. Most policies that have been proposed promote the tourism demand on holidays but do not relieve traffic congestion. Because of the differences in travel behaviour during weekdays and holidays, the existing policies for weekdays are not applicable during holiday periods. Therefore, it is essential to conduct research on managing tourist traffic during the holidays.
Travel behaviour research is essential to address traffic generation issues and it plays an important role in solving holiday traffic problems [2]. Among all travel behaviours, travel mode choices (such as bikes, buses, and cars) and trip chain patterns (which refer to a sequence of trips that start and end at relationship between the trip chain and mode choices in tourist travel behaviour, where mode choices have been confirmed to be realistically within the trip chains in commuting trips. Therefore, to fill these important research gaps, this study focused on the relationship between the trip chains and travel mode choices when analysing tourist travel behaviour. Firstly, the definition of the trip chain in tourism was established: trip chains refer to a sequence of trips that start and end at a hotel or home throughout the day, involving visits to at least one destination. Specifically, two NL models for tourist travel behaviour were used to determine the order followed by tourists to make trip chain and transportation mode choices. Moreover, this study examined how the sociodemographic factors, trip-related characteristics, and travel variables influenced trip chain and destination travel mode choices. Finally, the proposed methodology was applied to analyse tourist travel in the city of Nanjing, China.
The remainder of this paper is organised as follows. Section 2 describes the data collection and descriptive statistics. Section 3 presents the modelling methodologies. Section 4 analyses the results of model estimation. Section 5 presents the discussion of results. Section 6 outlines the main conclusions.

Study Area
The Zhongshan Mountain National Park was selected as the survey site, which consisted of Dr. Sun Yat-sen's Mausoleum, the Ming Tomb, the Linggu Scenic Area, the Meiling Palace, and the Music Stage. The scenic area was 45 km 2 , located in the centre of Nanjing City, one of the largest cities in Southeast China. It was rated as a National AAAAA level tourist attraction by the National Tourism Administration. The transportation infrastructure is sufficient for travellers to flexibly choose their trip modes and travel routes, as shown in Figure 1. There were more than 71.6 m tourists by May 2020 in Nanjing, with 36.98% of the tourists located in the Zhongshan Mountain National Park [30].

Survey Design
A questionnaire was specially designed to fit the objectives of this study and was divided into two main sections. The first section covered how visitors travelled to the park and the attributes of their trip chains. The second section was designed to record sociodemographic details, trip-related information, and the travel characteristics of the respondents. The data of trip chain were pre-processed by extracting the information of the number and attributes of places visited during the tour. In this study, the descriptions of trip chains were as follows, where "H" denotes home or hotel, "T" denotes a tour activity (site visit, entertainment, or leisure), and "O" refers to a non-tour-related activity (visiting friends or commercial activities): • HTH: There is one tour activity during the day. This trip chain contains only a single tour-related activity stop. • HOH: There is only one non-tour-related activity during the day. This chain contains only a single non-tour-related activity stop. • HTTH: There are two tour activities during the day. This chain contains two tour-related activity stops with a mid-trip, with no non-tour-related activity stops. • HOOH: There are two non-work activities during the day. This chain contains two non-tour-related stops with a mid-trip. • HTOH: There are two types of activities during the day. This chain combines a tour-related stop and a non-tour-related stop with a mid-trip.

Sampling and Data Collection
In order to improve the effectiveness of the questionnaire, a polit survey was conducted by delivering the questionnaires to 30 random tourists. After receiving feedback, the final version included several changes in both content and format. Finally, questionnaires were distributed and collected during Tomb-Sweeping Day and International Labour Day, when people wanted to spend time outdoors in spring. The survey was used in face-to-face interviews, and respondents were randomly selected considering distributions of age and gender. Respondents were then asked if they were tourists completing their trip in one day. Questionnaires were given to qualified respondents, to be filled in and returned on the spot.
In total, 350 questionnaires were distributed, yielding 327 effective samples. However, 23 were removed from the analysis for various reasons, such as missing data and respondents being passengers in transit. Respondents who visited the Zhongshan Mountain National Park were chosen because, on the one hand, the total number of tourists there ranked first, and on the other hand, it is a representative scenic type in China and could be selected as a basic reference.

