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Article

Mixed Logit Models for Travelers’ Mode Shifting Considering Bike-Sharing

1
Traffic Engineering Department, Nanjing University of Science and Technology, Nanjing 210094, China
2
Transport Authority of Transport Department of Jiangsu Province, Nanjing 210094, China
*
Author to whom correspondence should be addressed.
Sustainability 2020, 12(5), 2081; https://doi.org/10.3390/su12052081
Submission received: 31 December 2019 / Revised: 3 March 2020 / Accepted: 4 March 2020 / Published: 8 March 2020

Abstract

:
This study quantifies the impact of individual attributes, the built environment, and travel characteristics on the use of bike-sharing and the willingness of shifting to bike-sharing-related travel modes (bike-sharing combined with other public transportation modes such as bus and subway) under different scenarios. The data are from an RP (Revealed Preference) survey and SP (Stated Preference) survey in Nanjing, China. Three mixed logit models are established: an individual attribute–travel characteristics model, a various-factor bike-sharing usage frequency model, and a mixed scenario–transfer willingness model. It is found that age and income are negatively associated with bike-sharing usage; the transfer distance (about 1 km), owning no car, students, and enterprises are positively associated with bike-sharing usage; both weather and travel distance have a significant negative impact on mode shifting. The sesearch conclusions can provide a reference for the formulation of urban transportation policies, the daily operation scheduling, and service optimization of bike-sharing.

1. Introduction

The development of technologies such as big data and mobile payments has led to new types of travel, including bike-sharing. Bike-sharing is where companies provide bicycle-sharing services in public service areas such as campuses and subway stations. It is a time-sharing leasing model, which is in line with the concept of low-carbon travel, maximizes the use of public road passing rates, and is a new type of green environmental protection sharing economy. Currently, the most widely used bike-sharing systems are the traditional docked bike-sharing systems (public bike-sharing systems) and the new dockless bike-sharing systems. The new dockless bike-sharing is formed by the development of public bicycles.
Bike-sharing services are provided in more than 400 regions around the world [1]. China is undoubtedly the largest market, as the founding country of the new dockless bike-sharing [2]. The fastest growing year for users in the bike-sharing industry in China was 2017, with a growth rate of 632.1%. By the end of 2017, China had 16 million bike-sharing users. In addition, the total cycling distance of bike-sharing exceeded 29.947 billion kilometers, and the number of users exceeded 205 million. Although there was a phenomenon of capital withdrawal and industrial recycling in the bike-sharing industry in 2018, the number of users sharing bicycles still reached 235 million, with a growth rate of 14.6% [3].
The booming use of bike-sharing has enriched residents’ travel modes, revived the slump of bicycle travel caused by rapid economic development, maximized the use of public road passing rates, and increased the possibility of combining bike-sharing and public transportation. According to the existing research, the factors that influence the travel mode choice and transfer of travelers include personal attributes [4], family attributes [5], traffic characteristics [6], and travelers’ attitudes [7]; these factors have been identified via discrete choice models and machine learning models [8,9,10,11]. In the study of the shifting of travel modes, there are many studies on the transfer of cars to public transport (especially rail transit) [12,13]. Regarding the shift of bike-sharing modes, existing studies are mostly aimed at analyzing the proportion of bike-sharing replacing other modes of travel [14,15]. Research relating to mode shift willingness has not yet emerged for a mixed scenario with multiple factors.
Therefore, this study starts with this point, and uses the travel chain that combines bike-sharing and other public transportation modes (bus and subway) as the research object, and discusses the impact of the introduction of bike-sharing on the travel mode of travelers and mode shift willingness. A discrete selection model is considered. The standard logit model is limited by the IIA (the Independence of Irrelevant) conditions, which include random error limits (independence and equivalent distributions).The factors affecting travel mode shifting are not unrelated, so the standard logit model does not apply. The utility function of the mixed logit model adds an error term that allows for correlation between the choices, which solves the problem of IIA [16]. Considering that the mixed logit model does not require the IIA, three models are built using this method.
The paper establishes an individual attribute–travel feature model and analyzes the influence of the individual attributes on travel characteristics when using bike-sharing-related travel modes. A various-factor bike-sharing usage frequency model is established to explore the impact of traveler’s individual attributes, built environment, and travel characteristics on the number of bike-sharing used. We have established a mixed scenario–transfer willingness model to investigate the tendency of travelers to shift to bike-sharing-related travel modes in different scenarios. Based on the research findings, the degree of influence of various types of travelers is clearly identified, which provides a reference for urban traffic policy formulation and bike-sharing operation management, daily dispatch, and structural optimization, and promotes the organic integration of multi-modal transportation modes for efficient and green development of the comprehensive urban transportation system.
The remainder of this paper is organized as follows. Section 2 is a literature review. Section 3 is the data collection and description. Section 4 introduces the research methods of the paper. Section 5 discusses the model results. Section 6 is the main results summary.

