Shared Parking Decision Behavior of Parking Space Owners and Car Travelers Based on Prospect Theory—A Case Study of Nanchang City, China
Abstract
:1. Introduction
2. Research Methodology
2.1. Prospect Theory
2.1.1. Characteristics of Prospect Theory
- People are more sensitive to losses than gains.
- People tend to avoid risk when faced with gains, and tend to pursue risk in the face of losses.
- People attach importance not only to the absolute amount of wealth but also to the amount of change in wealth.
- The decision makers in the early stage will have a certain influence on the later stage. If people gain in the first period, people’s preference for risk will be enhanced; if people face loss in the first period, people’s aversion to risk will increase.
2.1.2. Prospect Theory Model
2.2. Shared Parking Decision Behavior Model
2.2.1. Analysis of the Decision Behavior of Parking Space Owners
2.2.2. Rental Price Reference Point
2.2.3. Shared Parking Model of the Rental Price Based on Prospect Theory
3. Affecting Factors of Shared Parking Decision Behavior
3.1. Factors Influencing Travelers’ Decisions
3.1.1. Individual Attributes
3.1.2. Cost of Shared Parking Spaces
3.1.3. Parking Environment
3.1.4. Road Environment
3.2. Factors Influencing Parking Space Owners’ Decisions
3.2.1. Individual Attributes
3.2.2. Rental Prices
3.2.3. Parking Space Management Level
3.2.4. The Quality of Travelers
3.2.5. Number of Parking Spaces for Rent
4. Data Processing and Analysis
4.1. Survey Design
4.2. Data Analysis
4.2.1. Personal Characteristics Analysis
4.2.2. Analysis of External Factors
4.2.3. Rental Price Analysis
5. Model Calibration and Discussion
5.1. Value Function Analysis
5.2. Parameter Calibration of Value Function Model
6. Conclusions and Recommendations
Supplementary Materials
Author Contributions
Funding
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Serial Number | Survey Content | Options | Number of Respondents | Percentage |
---|---|---|---|---|
1 | Gender | Male | 49 | 51.00% |
Female | 48 | 49.00% | ||
2 | Age | 18–25 | 7 | 7.22% |
26–35 | 22 | 22.68% | ||
36–45 | 50 | 51.55% | ||
>45 | 18 | 18.55% | ||
3 | Monthly income (CNY) | <3000 | 0 | 0% |
3000–4999 | 16 | 16.00% | ||
5000–6999 | 46 | 47.00% | ||
7000–10,000 | 29 | 30.00% | ||
>10,000 | 6 | 6.00% | ||
4 | Driving experience | One year or less | 3 | 88.37% |
Two to five years | 27 | |||
Six to ten years | 54 | |||
More than ten years | 13 | 11.63% | ||
5 | Emotional factors (Multiple choice) | Mood | 66 | 40.50% |
Feelings | 49 | 30.06% | ||
Hobbies | 22 | 13.49% | ||
None | 26 | 15.95% | ||
6 | Time slots for renting parking spaces | 8:00~10:00 | 8 | 2.69% |
10:00~12:00 | 48 | 16.16% | ||
12:00~14:00 | 83 | 27.95% | ||
14:00~16:00 | 92 | 30.98% | ||
16:00~18:00 | 60 | 20.20% | ||
18:00~20:00 | 6 | 2.02% | ||
7 | Parking difficulty affect choice | Yes | 64 | 66.00% |
No | 33 | 34.00% | ||
8 | Influence of external factors on parking space rental | Fill in | 97 | 18.60% |
9 | Nearby parking lot prices | Fill in | 97 | —— |
10 | Acceptable lowest rental prices | Fill in | 97 | —— |
11 | Acceptable highest rental prices | Fill in | 97 | —— |
12 | Rental prices for 50% success | Fill in | 97 | —— |
13 | Rental prices for 80% success | Fill in | 97 | —— |
Price of Difference (CNY/h) | True Value of Cumulative Frequency (%) | Theoretical Value of Cumulative Frequency (%) | Relative Error (%) |
---|---|---|---|
1 | 15.46% | 15.43% | 0.25% |
2 | 28.87% | 28.39% | 1.66% |
3 | 40.21% | 40.56% | −0.88% |
4 | 37.11% | 37.74% | −1.68% |
5 | 21.65% | 20.50% | 5.29% |
7 | 3.09% | 2.20% | 29.03% |
8 | 5.15% | 4.04% | 21.63% |
9 | 6.19% | 5.77% | 6.69% |
10 | 7.22% | 7.43% | −3.02% |
11 | 8.25% | 9.05% | −9.70% |
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Xue, Y.; Kong, Q.; Sun, F.; Zhong, M.; Tu, H.; Tan, C.; Guan, H. Shared Parking Decision Behavior of Parking Space Owners and Car Travelers Based on Prospect Theory—A Case Study of Nanchang City, China. Sustainability 2022, 14, 16877. https://doi.org/10.3390/su142416877
Xue Y, Kong Q, Sun F, Zhong M, Tu H, Tan C, Guan H. Shared Parking Decision Behavior of Parking Space Owners and Car Travelers Based on Prospect Theory—A Case Study of Nanchang City, China. Sustainability. 2022; 14(24):16877. https://doi.org/10.3390/su142416877
Chicago/Turabian StyleXue, Yunqiang, Qifang Kong, Feng Sun, Meng Zhong, Haokai Tu, Caifeng Tan, and Hongzhi Guan. 2022. "Shared Parking Decision Behavior of Parking Space Owners and Car Travelers Based on Prospect Theory—A Case Study of Nanchang City, China" Sustainability 14, no. 24: 16877. https://doi.org/10.3390/su142416877
APA StyleXue, Y., Kong, Q., Sun, F., Zhong, M., Tu, H., Tan, C., & Guan, H. (2022). Shared Parking Decision Behavior of Parking Space Owners and Car Travelers Based on Prospect Theory—A Case Study of Nanchang City, China. Sustainability, 14(24), 16877. https://doi.org/10.3390/su142416877