Smart Mobility in a Secondary City: Insights from Food Delivery App Adoption Among Thai University Students
Abstract
1. Introduction
2. Literature Review
2.1. Environmental Concerns in Technology Adoption
2.2. Food Delivery App Adoption: Empirical Findings
2.3. University Students and Food Delivery Apps
2.4. Secondary Cities and Technology Adoption
3. Research Framework and Hypotheses Development
3.1. Performance Expectancy (PE)
3.2. Effort Expectancy (EE)
3.3. Social Influence (SI)
3.4. Facilitating Conditions (FC)
3.5. Environmental Concerns (EC)
3.6. Behavioral Intention (BI) and Use Behavior (UB)
4. Methodology
4.1. Research Design and Data Collection
4.2. Measurement and Instrument Validation
4.3. Data Analysis
5. Results
5.1. Demographic and Behavioral Characteristics of Respondents
5.2. Model Measurement Assessment
5.3. Results of the Structural Equation Model Analysis
6. Discussion
6.1. Summary of the Main Findings
6.2. Policy Implications
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Observed Variables | Questions | Ref. |
---|---|---|---|
Performance Expectancy (PE) | PE1 | - Do you think food delivery applications are essential for ordering food during busy study or work periods? | Venkatesh et al. [13]; Zhao and Bacao [25]; Alalwan [26] |
PE2 | - Do you think using food delivery applications helps you manage your time better? | ||
PE3 | - Do you think using food delivery applications saves you from waiting in long lines at restaurants? | ||
PE4 | - Do you believe food delivery applications improve the convenience of accessing food? | ||
Effort Expectancy (EE) | EE1 | - Do you find learning how to use food delivery applications difficult? | Venkatesh et al. [13]; Zhao and Bacao [25]; Alalwan [26] |
EE2 | - Are the steps for ordering food through these apps straightforward and easy to follow? | ||
EE3 | - Do you find it easy to use the features of food delivery applications? | ||
Social Influence (SI) | SI1 | - Do your friends, family, and close acquaintances frequently recommend using food delivery applications? | Venkatesh et al. [13]; Zhao and Bacao [25]; Alalwan [26] |
SI2 | - Do the usage habits of your friends, family, and acquaintances influence your decision to use food delivery applications? | ||
SI3 | - Is there a trend among Mahasarakham University students to use food delivery applications? | ||
Facilitating Conditions (FC) | FC1 | - How well does your smartphone support food delivery applications? | Venkatesh et al. [13]; Zhao and Bacao [25]; Alalwan [26] |
FC2 | - Do the apps present menus and food options in a clear and accessible way, making it easy for you to search and select? | ||
FC3 | - Do you think food delivery applications are compatible with other technologies you use? | ||
Environmental Concerns (EC) | EC1 | - Does using food delivery services generate more packaging waste? | Arunan, I., and Crawford [21]; Heard et al. [30]; own development |
EC2 | - Does food delivery via current vehicles contribute to increased pollution? | ||
EC3 | - Does the increasing number of food delivery drivers cause traffic congestion? | ||
Behavioral Intention (BI) | BI1 | - Are you willing to learn and use food delivery applications in your daily life? | Venkatesh et al. [13]; Zhao and Bacao [25]; Alalwan [26] |
BI2 | - When you are hungry, do you prefer food delivery applications as your first choice for ordering food? | ||
BO3 | - Will you recommend food delivery applications to others? | ||
User Behavior (UB) | UB1 | - Do you frequently use food delivery applications during study sessions, after exercise, or in urgent and busy situations? | Venkatesh et al. [13]; Zhao and Bacao [25]; Alalwan [26] |
UB2 | - Has your use of food delivery applications increased since entering university or after participating in university activities? | ||
UB3 | - Do you use food delivery applications when you have limited time or no time to prepare meals? |