2. Literature Review

Bike-sharing combines traditional bicycle travel with modern mobile payment and network technology to form an efficient, convenient, and environmentally friendly mode of transportation. Bike-sharing is generally operated by governments or private companies and is classified into the public transportation system [17]. As an “active way of travel,” bike-sharing travel can not only promote urban transport sustainability by reducing traffic congestion and emissions, but also help to improve human health [18]. With the development of the emerging sharing economy, bike-sharing services are increasingly attracting the attention of researchers, policy makers, and social marketers [19,20]. Existing studies have mainly analyzed the travel characteristics based on travel speed and travel time [21,22] and the purpose of shared bicycle travel [23], or studied the impact of gender on travel behavior based on visualization technology [24]. These studies are mainly based on movement and ignore the transitional activities between successive trips in the travel chain.
Studies show that after the introduction of bike-sharing, the number of cycling activities in some cities (such as Washington, DC, USA, Lyon, Paris, and Barcelona) has increased, which indicates that travelers have moved from other modes of bike-sharing [12,13]. For example, 85% of bike-sharing users (respondents) in Dublin shifted from walking and public transportation [14]. In Beijing, 22.73% and 34.42% of bike-sharing trips shifted from walking and bus, and 26.159% and 40.37% of Shanghai bike-sharing trips shifted from pedestrian and public buses, respectively [15]. About 80% of Hangzhou shared bicycle users (respondents) switched from public transportation to bike-sharing [13]. Although most travelers who are attracted to bike-sharing shift from other sustainable modes, this is not a desirable green policy outcome.
Habib et al. selected expectations, comfort, and safety awareness as influencing factors to study regarding bicycle travel needs, and they found that owning a bicycle and having safety awareness had a positive impact on the bicycle mode. Older men and younger women have higher requirements for comfort in the travel process, which has an impact on the choice of bicycle travel [4]. Rubin et al. analyzed the factors on their travel mode choice by families, and the results showed that family structure and vehicle ownership rate are the main factors [5]. Habib and Weiss conducted a survey of Toronto residents, and proposed that the behavior of residents has a significant impact on the travel mode selection behavior [25]. Parody et al. analyzed cross-sectional data to explore the causal relationship between the built environment and travel behavior, and the existence of a causal mode substitution mechanism between cars and non-motorized modes, given increases in the urbanization level at residential locations [6].
Multiple studies show that males and those aged 20–40 years have a higher probability of bike-sharing [26,27,28]. A station pair (origin–destination (OD)) regression model was developed based on station to station path level service attributes, along with other zonal level factors [29]. The above research results, on the choice of travel mode, show that the factors on travel mode choice are mainly divided into four categories: personal attributes, family attributes, built environment, and traffic characteristics. Among them, the personal attributes include gender, age, education level, income, occupation, etc.; the family attributes include whether or not to own a private car, etc.; the built environment refers to the distance between stations; and travel characteristics includes travel purposes, travel distance, travel time, travel expenses, etc.
Residents’ behavior is often influenced by their attitudes. According to the theory of planned behavior, residents’ attitudes have a significant impact on behavioral intentions, and behavioral intentions have a significant impact on their actual behavior [7]. Therefore, research attitudes are important for the impact of travel mode choices. Liuet al. proposed that low-carbon awareness indirectly affects travelers’ low-carbon travel intentions [30]. Jiaet al. pointed out that attitudes and low-carbon factors influence the behavioral intention of travel mode choice [31]. The existing studies have identified the importance of social and personal attitudes towards bike-sharing intentions [32].
In recent years, many analytical methods have been applied to travel behavior analysis, including descriptive analysis and advanced statistical and machine learning models such as multinomial logit [8], nested logit [8], cross-nested logit [10], and random forest [11]. Most studies used discrete choice models to describe the traveler’s mode choice mechanism based on traveler survey data. Domarchi et al. established a multinomial logit model and introduced dummy variables representing attitude factors to explore the impact of potential psychological factors on travel choices [33]. Arman et al. used a two-level mixed nested logit model to analyze the travel patterns of Iranian women [34]. The mixed logit model is one of the discrete choice models, compared to other logit models, and is not subject to IIA conditions [16]. This model can simulate any kind of discrete selection model (including logit, probit, nested logit, etc.) and has the advantage of being able to consider the difference in preferences of individuals [35,36].
To summarize, the existing research mainly focuses on the study of single shared bicycle travel and the proportion of other travel modes shifting to bike-sharing in various regions, without considering the willingness of travelers to shift to bike-sharing in different travel scenarios (including weather, travel period, travel purposes, etc.). In different travel scenarios, travelers have different degrees of willingness to choose bike-sharing as a travel mode, due to their different attributes and consideration of scene factors. Therefore, this study considers bike-sharing-related travel modes (bike-sharing or bike-sharing plus the bus and subway). The study selected several factors of individual attributes, travel characteristics, and the built environment, setting up different travel scenarios and using the survey data to conduct mixed logit modeling. Taking into account the individual preferences of respondents, this paper analyzes the impact of a traveler’s personal attributes, built-up environment, and travel characteristics on the use of shared bicycle frequencies, as well as the degree of willingness of travelers to shift to bike-sharing-related travel modes under different scenarios.

3. Data and Variables

3.1. Travel Survey

The online survey was conducted in Nanjing, China, in September 2018, and two offline supplementary surveys were conducted in January 2019 and September 2019, which were implemented by Revealed Preference (RP) survey. An online survey is a function that has only emerged in recent years. At present, these are only widely popular among young people and some middle-aged groups who are in close contact with network development. This survey is aimed at all travelers (>12 years) who are able to use bike-sharing; therefore, middle-aged and elderly groups are also a key part of the survey. If only the online survey method is used, there will be the following problems: 1. Surveys will be lacking for older people who use the Internet less; 2. For those who are not familiar with the online survey operation, they will lack patience and participation interest. Therefore, online surveys that rely solely on smart phone usage can produce biased samples.
In the end, the survey was conducted both online and offline. In the first stage, online surveys were distributed via WeChat (friend sharing) and emails, and questionnaires were collected through the platform. In the second stage, after a simple analysis of the questionnaires collected online, it was found that the number of recycling questionnaires for the elderly was small. Supermarkets, community plazas, shopping malls, and other crowded places were selected, and paper questionnaires were distributed to people who are older and unfamiliar with mobile devices.
The questionnaire of the study mainly included the following three aspects:
  • Travelers’ individual attributes
    Due to the differences in travel behaviors of different groups of people, it was necessary to investigate the personal attributes of the travelers, including the gender, age, occupation, education, personal monthly income, and whether they own cars.
  • Travelers’ travel characteristics
    This part was a survey of travelers’ travel characteristics, including the number of times bike-sharing was used in a week, travel time(time spent on a trip chain), travel expense, and travel distance of the last travel chain using a bike-sharing-related travel mode, the importance of time savings, whether it was economical, comfortable, and environmentally friendly, and the impact of the built environment (the distance to transfer using bike-sharing when using public transportation, which was expressed as the “distance between site and destination”) in order to obtain a large number of travel characteristics.
  • Travelers’ willingness to shift to bike-sharing-related travel modes
    This was the key content of the questionnaire. Through the Stated Preference (SP) survey, the travelers’ intentions and acceptance attitudes were obtained for the new method of bike-sharing, so as to predict the changes and impacts brought by it. Four impact factors, including the weather, travel time, travel destination, and travel distance, were selected to design 24 hypothetical scenarios, which ensured that the hypothetical scenario completely covered every possible scenario. For example: on a sunny day, when commuting during peak hours, and over a short distance (<3 km), the willingness to choose bike-sharing-related travel modes is: 1. Completely unwilling; 2. Not willing; 3. Generally willing; 4. More willing; 5. Very willing.
We collected 1247 valid online questionnaires, and 398 valid questionnaires were collected from the two offline surveys. Thus, 1645 valid samples were used for modeling.

3.2. Analysis of Influencing Factors

A mixed logit model was established based on the individual attributes of travelers. Independent variables included: gender, age, education, occupation, personal monthly income, and car ownership. The travel time and travel expense in the travel characteristics were dependent variables. The model aimed to study whether the individual attribute variables would affect travel time and travel expenses on bike-sharing-related trips, and to analyze the variables that had a significant influence.
The individual attributes, the built environment, and travel characteristics were selected as independent variables, and the number of travelers using bike-sharing was the dependent variable to determine whether each factor would affect the frequency of using bike-sharing. Travel weather, travel time, travel purpose, and distance were selected as independent variables. Transfer willingness was a dependent variable, and a mixed logit model was established to study the willingness to shift. Variable selection, descriptions, and the statistic results are shown in Table 1, Table 2, Table 3 and Table 4, and Figure 1, respectively.

