Has Cross-City Commuting Promoted Housing Purchases among the Workforce within Metropolitan Areas?—An Empirical Analysis from Micro Survey Data from China’s Three Major Metropolitan Areas
Abstract
:1. Introduction
2. Theoretical Analysis and Research Hypothesis
2.1. Cross-City Commuting and Housing Purchase of Labor Forces in Metropolitan Areas
2.2. Mechanism of Cross-City Commuting Affecting Housing Purchase
- (1)
- Increased income pathway
- (2)
- Reduced costs pathway
3. Research Design
3.1. Selection and Geographical Definition of Metropolitan Area
3.2. Data Sources and Processing
3.3. Model Setting
3.4. Variable Selection
- (1)
- Dependent variable ()
- (2)
- Core explanatory variable ()
- (3)
- Intermediate variables ()
- (4)
- Control variables ()
4. Empirical Results and Analyses
4.1. The Characteristics of Housing Purchase Behavior of Different Types of Labor Force in the Metropolitan Area
4.2. An Empirical Analysis of the Effects and Mechanisms
4.2.1. The Estimation Results and Analysis of the Benchmark Model
- (a)
- The cross-city commuting behavior of the labor force in the metropolitan area significantly promotes the increase in housing purchases. Specifically, regardless of the whole sample, the subset residing in the peripheral cities, or the subset employed in the core cities, the probability of the labor with cross-city commuting behavior choosing to buy housing in the peripheral cities of the metropolitan area was significantly higher than that of the labor without cross-city commuting behavior when other variables were controlled. In the whole sample, the probability that the labor force with cross-city commuting behavior chose to buy housing in the outer cities was 1.71 times that of the labor force without commuting behavior; in the sample living in the outer cities, the probability that the labor force with cross-city commuting behavior chose to buy housing in the outer cities was 2.33 times that of the labor force without commuting behavior; in the sample working in the core cities, the probability of purchasing housing in the outer cities was 2.33 times that of the labor force without commuting behavior. The probability that the labor force with cross-city commuting behavior chose to buy housing in the outer cities of the metropolitan area was 1.50 times that of the labor force without commuting behavior, and the above results were highly significant at the significance level of 1% or 5%. It shows that the cross-city commuting behavior of the labor force in the metropolitan area significantly affects the spatial distribution of housing purchases and increases the housing purchase demand in the peripheral cities. Hypothesis 1 was tested.
- (b)
- From the effect of each control variable on the housing purchase, gender, education level, family size, relocation intention, and household registration all significantly affected the housing purchase choice in the metropolitan area. The main finding suggests that the probability of buying housing is higher for male workers with no intention to move and local household registration than for female workers with intention to move and local household registration. The higher the education level, the larger the family size, and the higher the annual household income, the higher the probability of buying housing.
4.2.2. Estimation Results and Analysis of the Intermediary Effect Model
4.3. Endogeneity Tests
4.4. Robustness Tests
5. Further Discussion
5.1. The Geographical Preference of Cross-City Commuter in Housing Purchase