Sampling and Data Collection
In order to improve the effectiveness of the questionnaire, a polit survey was conducted by delivering the questionnaires to 30 random tourists. After receiving feedback, the final version included several changes in both content and format. Finally, questionnaires were distributed and collected during Tomb-Sweeping Day and International Labour Day, when people wanted to spend time outdoors in spring. The survey was used in face-to-face interviews, and respondents were randomly selected considering distributions of age and gender. Respondents were then asked if they were tourists completing their trip in one day. Questionnaires were given to qualified respondents, to be filled in and returned on the spot.
In total, 350 questionnaires were distributed, yielding 327 effective samples. However, 23 were removed from the analysis for various reasons, such as missing data and respondents being passengers in transit. Respondents who visited the Zhongshan Mountain National Park were chosen because, on the one hand, the total number of tourists there ranked first, and on the other hand, it is a representative scenic type in China and could be selected as a basic reference.  Table 1 shows the statistical details of trip chain patterns and travel modes. Regarding the destination transportation modes, it can be seen that the dominant travel mode was public transport, accounting for 80.7% of travel. At the same time, tourists preferred public transport in all types of trip chains. The reason could be that traffic congestion during holiday periods encourages tourists to avoid choosing private cars, and the convenience of the metro system contributes to the increased percentage of tourists choosing public transport. When evaluating the trip chain patterns, the statistics showed that tourist travel had a stronger dependency on tour-related activities than on nontour-related activities, with 88.7% of tour-related activities compared to 11.3% of non-tour-related activities. In addition, over three quarters of trip chains were complex trip chains, whereas only one quarter were simple. This result is consistent with the perception that tourists may have planned  Table 1 shows the statistical details of trip chain patterns and travel modes. Regarding the destination transportation modes, it can be seen that the dominant travel mode was public transport, accounting for 80.7% of travel. At the same time, tourists preferred public transport in all types of trip chains. The reason could be that traffic congestion during holiday periods encourages tourists to avoid choosing private cars, and the convenience of the metro system contributes to the increased percentage of tourists choosing public transport. When evaluating the trip chain patterns, the statistics showed that tourist travel had a stronger dependency on tour-related activities than on non-tour-related activities, with 88.7% of tour-related activities compared to 11.3% of non-tour-related activities. In addition, over three quarters of trip chains were complex trip chains, whereas only one quarter were simple. This result is consistent with the perception that tourists may have planned more than one activity in one day during the holiday, as access to popular travel information services ensures that tourists arrange their plans more efficiently [9]. The independent variables are summarised in Table 2. It can be seen that 51.7% of the respondents were native tourists and 48.3% came from other cities and provinces. Approximately 50% of the tourists in the sample were students, representing the increasing number of college students in China who prefer to travel during holidays. While 63.6% of the respondents owned a driver's licence and more than 90% of the respondents had private cars, the percentage of respondents choosing to use private cars was only 19.3%. In terms of the trip attributes, more than half of the respondents travelled with two companions and 52.6% of respondents only travelled for one day, implying that tourists arrived in the morning and left at night. Furthermore, tourists travelled mainly between 10 and 30 km to reach their main destinations; typical travel times lasted between 1 and 2 h, whereas travel costs varied from 10 to 30 CNY. The two most commonly occurring transfer times are one and two times.

Methodology
In this study, the NL model was used to explore the relationship between the destination transportation modes and trip chain choices. The NL model has been widely used in transportation studies, which provides a valuable tool to estimate decision makers' choices between different transportation options or travel destinations. Based on the decomposition of the formula in the NL model, the conditional and marginal probabilities ensure that the ratio of the probabilities for any two alternatives in different nests depends on the attributes of the other alternatives. In this manner, the irrelevant alternative (IIA) property does not generally hold for alternatives in different nests, and the NL model can determine the decision order more intuitively. Compared to the MNL and mixed logit models, the NL model showed a better fit with the data used in this study. This was because the MNL model could cause biased estimations from the IIA property, implying that the relative choice probabilities of any two alternatives were not influenced by other alternatives being added or removed from the choice set. Moreover, as the individual traveller tastes were not evaluated in this study, the mixed logit model was not suitable [31].