4. Analytical Method

The mixed logit model is a highly flexible model that can be applied to any random utility model. As the influencing factors of this study are not independent of each other and violate the assumption of the Independence from Irrelevant Alternative (IIA), the standard logit model is not appropriate in this study. Compared with the standard logit model, the utility function of the mixed logit model adds an error term that allows for correlation between the choices, which solves the problem of IIA. In addition, it presents the variables’ coefficient value in a substitution pattern, which allows for various scopes in analyzing and applying heterogeneity in each respondent. Therefore, the analytical method in this study can be determined as mixed logit model.
The random utility equation of the mixed logit model is shown in Equation (1):
U n i = V n i β + ε n i + ξ n i
where V n i is the deterministic part in the utility function of the individual n selecting the travel mode i ; ε n i is the random term, and ξ n i is the error term.The error terms can be distributed in the form of normal distribution, lognormal distribution, uniform distribution, etc.
β is the difference in preferences; f ( β | θ ) is the density function under the overall parameter θ . If there is no difference in preferences, that is, in the condition that the fixed condition of β is unchanged, the probability of travel mode selection is:
L n i ( β ) = e V n i ( β ) j = 1 I e V n j ( β ) .
In the mixed logit model, β is randomly changed. Therefore, it is necessary to multiply the distribution of β on this basis to obtain the conditional selection probability of the behavior subject in the presence of random preference differences. The final form of the mixed logit model in the presence of random preference differences is as follows:
P n i = L n i ( β ) f ( β | θ ) d β .
The selection probability of the mixed logit model can be regarded as the weighted average of the selection probabilities of the multidimensional logit model, and the weight is determined by f ( β | θ ) . The distribution form of f ( β | θ ) is usually a normal distribution, a lognormal distribution, or a uniform distribution, etc., and can be selected according to actual conditions. The form of a probability function of a mixed logit model can take different distribution forms, resulting in the model probability function being non-closed. In addition, the density function is described by a certain parameter θ , such as a normal distribution through the mean μ and standard deviation σ .
SAS 9.4 was used to solve models. The fitness index was used to describe the degree of matching between the theoretical results and actual results of the model. Indicators including the McFadden (1974) likelihood index, Likelihood ratio R, Aldrich–Nelson, and Estrella are expressed as:
R M 2 = 1 [ l n L / ( l n L 0 ) ]
Likelihood   ratio   R = l o g L l o g L 0
Aldrich Nelson = R / ( R + N )
Estrella = 1 [ ( l n L K ) / l n L 0 ]
where L and L 0 are the maximum log likelihood function values in the model containing all variables and containing only the intercept, respectively. The values of the McFadden likelihood index, Aldrich–Nelson, and Estrella are between ( 0 , 1 ) . The closer the value is to 1, the better the model fits.

5. Results and Discussion

5.1. The Effect of Individual Attributes on Travel Characteristics

The first model describes the impact of individual attributes on travel characteristics (travel time and travel expense). The log-likelihood values of the two models are −7165 and −7915, which indicates that the algorithm converges; the goodness of fit of the models is shown in Table 5, where the Estrella values are 0.552 and 0.4425, the Aldrich–Nelson values are 0.4021 and 0.3391, and the McFadden LRIvalues are 0.3061 and 0.2335. These values are greater than 0.2, which indicates that the models have a good fitting effect.
Reference to the travel time of >60 min(3)and the travel expense of <¥1(1) results of the model are shown in Table 6, Figure 2 and Figure 3. The independent variables in the model include binary variables (gender and whether they own cars), continuous variables (age and personal monthly income), and multi-categorical variables (education and occupation).
The survey of travel characteristics is based on the use of bike-sharing-related travel modes. Taking >60 min(3)and <¥1(1)as references, 0–30min and ¥1–¥4 have higher constant estimates of 6.873 and 6.065, indicating that travelers prefer to travel in short trips and with low expenses. Among the travel expenses, <¥1 corresponds to “only use bike-sharing,” ¥1–¥4 and >¥4 correspond to “use bike-sharing and other public transportation, ”which indicates that travelers tend to choose short-distance travel combined with bicycle and public transportation when they choose bike-sharing.
It can be found from Table 6 that women have a positive significant influence on the choice of 0–30 min and a negative significant influence on the choice of ¥1–¥4. Women are more willing to use bike-sharing for shorter distances (0–30min) as compared with the option of >60min. Compared with <¥1, women are not willing to choose a travel mode with a fee of ¥1–¥4. Mosquera et al. [37] proposed that cycling might still not be a feasible option for a significant proportion of travelers, particularly for women. The findings of this study, however, are different. While women choose bike-sharing, they tend to shift to other public transportation after a short-distance bike-sharing ride. A higher age is positively associated with a traveler’s choice of 30–60min with an estimated value of 6.408, which provides the best statistical fit for the normal distribution of the average value of 4.695 and the standard value of −3.83 to choose ¥1–¥4. We found that the increase in age is associated with travelers who pay more attention to the economic benefits in long-distance travel, and choose to combine bike-sharing with public transport.
The “high school/before” and “undergraduate/college” education levels have a positive significant influence on the travel time within one hour and have a negative significant impact on the travel expenses of ¥1–¥4. “Undergraduate/college” has a significant negative impact on the selection of >¥4 with an estimated value of −26.76. Students have a positive significant impact on the selection of 0–30 min with an estimated value of 42.62, a significant negative impact on the selection of 30–60min with an estimated value of −54.70, and a significant negative impact on travel costs over ¥1. The relative probability that the institutional staff choose 30–60min and ¥1–¥4 is relatively lower. The relative probability of the employees choosing 0–30min is lower, and selecting ¥1–¥4 is higher. The travel time and travel expenses of the “high school/before” and “undergraduate/college” qualifications are generally less, as the “high school/before” academics are mostly middle school students who are attending school, and their general transportation is by parents or by using public transportation. In addition, school regulations on mobile phone time and safety factors limited their travel time by bike-sharing.
Some of the “undergraduate/college” qualifications overlap with the “student” occupations. The travel range of such travelers is mostly concentrated on campus, and the time and cost of using bike-sharing-related travel modes are relatively low. For those who have already worked, the travel time and cost of using bike-sharing is increased due to the distance between the workplace and the place of residence. For those who do not have a car, the relative probability of choosing ¥4/¥1 is lower than car owners. Most of these people are commuters with low to medium income and tend to use a combination of bike-sharing and public transportation for medium or long-distance travel.