5.2. Cross-City Commuting Behavior and Multi-Suite Purchase Decision
6. Conclusions and Outlook
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Functional Partition | Capital Metropolitan Area | Shanghai Metropolitan Area | Guangzhou Metropolitan Area |
---|---|---|---|
Core city | Beijing | Shanghai | Guangzhou |
Peripheral cities | Langfang, Baoding, Zhangjiakou, Chengde, Cangzhou, Tangshan, Xiongan New Area, and Tianjin | Wuxi, Changzhou, Suzhou, Nantong, Ningbo, Huzhou, Jiaxing, and Zhoushan | Foshan, Zhaoqing, Qingyuan Yunfu, and Shaoguan |
Variable Name | Variable Assignment | Full Sample | Living in the Peripheral Cities (Control Group: Both Work and Residence in Peripheral Cities) | Working in the Core Cities (Control Group: Both Work and Residence Are in the Core City) | |||
---|---|---|---|---|---|---|---|
Mean Value | Standard Deviation | Mean Value | Standard Deviation | Mean Value | Standard Deviation | ||
Whether to buy a house | Buy a house = 1 | 0.63 | 0.48 | 0.63 | 0.48 | 0.64 | 0.48 |
Whether to commute across town | Commute across town = 1 | 0.08 | 0.26 | 0.16 | 0.36 | 0.13 | 0.33 |
Raise income | The income of the workplace is higher than that of the residence = 1 | 0.49 | 0.50 | 0.52 | 0.50 | 0.49 | 0.50 |
Reduce cost | Housing prices are higher where you work than where you live = 1 | 0.18 | 0.38 | 0.30 | 0.46 | 0.17 | 0.37 |
Gender | Male = 1 | 0.55 | 0.50 | 0.48 | 0.50 | 0.59 | 0.49 |
Educational level | Not going to school = 1; Primary school = 2; …; Undergraduate = 6; Graduate = 7 | 4.69 | 1.35 | 4.63 | 1.40 | 4.75 | 1.32 |
Family size | 1 single person = 1; Husband and wife = 2; Couples, children, and the elderly = 3 | 1.82 | 0.70 | 1.86 | 0.62 | 1.82 | 0.74 |
Relocation intention | Intention or plan to relocate = 1 | 0.27 | 0.44 | 0.20 | 0.40 | 0.32 | 0.47 |
Household registration | Registered in the county/district and other counties/districts of the city (prefecture-level city/municipality directly under the Central Government) = 1 | 0.81 | 0.39 | 0.84 | 0.37 | 0.79 | 0.41 |
Gross annual household income | 100,000 yuan and below = 1; 100,000 to 200,000 yuan = 2; …; More than 500,000 yuan = 6 | 2.24 | 1.12 | 2.19 | 1.02 | 2.37 | 1.22 |
Sample size | 3051 | 1451 | 1829 |
Variable Name | The Estimated Results of the Benchmark Model | The Estimated Results of the Intermediary Effect Model | ||||
---|---|---|---|---|---|---|
Full Sample | Residential Peripheral City | Work Core City | Full Sample | Residential Peripheral City | Work Core City | |
Whether to commute across town | 1.71 *** | 2.33 *** | 1.50 ** | 1.82 *** | 1.97 *** | 1.05 |
Raise income | 1.76 *** | 2.08 *** | ||||
Reduce cost | 0.73 ** | 1.66 ** | ||||
Gender | 1.17 * | 1.30 ** | 1.01 | 1.17 * | 1.24 * | 1.00 |
Educational level | 1.22 *** | 1.18 *** | 1.22 *** | 1.24 *** | 1.18 *** | 1.22 *** |
Family size | 1.98 *** | 1.80 *** | 2.06 *** | 1.96 *** | 1.77 *** | 2.07 *** |
Relocation intention | 0.57 *** | 0.51 *** | 0.51 *** | 0.56 *** | 0.50 *** | 0.51 *** |
Household registration | 4.20 *** | 4.91 *** | 4.16 *** | 4.19 *** | 4.96 *** | 4.21 *** |
Gross annual household income | 1.07 * | 0.96 | 1.09 * | 1.09 ** | 0.96 | 1.08 |
Constant | 0.06 *** | 0.07 *** | 0.06 *** | 0.04 *** | 0.05 *** | 0.06 *** |
Wald χ2 | 377.42 *** | 178.92 *** | 244.65 *** | 420.51 *** | 208.86 *** | 256.43 *** |
Pseudo R2 | 0.1140 | 0.1098 | 0.1299 | 0.1276 | 0.1293 | 0.1327 |
Number of valid samples | 3051 | 1451 | 1829 | 3051 | 1451 | 1829 |