Model Structure
Two nesting structures were considered to explore tourist travel behaviour, as shown in Figures 2 and 3. The first one has the trip chain patterns above the travel modes, and the second one has the travel modes above the trip chain patterns.

Methodology
In this study, the NL model was used to explore the relationship between the destination transportation modes and trip chain choices. The NL model has been widely used in transportation studies, which provides a valuable tool to estimate decision makers' choices between different transportation options or travel destinations. Based on the decomposition of the formula in the NL model, the conditional and marginal probabilities ensure that the ratio of the probabilities for any two alternatives in different nests depends on the attributes of the other alternatives. In this manner, the irrelevant alternative (IIA) property does not generally hold for alternatives in different nests, and the NL model can determine the decision order more intuitively. Compared to the MNL and mixed logit models, the NL model showed a better fit with the data used in this study. This was because the MNL model could cause biased estimations from the IIA property, implying that the relative choice probabilities of any two alternatives were not influenced by other alternatives being added or removed from the choice set. Moreover, as the individual traveller tastes were not evaluated in this study, the mixed logit model was not suitable [31].

Model Structure
Two nesting structures were considered to explore tourist travel behaviour, as shown in Figures  2 and 3. The first one has the trip chain patterns above the travel modes, and the second one has the travel modes above the trip chain patterns.

Methodology
In this study, the NL model was used to explore the relationship between the destination transportation modes and trip chain choices. The NL model has been widely used in transportation studies, which provides a valuable tool to estimate decision makers' choices between different transportation options or travel destinations. Based on the decomposition of the formula in the NL model, the conditional and marginal probabilities ensure that the ratio of the probabilities for any two alternatives in different nests depends on the attributes of the other alternatives. In this manner, the irrelevant alternative (IIA) property does not generally hold for alternatives in different nests, and the NL model can determine the decision order more intuitively. Compared to the MNL and mixed logit models, the NL model showed a better fit with the data used in this study. This was because the MNL model could cause biased estimations from the IIA property, implying that the relative choice probabilities of any two alternatives were not influenced by other alternatives being added or removed from the choice set. Moreover, as the individual traveller tastes were not evaluated in this study, the mixed logit model was not suitable [31].

Model Structure
Two nesting structures were considered to explore tourist travel behaviour, as shown in Figures  2 and 3. The first one has the trip chain patterns above the travel modes, and the second one has the travel modes above the trip chain patterns.   According to probability theory, an alternative within nest B k is chosen, and the probability that alternative i is chosen given that an alternative in B k is chosen can be expressed as follows: The marginal and conditional probabilities can be expressed as follows: where I nk is called the inclusive value.
Coefficient λ k reflects the degree of independence among the unobserved portions of utility for alternatives in nest B k , with a lower λ k indicating less independence (more correlation). Parameter λ k can differ over nests, reflecting different correlations among unobserved factors within each nest. When λ k = 1 for all k, indicating no correlation among the unobserved components of utility for alternatives within a nest, the choice probabilities become standard logit [32].
The likelihood ratio index is often used with discrete choice models to measure how well the models fit the data. More precisely, the statistical measures indicate how well a model, with its estimated parameters, performs compared to another model in which all the parameters are zero. The model with a higher ρ 2 value is more suitable owing to better statistical performance. Following such rules, the structures of the destination transportation mode and trip chain choices can be analysed and explained.

Utility Function
In discrete choice models, decision maker n facing a choice among J alternatives obtains a certain level of utility U ni from choice set C. The choice probability is P ni = Prob U ni > U nj ∀ j i = Prob U ni − U nj > 0 ∀ j i , which means that the decision maker will select the alternative with the largest utility among the choice sets.
The component of utility can be decomposed into three parts: (1) a part labelled W that is constant for all alternatives within a nest, (2) a part labeled Y that varies over alternatives within a nest, and (3) a random component ε. The utility is defined as follows: It is often reasonable to express the observed part of the utility using linear parameters: where x nkl is a vector of variables that relate to alternatives for nest k, as faced by decision maker n; z nim is a vector of variables that relate to alternative i; α l and β m are the coefficients of the variables, which are the unknown parameters to be estimated.