5.2. The Effects of Various Factors on Bike-Sharing Usage Frequency

A mixed logit model was used to explore the influence of various factors on bike-sharing usage frequency. The log-likelihood value is −9432, which indicates that the algorithm converges. As shown in Table 7, the Estrella value, Aldrich–Nelson value, and McFadden LRI value are 0.5919, 0.4337, and 0.2762, respectively. It was found that the model has a good fitting effect.
Taking 0 time(1) as a reference in the model, the independent variables include binary variables (gender, whether they own a car, transfer distance, and travel preference), continuous variables (age, personal monthly income, travel time, and travel expense), and multi-categorical variables (education and occupation). The results are shown in Table 8 and Figure 4.
Taking 0 times (1) as the reference, 1–2 times (2) and >6 times (4) have constant estimates of 8.4205 and −33.37, indicating that most travelers use bike-sharing 1–2 times in a week, and a small number of people use bike-sharing more than six times in a week.
Table 8 shows the relative probability reduction of choosing 1–2 times (2)/0 times (1) and 3–5 times (3)/0 times (1) with the increase of age. The use of bike-sharing requires a traveler’s physical fitness and access to mobile phones, thus those with older ages are less likely to use bike-sharing. This is consistent with the reality.
Taking the master’s degree as a reference, “high school/before” and “undergraduate/college” have a significant positive influence on the choice of 1–2 times (2), and have a significant negative impact on the selection of >6 times (4), indicating that people who have higher education will often use bike-sharing-related travel modes. Regarding the level of education, studies show that people with higher education travel more using public transportation (especially leisure travel) [38,39]. Bike-sharing as an emerging product under the Internet+ model advocates a healthy and environmentally friendly concept of life, which is consistent with public transportation, thus bike-sharing is more likely to be accepted by people with higher education levels, and such people have a higher tendency to shift.
Taking other occupations as the reference, students have a negative significant impact on the choice of 1–2 times (2) and 3–5 times (3), and have a positive significant impact on the choice of >6 times (4). Being an institutional staff or a business employee has a positive significant impact on the choice of >6 times (4), and self-employed persons and retirees have a negative significant influence on the choice of 1–2 times (2) and 3–5 times (3). It was found that students, especially college students, travel mainly by bike-sharing. University campuses become hot-spots for bike-sharing use, while enterprises and employees tend to use bike-sharing frequently. Such travelers have a fixed commuter mode of bike-sharing and public transportation. The frequency of self-employed persons and retirees using bike-sharing is generally low, as self-employed people have higher flexibility in travel modes, higher incomes, and travel is based more on private transportation. As retirees are generally older, in line with the above analysis of age variables, they use bike-sharing at a lower frequency.
Compared with 0 (1), the increase of personal monthly income has a negative significant impact on the choice of the other three frequencies for the travelers: −1.25, −4.46, and −5.44. We found that the higher the personal monthly income, the less likely the traveler will be to choose bike-sharing, which is consistent with Habib’s (2014) study. Owning a car has a very positive significant impact on the choice of >6 times (4). These travelers are low-and middle-income commuters, and the economic benefits and convenience of bike-sharing attract such travelers. In the transfer distance, the relative probability of 800m for choosing 3–5 times (3) is increased, and 1000m has a high positive significant impact on the selection of each type of frequency, indicating that the traveler tends to choose a bike-sharing ride when the transfer distance is 800m or 1000m, which reflects the advantage of bike-sharing to solve the “last mile” problem. Bike-sharing becomes a bridge between the destination and the bus station with a short distance, reflecting its advantage as a new type of travel that can achieve point-to-point travel, which is not available through public transportation or the subway.
The increase in travel time has a positive significant impact on the selection of 3–5 times (3), and has a negative significant impact on the selection of >6 times (4), indicating that travelers tend to use bike-sharing in cases of short-distance travel. In the travel characteristics, travelers who have “saving time,”“environmental protection,” and “economic” awareness tend to use bike-sharing frequently. Travelers with “comfort” and “safety” awareness tend not to use bike-sharing. This also reflects the characteristics of bike-sharing, which include the advantages of time-saving economy, health, and environmental protection and the disadvantages of low comfort and weak safety.

5.3. Analysis of the Mixed Scenario–Transfer Willingness Model

A mixed logit model was used to study the degree of shifting willingness to choose bike-sharing-related travel modes in different situations. The frequency of willingness for each scenario is shown in Table 9. The log-likelihood value is −16362, which indicates that the algorithm converges. The goodness of fit of the model is shown in Table 10, where the Estrella value, Aldrich–Nelson value, and McFadden LRI value are 0.3844, 0.3421, and 0.3987, respectively.
Taking unwilling(1) as a reference, the results are shown in Table 10 and Figure 5. The model independent variables include binary variables (weather, travel time, and travel purpose) and continuous variables (travel distance). As the number of valid questionnaires was 1645, and the SP survey section of each questionnaire contained 24 scenario questions, the final sample size was 39,480.
In Table 11, travel distance is a random coefficient, and so for weather, travel time, and travel purpose, the standard deviation estimates are not significantly different from 0. Hence, the coefficient is a fixed value, indicating whether these variables are included, regardless of whether these variables include the choice to shift to the bike-sharing willingness in the mixed scenario. Their values are fixed, and the probability prediction values are shown in Table 11.
The traveler’s choice of the “very willing” constant estimate (2.78) is higher than the other options, which indicates that the traveler has a positive attitude towards the shift to bike-sharing-related travel modes. As shown in Table 10, the weather and travel distance have a significant impact on each traveler’s willingness to shift, and these factors have a significant influence on the “very willing” transfer intention, including travel time and travel purpose.
The travel distance has significant mean and standard deviation, which provide the best statistical fit for the normal distribution of the average value of −4.294 and the standard value of −4.746 for residents’ willingness to choose “very willing.” Compared with the parameter estimates, the travel distance has the greatest impact on the “very willing” attitude, as the tolerable distance of bicycle travel is less than 10 km. As the travel distance increases, the cyclists’ comfort decreases. Therefore, the few travelers who travel farther tend to choose bike-sharing. This is consistent with the effect of the “distance between site and destination” mentioned above on the bike-sharing usage frequency. That is, bike-sharing is only suitable for short-distance travel.
Severe weather has a negative impact on any willingness. The parameter with the “very willing” attitude is the largest, which indicates that if the weather changes from sunny to bad, the willingness to shift to the bike-sharing-related travel modes will be greatly reduced. This embodies the fact that bike-sharing is greatly affected by the natural environment, including the weather.
Relative to the peak hour, the relative probability that travelers choose “very willing (5)/completely unwilling (1)” during the light traffic period is slightly reduced. Relative to commuting, the relative probability of choosing “very willing (5)/completely unwilling (1)” on traveling leisurely is also slightly lower. This indicates that for travel during the peak period and for commuting, travelers are more willing to use bike-sharing. This is also in line with the actual scenario, as the travel combination of bike-sharing and public transportation is less affected by external traffic, which can ensure punctuality and accessibility, and can meet modern society’s pursuit of a natural and healthy green lifestyle.