Category | Subcategory/Details | Frequency (N) | Percentage (%) |
---|---|---|---|
Gender | |||
Male | 95 | 24.0 | |
Female | 270 | 68.2 | |
LGBTQ+ | 31 | 7.8 | |
Age | |||
18 years old | 1 | 0.3 | |
19 years old | 69 | 17.4 | |
20 years old | 159 | 40.2 | |
21 years old | 110 | 27.8 | |
22 years old | 55 | 13.9 | |
23 years old | 2 | 0.5 | |
Academic Year | |||
1st Year | 68 | 17.2 | |
2nd Year | 157 | 39.6 | |
3rd Year | 114 | 28.8 | |
4th Year | 55 | 13.9 | |
5th Year | 2 | 0.5 | |
Monthly Income (THB) | |||
3001–5000 | 4 | 1.0 | |
5001–7000 | 52 | 13.1 | |
7001–10,000 | 146 | 36.9 | |
10,001–13,000 | 137 | 34.6 | |
>13,000 | 57 | 14.4 | |
Duration of App Use | |||
>1 year | 379 | 95.7 | |
6–12 months | 12 | 3.0 | |
Less than 6 months | 5 | 1.3 | |
Reasons for Initial App Adoption | |||
Distant restaurants | 59 | 14.9 | |
Lack of public transportation | 13 | 3.3 | |
No parking space or difficult parking | 16 | 4.0 | |
Traffic congestion | 15 | 3.8 | |
Affordable prices | 24 | 6.1 | |
Encouraged by friends | 18 | 4.5 | |
Avoiding long queues | 101 | 25.5 | |
Availability of popular restaurants | 52 | 13.1 | |
Fear of disease outbreaks | 69 | 17.4 | |
Influenced by advertisements | 9 | 2.3 | |
No nearby restaurants | 20 | 5.1 | |
Impact on Dining Frequency | |||
Decreased significantly | 58 | 14.6 | |
Decreased slightly | 168 | 42.4 | |
No change | 131 | 33.1 | |
Increased slightly | 32 | 8.1 | |
Increased significantly | 7 | 1.8 |
Construct | Item | Standardized Factor Loadings (>0.5) | AVE (>0.5) | Composite Reliability (>0.7) | Cronbach’s Alpha (>0.7) |
---|---|---|---|---|---|
Performance Expectancy (PE) | PE1 | 0.66 | 0.54 | 0.823 | 0.827 |
PE2 | 0.7 | ||||
PE3 | 0.8 | ||||
PE4 | 0.77 | ||||
Effort Expectancy (EE) | EE1 | 0.67 | 0.511 | 0.728 | 0.715 |
EE2 | 0.68 | ||||
EE3 | 0.7 | ||||
Social Influence (SI) | SI1 | 0.86 | 0.776 | 0.912 | 0.913 |
SI2 | 0.91 | ||||
SI3 | 0.87 | ||||
Facilitating Conditions (FC) | FC1 | 0.68 | 0.619 | 0.828 | 0.804 |
FC2 | 0.86 | ||||
FC3 | 0.81 | ||||
Environmental Concerns (EC) | EC1 | 0.88 | 0.767 | 0.907 | 0.893 |
EC2 | 0.95 | ||||
EC3 | 0.78 | ||||
Behavioral Intention (BI) | BI1 | 0.81 | 0.654 | 0.85 | 0.842 |
BI2 | 0.86 | ||||
BI3 | 0.76 | ||||
User Behavior (UB) | UB1 | 0.67 | 0.686 | 0.866 | 0.849 |
UB2 | 0.89 | ||||
UB3 | 0.9 |
Hypothesis | Variable (Path) | Std. Est. | t-Value | p-Value | R2 | Result |
---|---|---|---|---|---|---|
H1 | PE → BI | 0.069 | 1.824 | 0.068 | 0.978 | Not supported |
H2 | EE → BI | 0.311 | 3.818 | <0.001 *** | 0.978 | Supported |
H3 | SI → BI | 0.326 | 2.903 | 0.004 ** | 0.978 | Supported |
H4 | FC → BI | 0.111 | 1.073 | 0.283 | 0.978 | Not supported |
H5 | EC → BI | 0.262 | 2.213 | 0.027 * | 0.978 | Supported |
H6 | BI → UB | 0.359 | 2.889 | 0.004 ** | 0.415 | Supported |
H7 | FC → UB | 0.291 | 2.363 | 0.018 * | 0.415 | Supported |
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Chantasoon, M.; Pukdeewut, A.; Setthasuravich, P. Smart Mobility in a Secondary City: Insights from Food Delivery App Adoption Among Thai University Students. Urban Sci. 2025, 9, 104. https://doi.org/10.3390/urbansci9040104
Chantasoon M, Pukdeewut A, Setthasuravich P. Smart Mobility in a Secondary City: Insights from Food Delivery App Adoption Among Thai University Students. Urban Science. 2025; 9(4):104. https://doi.org/10.3390/urbansci9040104
Chicago/Turabian StyleChantasoon, Manop, Aphisit Pukdeewut, and Prasongchai Setthasuravich. 2025. "Smart Mobility in a Secondary City: Insights from Food Delivery App Adoption Among Thai University Students" Urban Science 9, no. 4: 104. https://doi.org/10.3390/urbansci9040104
APA StyleChantasoon, M., Pukdeewut, A., & Setthasuravich, P. (2025). Smart Mobility in a Secondary City: Insights from Food Delivery App Adoption Among Thai University Students. Urban Science, 9(4), 104. https://doi.org/10.3390/urbansci9040104