Explanatory Variables
In this study, the explanatory variables were classified into three types of determinants: sociodemographic variables, trip-related variables, and travel variables. Among the sociodemographic variables, the occupation, nationality, car ownership, and driving licence ownership influenced the destination mode and trip chain choices [9,27,28]. The trip-related variables showed that a higher number of travel companions could make tourists choose a private car over public transport as well as a simple trip chain. The length of stay contributed toward a high probability of choosing public transport and a simple trip chain [17]. Regarding travel variables, it could not determine whether more time-and cost-efficient transportation modes and trip chains were likely to be selected if those choices were available. Furthermore, an increase in travel distance could increase the probability of a person travelling by car and choosing a complex trip chain [8]. The transfer time was also an important factor influencing the choices of tourists, with few studies accounting for it.
The t test was selected to verify whether the coefficient of each explanatory variable was significantly different from zero. The null hypothesis was when the explanatory variable was equal to zero, and test statistics were calculated at 1%, 5%, and 10% confidence intervals, separately. Based on the above discussion, native tourists, occupation, car ownership, and driver's licence ownership were the sociodemographic variables utilised in this study. The trip-related attributes used were the length of stay in days and number of travel companions, whereas the travel variables included the time, cost, distance, and number of transfers. Tables 3 and 4 show the estimation results obtained from two NL models. Most of the estimated parameters of the independent variables were statistically significant at confidence levels higher than 95%. Moreover, model 1 had a much larger ρ 2 value of 0.846 than that of model 2 (i.e., 0.0500). Therefore, model 2 was less presentable. Model 1 was effective and exhibited high goodness of fit, suggesting that respondents preferred to decide on their trip chain prior to selecting their travel mode. Table 3. Estimation results obtained from model 1.

Inclusive Value Parameters
The estimated values of λ k in model 1 varied from 0 to 1, which were statistically different from 1 at a confidence level above 95%, indicating that the model was consistent with utility maximization for all possible values of the explanatory variables. These results confirmed that the NL model applied to model 1, where a low λ k indicated higher correlations between transportation mode choices under the same nest. The following paragraphs discuss the estimation results obtained using model 1.
The inclusive value explains the influence of the mode choice behaviour at the lower level on the trip chain choice at the upper level. The larger estimated inclusive value parameters for the trip chain choice suggested that the respondents' trip chain choices were influenced more strongly by the transportation mode choice. The positive sign of the inclusive value reveals that additional choices of transportation could decrease the probability of choosing a specific trip chain, while the negative sign had the opposite influence. The parameter values of simple trip chains HTH and HOH were −0.3015 and −0.14419, respectively, indicating that a choice set comprising more transportation modes would reduce the probability of respondents choosing a simple trip chain. The absolute value of the inclusive value suggests that the transportation mode choice would influence the choice of trip chain HTH more than that of trip chain HOH. The inclusive values of trip chains HTTH, HOOH, and HTOH were all positive. Therefore, various choices in terms of the transportation modes under a trip chain nest could dramatically increase the probability of respondents choosing a specific trip chain. Similarly, a small inclusive value suggests that the choices of HTTH and HTO were less influenced by transportation mode choices.