6. Conclusions and Future Work

This study explored the impact of bike-sharing on the transfer of residents’ travel modes by travel survey data in Nanjing, China. Taking the bike-sharing plus public transportation travel chain as the research object, the mixed logit model was used to study the influence of individual attributes, the built environment, and travel characteristics on the frequency of using bike-sharing-related travel modes, the degree of willingness to shift to bike-sharing-related travel modes under mixed scenarios, and the analysis of the significant influencing factors. The conclusions are as follows:
  • Travelers who tend to choose short-distance and low-cost travel by public transportation, tend to shift to bike-sharing for travel of about 1 km, which reflects the advantages of combining bike-sharing and other public transport modes to achieve point-to-point travel.
  • Older and higher-income travelers use bike-sharing with a lower frequency and have a lower tendency to shift. Students, enterprise employees, people without a car, individuals with low monthly income, and highly educated travelers (undergraduate/above) prefer to travel by bike-sharing. As this type of travel mode has health benefits and low travel costs, it is more popular among young people with low to middle income, who have a higher tendency to shift. Students with “college/undergraduate” degrees use bike-sharing with high frequency and for short durations, which indicates that college students use bike-sharing as the main means of transportation on campus. Currently, many universities in China have launched exclusive bike-sharing services within their campuses, which is consistent with the findings of this study, as shown in Figure 6. Also, travelers who focus on the “time saving,”“environmental protection,” and “economic” characteristics tend to use bike-sharing on a regular basis.
  • In the mixed scenario–transfer willingness model, compared with the four influencing factors, the impact of riding distance on riders’ comfort is significantly obvious, and the impact of the weather on riding safety is also very distinct. Hence, the willingness of travelers to shift to bike-sharing-related travel modes is greatly affected by the weather and travel distance. Travelers are more willing to use bike-sharing-related travel modes when the weather is clear and the distance is short. Different travel periods and travel purposes have a weak influence on the willingness to transfer. Compared with the light traffic travel times and other travel, travelers’ transfer attitudes tend to be “very willing” for peak travel times and for commute trips, as the combination of bike-sharing plus public transportation is less affected by external traffic, and punctuality and accessibility can be guaranteed.
Previous studies considered only the influencing factors of bike-sharing trips [2], the safety of bike-sharing trips [40], or the factors that affect the frequency of bike-sharing [41]. In this article, the bike-sharing and public transportation travel chain was set as a travel mode. In addition, we explored the influence of factors such as personal attributes and the built environment on the choice of bike-sharing-related travel modes, as well as the degree of willingness of residents to transfer to bike-sharing-related travel modes, by constructing a mixed scenario set composed of multiple factors. This is an entry point that has not appeared in previous researches. A mixed logit model was used for analysis, which solved the IIA characteristics of other discrete models and satisfied the heterogeneity between individuals [36,42].
There are still some problems with the existing management and service of bike-sharing. For example, there may be problems where users cannot find vehicles when they need them, and some places have bike-sharing that are stranded. The influencing factors of travelers’ shifts to bike-sharing are unknown, so this study selected individual attributes, travel characteristics, built environment, and hypothetical scenarios to explore their impacts on the shift to bike-sharing-related travel modes. Overall, the conclusions have reference significance for improving the management and service capacity of bike-sharing in Nanjing and other cities similar to Nanjing. According to different types of travelers’ shift tendencies, bike-sharing operators can target the delivery of bike-sharing at different time points in different places (e.g., school campuses, public transportation sites, residential areas, and companies), so as to achieve the most effective use of their resources. The operating company scientifically deploys the number and times of shared bicycles for buses, subway stations, and surrounding dwellings to ensure the continuity of bike-sharing services between stations and dwellings, and effectively promotes the travel chain combining bike-sharing and public transport. In addition, according to the nature of land use and population composition of the area, the allocation of the number of shared bicycles can be guided. The result is a high volume of bicycles for students, enterprise employees, travelers without a car who are keen on bike-sharing. At the same time, bike-sharing operators can establish a more complete workflow and system for the placement, parking, operation, and maintenance of bicycles. According to the degree of traveler willingness to use bicycles in different scenarios, enterprises also need to continuously optimize their services and provide some humanized services such as safety reminders, navigation guides, weather forecasts, etc. The government and regulators should introduce relevant management rules and regulate the quality of the bike-sharing industry. Operating companies can promote the use of bike-sharing by online and offline services, improve service levels, and cooperate with government departments to publicize and guide city cycling.
There are two limitations on this study. First, the sample size could be larger. Although the collected data samples cover the travel groups with different attributes and the expected conclusions are obtained, the sample size is generally small, and follow-up can continue to increase the data samples to further enhance the credibility of the conclusions. Secondly, the mixed scenarios have few impact factors. This study considered the four influencing factors of weather, travel time, travel distance, and travel purpose when setting the scenario, which is not entirely comprehensive. More factors should be considered in future studies, including travel cost-related variables, to achieve more specific mixed scenarios. In addition, future work can add the difference between the travel modes before and after the shift, and analyze the transfer sources of travelers who use bike-sharing, to obtain the specific shift trend of the travelers’ shifts to the bike-sharing-related travel mode in complex scenarios.

Author Contributions

The authors confirm contribution to the paper as follows: conceptualization, M.Y. and Y.C.; methodology, M.Y. and Q.H.; software, Y.C.; validation, M.Y. and Y.C.; investigation, G.Y. and B.W.; data analysis, G.Y.; writing—original draft preparation, Y.C.; writing—review and editing, M.Y. All authors reviewed the results and approved the final version of the manuscript.

Funding

This research was funded by the National Key R&D Program of China, grant number 2017YFB1201004, and the Projects of the National Natural Science Foundation of China, grant number51208256.