Variable Name | Full Sample | Sample of Residents in Peripheral Cities | Sample Working in Core Cities | |||
---|---|---|---|---|---|---|
Raise Income | Reduce Cost | Raise Income | Reduce Cost | Raise Income | Reduce Cost | |
Whether to commute across town | 3.05 *** | 27.50 *** | 2.85 *** | / | / | 53.18 *** |
Control variable | Control | Control | Control | / | / | Control |
Wald χ2 | 68.17 *** | 364.87 *** | 54.72 *** | / | / | 416.73 *** |
Pseudo R2 | 0.0183 | 0.1765 | 0.0307 | / | / | 0.3596 |
Number of valid samples | 3051 | 3051 | 1451 | / | / | 1829 |
Variable Name | Full Sample | Sample of Residents in Peripheral Cities | Sample Working in Core Cities | |||
---|---|---|---|---|---|---|
Coefficient (Z) | Relative Contribution (%) | Coefficient (Z) | Relative Contribution (%) | Coefficient (Z) | Relative Contribution (%) | |
Direct impact | 1.82 *** (2.93) | 111.96 | 1.97 *** (3.79) | 79.36 | 1.05 (0.20) | 11.56 |
Indirect effect | 0.94 (−0.70) | −11.96 | 1.19 *** (4.50) | 20.64 | 1.45 ** (2.36) | 88.44 |
Raise income | 0.15 *** (5.36) | 27.44 | 0.18 *** (4.50) | 20.64 | / | / |
Reduce cost | −0.21 *** (2.41) | −39.40 | / | / | 0.37 *** (2.36) | 88.44 |
Variable Name | Full Sample | Sample of Residents in Peripheral Cities | Sample Working in Core Cities |
---|---|---|---|
One-stage coefficient | 0.06 *** | 0.28 *** | 0.04 *** |
One-stage F value | 139.98 *** | 100.54 *** | 198.41 *** |
Two-stage Wald test results | p = 0.36 | p = 0.46 | p = 0.75 |
Variable Name | The Distance between Work and Residence <20 km | The Distance between Work and Residence >20 km, <40 km | The Distance between Work and Residence >40 km |
---|---|---|---|
Whether to commute across town | 0.47 | 6.82 *** | 1.01 |
Control variable | Control | Control | Control |
Wald χ2 | 356.49 *** | 91.93 *** | 16.01 ** |
Pseudo R2 | 0.1268 | 0.2325 | 0.1167 |
Number of valid samples | 2573 | 343 | 135 |
Variable Name | Full Sample | Sample of Residents in Peripheral Cities | Sample Working in Core Cities |
---|---|---|---|
Whether to commute across town | 0.59 *** | 0.75 | 0.48 *** |
Control variable | Control | Control | Control |
Waldχ2 | 215.02 *** | 101.94 *** | 129.60 *** |
Pseudo R2 | 0.0643 | 0.0755 | 0.0588 |
Number of valid samples | 3051 | 1451 | 1829 |
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Fan, Z.; Yi, C.; Wang, Y.; Cao, Y.; Liu, Y. Has Cross-City Commuting Promoted Housing Purchases among the Workforce within Metropolitan Areas?—An Empirical Analysis from Micro Survey Data from China’s Three Major Metropolitan Areas. Buildings 2024, 14, 3130. https://doi.org/10.3390/buildings14103130
Fan Z, Yi C, Wang Y, Cao Y, Liu Y. Has Cross-City Commuting Promoted Housing Purchases among the Workforce within Metropolitan Areas?—An Empirical Analysis from Micro Survey Data from China’s Three Major Metropolitan Areas. Buildings. 2024; 14(10):3130. https://doi.org/10.3390/buildings14103130
Chicago/Turabian StyleFan, Zhengde, Chengdong Yi, Yourong Wang, Yeqi Cao, and Yufei Liu. 2024. "Has Cross-City Commuting Promoted Housing Purchases among the Workforce within Metropolitan Areas?—An Empirical Analysis from Micro Survey Data from China’s Three Major Metropolitan Areas" Buildings 14, no. 10: 3130. https://doi.org/10.3390/buildings14103130
APA StyleFan, Z., Yi, C., Wang, Y., Cao, Y., & Liu, Y. (2024). Has Cross-City Commuting Promoted Housing Purchases among the Workforce within Metropolitan Areas?—An Empirical Analysis from Micro Survey Data from China’s Three Major Metropolitan Areas. Buildings, 14(10), 3130. https://doi.org/10.3390/buildings14103130