Influential Factors
The influences of the explanatory variables are discussed below. Trip Chain Choices: When analysing the influences of trip chain choices, a base alternative must be selected; hence, the trip chain HTOH was chosen as the base alternative. The travel distance and transfer times were all negative and statistically significant at a 95% confidence level, i.e., −1.3229, −0.8283, and −0.7721. The reasons for the negative values may be that greater travel distances and transfer times can cause respondents to arrange more activities in a one-day tour, thus prompting them to select trip chain HTOH. The positive parameter value, 0.6938, of the travel time under trip chain HTTH implies that individuals spending more time travelling to visit more sites might spend a considerable amount of time using transportation. Thus, when comparing the parameter values of the travel cost, it can be seen that only values estimated for a complex trip chain showed significance at the 95% confidence level, namely 0.3264 and −1.3169. Hence, individuals spending more are more likely to travel choosing trip chain HTTH and less likely to travel choosing trip chain HOOH; therefore, respondents find high transportation costs acceptable for visiting more tourist destinations than non-tourist ones.
Transportation Mode Choices: To estimate the parameter values of the explanatory variables, the private car was selected as the base alternative. The results showed that non-local respondents positively influenced public transport choices under trip chains HTH and HTTH. This is intuitive, because most non-local respondents travel to Nanjing through high-speed railways and flights, and public transport is suitable for tour activities. The parameters estimated for occupation (5.6928, 285.41, 25.586, and 55.4410) indicated that students were more likely to choose public transport because it is economical. All the parameter values for licence ownership were positive (1.8054 and 5.8608) in trip chains including tour activities and negative (−37.677) in trip chains including non-tour activities, as drivers realised the difficulty in finding parking spots around the sites visited. Therefore, respondents selected public transport for tour activities and drove private cars to meet friends or for other commercial activities. In addition, it can be seen that the higher the number of travel companions and travel days, the higher the probability of respondents selecting public transport for tour activities and private transport for non-tour activities.

Relationship between Transportation Modes and Trip Chains
The structure with trip chains above transportation modes proved effective in describing the sequence used by tourists to decide their trip chains and transportation modes. The result, where the value of ρ 2 was 0.8486, was consistent with that obtained in previous research, and the goodness of fit was considerably better than that achieved in other studies, where the ρ 2 value was usually 0.3-0.4. Zhao [9] also developed an NL model for analysing travel behaviour on holidays that explored the interrelationships between trip chains and travel mode choices; this model revealed the credibility of the structure with the trip chain above the transportation mode in evaluating travel behaviour during holiday periods. Furthermore, this model fits better with the collected data than the MNL and NL models, where the departure time was selected as the nest [14]. However, the findings may differ from those of Yang et al. [3] in that the structure of the NL model used for analysing travel behaviour on holidays was the opposite of that used in this study. The structure with the transportation mode above the trip chain model fit their research data better. This could be because they analysed the travel behaviour of native tourists, and the data were collected during holidays in 2007; during this period, the tourism industry in China had developed considerably and the travel behaviour of people varied greatly. However, the current study focused on tourist travel behaviour on holidays, considering native and non-local tourists. The findings of this study can be used to reveal how the explanatory variables influence travel decisions.

Explanatory Variables for Trip Chain Choices
In this study, travel time showed a positive effect on the choice of trip chain HTTH, agreeing with previous findings indicating that the length of the trip chain increased with the travel time [2]. In contrast to the findings of other travel behaviour studies, the positive influence of travel time was related to the simple trip chain choices of tourists, probably because there were very few explanatory variables that influenced the estimation results. Wang et al. [29] stated that tourists spending more money on travelling would more likely select trip chains similar to HTTH and HTOH. In this research, further examination of the travel cost showed that this variable had a significant influence on the trip chain choices for tour and non-tour activities, which could be a useful extension of previous research. The effect of travel distance was thoroughly analysed in previous studies [3] and is again highlighted here. Tourists who selected complex trip chains were those who travelled long distances in one day. By contrast, simple trip chains would meet the requirements of tourists not travelling far. Interestingly, this study also revealed that transfer times were significant in terms of trip chain selections.