Acknowledgments

The authors would like to thank the experienced anonymous reviewers for their constructive and valuable suggestions to improve the overall quality of this paper.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Faghih-Imani, A.; Hampshire, R.; Marla, L.; Eluru, N. An empirical analysis of bike sharing usage and rebalancing: Evidence from Barcelona and Seville. Transp. Res. Part A Policy Pract. 2017, 97, 177–191. [Google Scholar] [CrossRef]
  2. Campbell, A.A.; Cherry, C.R.; Ryerson, M.S.; Yang, X. Factors influencing the choice of shared and shared electric bikes in Beijing. Transp. Res. Part C Emerg. Technol. 2016, 67, 399–414. [Google Scholar] [CrossRef] [Green Version]
  3. iiMedia Research. The First Half of 2018 China’s Shared Bicycle Industry Monitoring Report; iiMedia Research: Guangzhou, China, 2018. [Google Scholar]
  4. Habib, K.N.; Mann, J.; Mahmoud, M.; Weiss, A. Synopsis of bicycle demand in the city of Toronto: Investigating the effects of perception, consciousness and comfortability on the purpose of biking and bike ownership. Transp. Res. Part A Policy Pract. 2014, 70, 67–80. [Google Scholar] [CrossRef]
  5. Rubin, O.; Mulder, C.H.; Bertolini, L. The determinants of mode choice for family visits-evidence from Dutch panel data. J. Transp. Geogr. 2014, 38, 137–147. [Google Scholar] [CrossRef] [Green Version]
  6. Parady, G.T.; Takami, K.; Harata, N. Built environment and travel behavior: Validation and application of a continuous-treatment propensity score stratification method. J. Transp. Land Use 2017, 10, 763–788. [Google Scholar] [CrossRef]
  7. Ajzen, I. The theory of planned behavior. Organ. Behav. Hum. Decis. Process. 1991, 50, 179–211. [Google Scholar] [CrossRef]
  8. McDonald, N.C. Children’s mode choice for the school trip: The role of distance and school location in walking to school. Transportation 2008, 35, 23–35. [Google Scholar] [CrossRef]
  9. Ermagun, A.; Samimi, A. Promoting active transportation modes in school trips. Transp. Policy 2015, 37, 203–211. [Google Scholar] [CrossRef]
  10. Ermagun, A.; Levinson, D. Public transit, active travel, and the journey to school: A cross-nested logit analysis. Transp. Metr. A Transp. Sci. 2016, 13, 24–37. [Google Scholar] [CrossRef]
  11. Ermagun, A.; Rashidi, T.H.; Lari, Z.A. Mode choice for school trips long-term planning and impact of modal specification on policy assessments. Transp. Res. Rec. J. Transp. Res. Board 2015, 2513, 97–105. [Google Scholar] [CrossRef]
  12. Fishman, E.; Washington, S.; Haworth, N. Bikeshare’s impact on active travel: Evidence from the United States, Great Britain, and Australia. J. Transp. Health 2015, 2, 135–142. [Google Scholar] [CrossRef]
  13. Shaheen, S.A.; Zhang, H.; Martin, E.; Guzman, S. Hangzhou public bicycle: Understanding early adoption and behavioral response to bike sharing in Hangzhou, China. Transp. Res. Rec. J. Transp. Res. Board 2011, 2247, 34–41. [Google Scholar] [CrossRef] [Green Version]
  14. O’neill, P.; Caulfield, B. Examining user Behavior on a shared bike scheme: The case of Dublin Bikes. In Proceedings of the 13th International Conference on Travel Behavior Research, Toronto, ON, Canada, 5–8 July 2012. [Google Scholar]
  15. Yang, T.; Pan, H.; Shen, Q. Bike-sharing systems in Beijing, Shanghai, and Hangzhou and their impact on travel behavior. In Proceedings of the Transportation Research Board 90th Annual Meeting, Washington, DC, USA, 23–27 January 2011. [Google Scholar]
  16. Li, W.; Kamargianni, M. Providing quantified evidence to policy makers for promoting bike-sharing in heavily air-polluted cities: A mode choice mode and policy simulation for Taiyuan-China. Transp. Res. Part A Policy Pract. 2018, 111, 277–291. [Google Scholar] [CrossRef]
  17. Yang, R.; Long, R. Analysis of the influencing factors of the public willingness to participate in public bicycle projects and intervention strategies—A case study of Jiangsu Province, China. Sustainability 2016, 8, 349. [Google Scholar] [CrossRef] [Green Version]
  18. Bullock, C.; Brereton, F.; Bailey, S. The economic contribution of public bike-share to the sustainability and efficient functioning of cities. Sustain. Cities Soc. 2017, 28, 76–87. [Google Scholar] [CrossRef]
  19. Kaltenbrunner, A.; Meza, R.; Grivolla, J.; Codina, J.; Banchs, R. Urban cycles and mobility patterns: Exploring and predicting trends in a bicycle-based public transportation system. Pervasive Mob. Comput. 2010, 6, 455–466. [Google Scholar] [CrossRef]
  20. Fishman, E.; Washington, S.; Haworth, N. Bike share: A synthesis of the literature. Transp. Rev. 2013, 33, 148–165. [Google Scholar] [CrossRef] [Green Version]
  21. Jäppinen, S.; Toivonen, T.; Salonen, M. Modelling the potential effect of shared bicycles on public transport travel times in Greater Helsinki: An open data approach. Appl. Geogr. 2013, 43, 13–24. [Google Scholar] [CrossRef]
  22. Jensen, P.; Rouquier, J.-B.; Ovtracht, N.; Robardet, C. Characterizing the speed and paths of shared bicycle use in Lyon. Transp. Res. Part D Transp. Environ. 2010, 15, 522–524. [Google Scholar] [CrossRef] [Green Version]
  23. Bordagaray, M.; dell’Olio, L.; Fonzone, A.; Ibeas, Á. Capturing the conditions that introduce systematic variation in bike-sharing travel behavior using data mining techniques. Transp. Res. Part C Emerg. Technol. 2016, 71, 231–248. [Google Scholar] [CrossRef]
  24. Beecham, R.; Wood, J. Exploring gendered cycling Behaviors within a largescale Behavioral data-set. Transp. Plan. Technol. 2014, 37, 83–97. [Google Scholar] [CrossRef] [Green Version]
  25. Habib, K.N.; Weiss, A. Evolution of latent modal captivity and mode choice patterns for commuting trips: A longitudinal analysis using repeated cross-sectional datasets. Transp. Res. Part A Policy Pract. 2014, 66, 39–51. [Google Scholar] [CrossRef]
  26. Vogel, M.; Hamon, R.; Lozenguez, G.; Merchez, L.; Abry, P.; Barnier, J.; Borgnat, P.; Flandrin, P.; Mallon, I.; Robardet, C. From bicycle sharing system movements to users: A typology of Vélo’ v cyclists in Lyon based on large-scale behavioural dataset. J. Transp. Geogr. 2014, 41, 280–291. [Google Scholar] [CrossRef]
  27. Wang, K.; Akar, G.; Chen, Y. Bike sharing differences among millennials, gen xers, and baby boomers: Lessons learnt from New York City’s bike share. Transp. Res. Part A Policy Pract. 2018, 116, 1–14. [Google Scholar] [CrossRef]
  28. Wang, K.; Akar, G. Gender gap generators for bike share ridership: Evidence from citi bike system in New York City. J. Transp. Geogr. 2019, 76, 1–9. [Google Scholar] [CrossRef]
  29. El-Assi, W.; Mohamed, M.S.; Habib, K.N. Effects of built environment and weather on bike sharing demand: A station level analysis of commercial bike sharing in Toronto. Transportation 2017, 44, 5896–5913. [Google Scholar] [CrossRef]
  30. Liu, D.; Du, H.; Southworth, F.; Ma, S. The influence of social-psychological factors on the intention to choose low-carbon travel modes in Tianjin, China. Transp. Res. Part A Policy Pract. 2017, 105, 42–53. [Google Scholar] [CrossRef]
  31. Jia, N.; Li, L.; Ling, S.; Ma, S.; Yao, W. Influence of attitudinal and low-carbon factors on behavioral intention of commuting mode choice-Across-city study in China. Transp. Res. Part A Policy Pract. 2018, 111, 108–118. [Google Scholar] [CrossRef]
  32. Wang, Y.; Douglas, M.A.; Hazen, B.T.; Dresner, M. Be green and clearly be seen: How consumer values and attitudes affect adoption of bicycle sharing. Transp. Res. Part F Traffic Psychol. Behav. 2018, 58, 7307–7342. [Google Scholar] [CrossRef]
  33. Domarchi, C.; Tudela, A.; González, A. Effect of Attitudes, Habit and Affective Appraisal on Mode Choice: An Application to University Workers. Transportation 2008, 35, 585–599. [Google Scholar] [CrossRef]
  34. Arman, M.A.; Khademi, N.; Lapparent, M.D. Women’s mode and trip structure choices in daily activity-travel: A developing country perspective. Transp. Plan. Technol. 2018, 41, 845–877. [Google Scholar] [CrossRef]
  35. McFadden, D.; Train, K. Mixed MNL models for discrete response. J. Appl. Econ. 2000, 15, 447–470. [Google Scholar] [CrossRef]
  36. McFadden, D.L. Conditional Logit Analysis of Qualitative Choice Behavior; Academic Press: New York, NY, USA, 1974. [Google Scholar]
  37. Mosquera, J.; Parra, D.C.; Gomez, L.F.; Sarmiento, O.; Schmid, T.; Jacoby, E. An inside look at active transportation in Bogotá: A qualitative study. J. Phys. Act. Health 2012, 9, 776–785. [Google Scholar] [CrossRef] [PubMed]
  38. Berg, P.V.D.; Arentze, T.; Timmermans, H. Estimating social travel demand of senior citizens in The Netherlands. J. Transp. Geogr. 2011, 19, 323–331. [Google Scholar] [CrossRef]
  39. Plaut, P.O. Non-motorized commuting in the US. Transp. Res. Part D Transp. Environ. 2005, 10, 347–356. [Google Scholar] [CrossRef]
  40. Fishman, E.; Schepers, P. Global bike share: What the data tells us about road safety. J. Saf. Res. 2016, 56, 41–45. [Google Scholar] [CrossRef]
  41. Bachand-Marleau, J.; Lee, B.H.Y.; El-Geneidy, A.M. Better understanding of factors influencing likelihood of using shared bicycle systems and frequency of use. Transp. Res. Rec. J. Transp. Res. Board 2012, 2314, 66–71. [Google Scholar] [CrossRef] [Green Version]
  42. Linfeng, G.; Wei, F. Modeling single-vehicle run-off-road crash severity in rural areas: Accounting for unobserved heterogeneity and age difference. Accid. Anal. Prev. 2017, 101, 124–134. [Google Scholar]
Figure 1. The number of respondents using bike-sharing in a week.
Figure 1. The number of respondents using bike-sharing in a week.
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Figure 2. The parameter estimates of the individual attribute–travel time model.
Figure 2. The parameter estimates of the individual attribute–travel time model.
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Figure 3. The parameter estimates of the individual attribute–travel expense model.
Figure 3. The parameter estimates of the individual attribute–travel expense model.
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Figure 4. The parameter estimates of the various-factor bike-sharing usage frequency model.
Figure 4. The parameter estimates of the various-factor bike-sharing usage frequency model.
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Figure 5. The parameter estimate of the mixed scenario–shifting willingness model.
Figure 5. The parameter estimate of the mixed scenario–shifting willingness model.
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Figure 6. Bike-sharing exclusive to a campus.
Figure 6. Bike-sharing exclusive to a campus.
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Table 1. Individual attribute statistics of the sample.
Table 1. Individual attribute statistics of the sample.
Survey ProjectVariableVariable DescriptionNumber of SamplesProportion/%
Gendera10: Man87253.0%
1: Woman77347.0%
Age (years)a20: 12–30115370.1%
1: 31–5040924.9%
2: >50835.0%
Educationa31: High school/former27917.0%
2: Undergraduate/college69142.0%
3: Master/above67541.0%
Occupationa41: Student77547.0%
2: Institution staff24114.7%
3: Business employee33320.2%
4: Self-employed674.1%
5: Retiree392.4%
6: other19011.6%
Monthly incomea50: <¥200067140.8%
1: ¥2000–¥500049730.2%
2: ¥5000–¥10,00037823.0%
3:>¥10,000996.0%
Car ownershipa60: yes34921.2%
1: no129678.8%
Note: “Institution staff” means a person working in an institution. Institution refers to departments or units that are under the leadership of state organs, which is in contrast to “enterprise units.” For example, schools, hospitals, and some research institutes belong to public institutions.
Table 2. Built environment statistics of the sample.
Table 2. Built environment statistics of the sample.
Survey ProjectVariableVariable DescriptionNumber of SamplesProportion/%
Distance between site and destinationb11: 500m47929.1%
2: 800m32419.7%
3: 1000m57635.0%
4: 1500m26616.2%
Table 3. Travel characteristic statistics of the sample.
Table 3. Travel characteristic statistics of the sample.
Survey ProjectVariableVariable DescriptionNumber of SamplesProportion/%
Travel timec10: 0–30 min115570.2%
1: 30–60 min30218.4%
2: >60 min18811.4%
Travel expensec20: <¥1 98860.1%
1: ¥1–¥455833.9%
2:>¥4996.0%
Travel preferencec3Time saving c311434
Economic c321136
Comfort c33860
Environmentally friendly c34503
Safety c35813
Table 4. Twenty-four hypothetical scenarios.
Table 4. Twenty-four hypothetical scenarios.
Hypothetical Scenarios
1Sunny weather, Peak congestion period, Commuting travel, Short-distance (<3 km)
2Sunny weather, Peak congestion period, Commuting travel, Medium-distance (3–10 km)
3Sunny weather, Peak congestion period, Commuting travel, Long-distance (>10 km)
4Sunny weather, Peak congestion period, Other travel, Short-distance (<3 km)
5Sunny weather, Peak congestion period, Other travel, Medium-distance (3–10 km)
6Sunny weather, Peak congestion period, Other travel, Long-distance (>10 km)
7Sunny weather, Light traffic period, Commuting travel, Short-distance (<3 km)
8Sunny weather, Light traffic period, Commuting travel, Medium-distance (3–10 km)
9Sunny weather, Light traffic period, Commuting travel, Long-distance (>10 km)
10Sunny weather, Light traffic period, Other travel, Short-distance (<3 km)
11Sunny weather, Light traffic period, Other travel, Medium-distance (3–10 km)
12Sunny weather, Light traffic period, Other travel, Long-distance (>10 km)
13Bad weather, Peak congestion period, Commuting travel, Short-distance (<3 km)
14Bad weather, Peak congestion period, Commuting travel, Medium-distance (3–10 km)
15Bad weather, Peak congestion period, Commuting travel, Long-distance (>10 km)
16Bad weather, Peak congestion period, Other travel, Short-distance (<3 km)
17Bad weather, Peak congestion period, Other travel, Medium-distance (3–10 km)