Explanatory Variables Influencing Transportation Mode Choices
The findings regarding the factors influencing the transportation modes chosen by the tourists indicated similarities and differences with respect to the observations of previous studies. The result that transportation mode choices were influenced by occupation showed high consistency with previous research results. Nutsugbodo and Sven [23,28] also confirmed that students were more likely to select public transport. The findings regarding the influence of driver's licence ownership in this study agreed with those of Wang et al. [29]; tourists owning a driver's licence were more likely to use private cars. In this study, this situation was analysed by considering two aspects: car licence ownership could prompt the use of private cars for non-tour activities and decrease the usage of private cars for tour activities. Positive effects were observed when analysing licence ownership and the decisions of tourists to use private cars; these effects could be understood intuitively, with several researchers proving the credibility of these observations [3,14,22,28,29]. By contrast, the number of travel companions had the opposite influence on the probability of choosing specific transportation modes in different trip chains. The higher the number of individuals performing tour activities, the higher the probability of selecting public transport, which is consistent with other research findings [10]. However, private car usage increased for non-tour activities, which was also observed in other studies [3,15,27]. Additionally, the day length did not have a significant influence on the transportation mode choices, as observed in previous studies [10,11,20,27,28]. One reason could be that the above studies were performed in different countries, and the day length might be a crucial factor in determining the travel behaviour of tourists in China.

Conclusions
To evaluate the rapid growth of the tourism market in China, a tourist behaviour model needed to be built to explicitly analyse tourist behaviours. Therefore, this study examined the differences and interplay between the choices of trip chains and transportation modes. The data were collected from face-to-face interviews conducted in Nanjing, China, in 2020. The relationship between the two components was analysed by establishing the NL model with two different structures. The results clarified the influence of sociodemographic variables, trip-related variables, and travel variables based on these two aspects.
There were three main findings in this study. Firstly, the decision structure was confirmed to be the trip chain above the transportation mode, which means that tourists preferred to determine the trip chain prior to deciding on the transportation mode. Secondly, the travel variables may have opposing influences on the choice of trip chains, where the tourists may endure more time cost under tour activities than non-tour activities. Thirdly, the choice of transportation mode also varied between tour activities and non-tour activities. For example, when non-local tourists decided to engage in tour activities during the holidays, public transport was more favourable than a private car.
The results of this study have important policy implications for the sustainability of the tourism and transportation sectors. A significant finding of this study is that the explanatory variables have opposing influences on the choices of the different attributes in trip chains, providing valuable opportunities to implement specific policies aimed at different tourist groups. The results indicated that higher times and costs are acceptable when tourists select trip chains with complex tour activities, such as HTTH. Therefore, it is necessary to improve public transportation facilities and attract more people to take sustainable transportation to ensure relaxed and comfortable travel, especially for complex tourism activities. Tourists choosing HTH, HTTH, or HTOH prefer public transport when they have many travel companions and the day length is long. Therefore, public transport service managers should cater to tourist requirements, such as providing more specialist tour bus routes connecting various famous sites. Such initiatives also help to simplify travel activity and enhance the flow of people between scenic spots, so that tourism and transportation can develop together sustainably. For holiday tours, students prefer public transport, and public transport discount policies aimed at students may be helpful. In addition, travellers with driver's licences are more likely to use private cars. Accordingly, cost-based traffic management strategies such as introducing toll lanes, congestion pricing, and charging for time-sharing parking around scenic spots can be expected to work effectively during holiday periods.
There are nevertheless two potentially important limitations in the present study. The first is that the transportation mode choice only consisted of private cars and public transportation, whereas more travel mode choices, such as subways, taxis, and online ride-hailing services should be considered in order to more accurately reflect the real-world situation. The second limitation concerns the fact that the data of this research were collected in one year, while it was necessary to use panel data to verify the existing findings.
This study is an initial step in examining the relationship between the trip chain and transportation mode choices for evaluating the travel behaviour of tourists on holidays. However, further comprehensive research is necessary. Firstly, the choices of tourists might be influenced by variations in their tastes or preferences. Consequently, variations may occur in parameter estimation, so it would be necessary to adopt more complex models, such as the mixed logit model. Furthermore, simulations for analysing the changes in tourist travel behaviour should be performed to predict the influence of transportation systems and socioeconomic factors and explore different management policies that could effectively support the rapid growth of tourism in China during holiday periods.
Funding: This research was funded by the Scientific Research Foundation for Advanced Talents of Nanjing Forestry University, grant number 163106041.