18Bad weather, Peak congestion period, Other travel, Long-distance (>10 km)
19Bad weather, Light traffic period, Commuting travel, Short-distance (<3 km)
20Bad weather, Light traffic period, Commuting travel, Medium-distance (3–10 km)
21Bad weather, Light traffic period, Commuting travel, Long-distance (>10 km)
22Bad weather, Light traffic period, Other travel, Short-distance (<3 km)
23Bad weather, Light traffic period, Other travel, Medium-distance (3–10 km)
24Bad weather, Light traffic period, Other travel, Long-distance (>10 km)
Table 5. The goodness of fit indicator of the individual attribute–travel characteristic model.
Table 5. The goodness of fit indicator of the individual attribute–travel characteristic model.
MeasureThe Individual Attribute–Travel Time ModelThe Individual Attribute–Travel Expense Model
Likelihood ratio (R)6322.94823
Aldrich–Nelson0.40210.3391
Estrella0.5520.4425
McFadden LRI0.30610.2335
Table 6. The individual attribute–travel characteristic model estimation results.
Table 6. The individual attribute–travel characteristic model estimation results.
VariableValueThe Individual Attribute–Travel Time ModelThe Individual Attribute–Travel Expense Model
0–30 min (1)30–60 min (2)¥1–¥4 (2)>¥4 (3)
EPEPEPEP
Constant term 6.8730.048 *−11.38740.043 *6.0650.017 *
genderman(M)1.9100.042 * −2.530.024 *
man(S) 11.990.047 *−1.820.003**
ageM 6.4080.049 *4.6950.024 *
S −3.830.011 *
education (“Master/above” as a reference)high school/former(M)6.9520.042 *10.760.037 *−6.0420.013 *
undergraduate/college(M)2.8850.047 *8.4790.038 *−2.670.017 *−26.760.016 *
undergraduate/college(S) 5.2010.029 *26.3190.009 **
occupation (“other” as a reference)student(M)42.620.0499 *−54.700.049 *−47.190.037 *−3.170.018 *
student(S) −76.820.039 *−2.5360.037 *
institution staff(M) −6.120.046 *−3.590.031 *
institution staff(S) −6.930.009 **
business employee(M)−6.760.048 * 2.1930.028 *
car ownershipno(M) −1.6880.007 **
Note: We used>60 min(3) and <¥1(1) as references; significance symbols: * p < 0.1, ** p < 0.05, *** p < 0.01. Insignificant variables have been culled from this list. E stands for parameter estimate, M stands for mean, and S stands for standard deviation.
Table 7. The goodness of fit indicator of the various-factor bike-sharing usage frequency model.
Table 7. The goodness of fit indicator of the various-factor bike-sharing usage frequency model.
MeasureValue
Likelihood ratio (R)7198.9
Aldrich–Nelson0.4337
Estrella0.5919
McFadden LRI0.2762
Table 8. The various-factor bike-sharing usage frequency model estimation results.
Table 8. The various-factor bike-sharing usage frequency model estimation results.
VariableValue1–2 Times (2)3–5 Times (3)>6 Times (4)
EPEPEP
Constant term 8.42050.0003 *** −33.370.0002 ***
ageM−1.760.04 *−9.000.0004 ***
education(‘Master/above’ as a reference)high school/former(M)1.480.0005 *** −25.160.0008 ***
high school/former (S)
undergraduate/college (M)10.9360.009** −5.520.0004 ***
undergraduate/college (S)11.210.0003 ***
occupation(‘other’ as a reference)student (M)−3.180.0002 ***−31.340.0001 ***6.380.04 *
student (S)−0.750.0006 ***−43.520.0001 ***
institution staff(M) 8.030.03 *
institution staff(S) 8.700.04 *
business employee (M) 11.480.002 **
business employee (S) 11.280.0003 ***
self-employed (M)−6.90.0005 ***
retiree(M)−22.660.0001 ***−7.340.0006 ***
monthly incomeM−1.250.0002 ***−4.460.0002 ***−5.240.0005 ***
S −13.060.0003 ***
car ownershipno (M)−2.4730.0002 ***4.9330.0002 ***24.8940.0002 ***
distance between site and destination(‘1500m’ as a reference)500m(M)
500m(S) −0.8240.009 **5.0620.0001***
800m(M)−1.480.0004 ***5.180.0004 ***
1000m(M)2.0960.0002 ***8.1900.0001 ***2.900.0008 ***
travel timeM 2.0860.0007 ***−3.380.0003 ***
travel preferencetime savingyes (M)1.470.0006 ***9.530.0003 ***
economicyes (M)0.5770.006 **2.140.0003 ***1.7630.0002 ***
yes (S) 2.790.0002 ***−0.8710.002 **
comfortyes (M) −2.170.004 **−1.560.0003 ***
environmental friendlyyes (M)0.6140.019 *9.170.0004 ***2.0540.0003 ***
safetyyes (M)−1.230.0009 ***−5.470.0001 ***−2.730.0007 ***
Note: We used 0 time(1) as a reference; significance symbols: * p < 0.1, ** p < 0.05, *** p < 0.01. Insignificant variables were culled from this list. E stands for parameter estimate, M stands for mean, and S stands for standard deviation.
Table 9. The frequency of willingness for each scenario.
Table 9. The frequency of willingness for each scenario.
Hypothetical ScenariosDegree of Willingness
Completely Unwilling(1)Not Willing(2)Generally Willing(3)More Willing(4)Very Willing(5)
180125273229938
2129252419436409
3415293314262361
479137275285867
5153220497346429
6407236419189394
769114327391744
8182181481394407
9426241413257308
1010684344370741
11209205423371437
12465215363279323
13649192343183278
14709212307198219
15836211263148187
16694236291183241
17765229287187177
18847200232168198
19740244256195210
20770238326146165
21832218243167186
22735259282183186
23807213304150171
24882196233153182
Table 10. The goodness of fit indicator of the mixed scenario–shifting willingness model.
Table 10. The goodness of fit indicator of the mixed scenario–shifting willingness model.
MeasureValue
Likelihood ratio (R)3585.5
Aldrich–Nelson0.3412
Estrella0.3844
McFadden LRI0.3987
Table 11. The mixed scenario–shifting willingness model estimation results.
Table 11. The mixed scenario–shifting willingness model estimation results.
VariableValueNot Willing(2)Generally Willing(3)More Willing(4)Very Willing(5)
EPEPEPEP
Constant term 0.4650.001 **1.2750.0004 ***1.4320.0001 ***2.7810.0005 ***
weatherbad (M)−2.2820.0002 ***−3.0170.0003 ***−4.1320.0001 ***−5.2430.0002 ***
travel periodlight traffic (M) −0.5480.001 **
travel purposeordinary (M) −0.9730.040*
travel distanceM−0.8740.001 **−1.5760.0003 ***−1.7610.0002 ***−4.2940.0005 ***
S1.0780.001 **−1.5970.0003 ***1.8400.0004 ***−4.7460.0001 ***
Note: We used completely unwilling(1) as a reference; significance symbols: * p < 0.1, ** p < 0.05, *** p < 0.01. Insignificant variables were culled from this list. E stands for parameter estimate, M stands for mean, and S stands for standard deviation.

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Ye, M.; Chen, Y.; Yang, G.; Wang, B.; Hu, Q. Mixed Logit Models for Travelers’ Mode Shifting Considering Bike-Sharing. Sustainability 2020, 12, 2081. https://doi.org/10.3390/su12052081

AMA Style

Ye M, Chen Y, Yang G, Wang B, Hu Q. Mixed Logit Models for Travelers’ Mode Shifting Considering Bike-Sharing. Sustainability. 2020; 12(5):2081. https://doi.org/10.3390/su12052081

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Ye, Mao, Yajing Chen, Guixin Yang, Bo Wang, and Qizhou Hu. 2020. "Mixed Logit Models for Travelers’ Mode Shifting Considering Bike-Sharing" Sustainability 12, no. 5: 2081. https://doi.org/10.3390/su12052081

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