Township, County Town, Metropolitan Area, or Foreign Cities? Evidence from House Purchases by Rural Households in China
Abstract
:1. Introduction
2. Literature Review
2.1. Homeownership: Environmental Inequality
2.2. From Village to City: The Story of China’s Farmers
3. Data and Methods
3.1. Study Area and Data
3.2. Variables and Methods
3.2.1. Dependent Variables: Explaining the Destinations
3.2.2. Independent Variables: Measuring the Rural Environment
3.2.3. Methods
4. Results
4.1. Destinations for Urban Housing Purchases
4.1.1. Descriptive Statistics
4.1.2. Spatial Pattern and Association Feature
4.2. Determinants of Housing Purchases
4.2.1. Comparison of Different Destinations
4.2.2. Comparison of Different Environments
4.2.3. Validation of Interaction Detection
5. Conclusions and Discussion
5.1. Conclusions
5.2. Discussion
5.2.1. Policy Recommendations
5.2.2. Limitations and Future Directions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Indicators | Definition | Min | Mean | Max |
---|---|---|---|---|
Natural Environment | ||||
X1 slope | Average degree of slope of the administrative village (°) | 0.01 | 0.67 | 6.72 |
X2 pollution degree | Sum of pollution sites in the administrative village (pcs) | 0 | 6.40 | 78.00 |
Settlement Environment | ||||
X3 road density | Road density of the administrative village (km/km2) | 1.17 | 21.51 | 99.40 |
X4 per capita arable land | Ratio of arable land area to number of households (acre) | 0.01 | 2.06 | 111.72 |
X5 size of natural villages | Average number of households per natural village (pcs) | 2.60 | 66.46 | 473.00 |
X6 settlement connectivity | Average distance between natural villages (km) | 0.03 | 0.99 | 3.15 |
Housing Environment | ||||
X7 proportion of buildings | Ratio of number of buildings (≥2 stories) to households (%) | 0.96 | 41.78 | 96.96 |
X8 per family homestead size | Ratio of total homestead area to households (acre) | 0.01 | 0.67 | 4.69 |
X9 per capita living area | Ratio of total housing area to population (m2) | 12.15 | 39.77 | 96.34 |
X10 housing quality | Proportion of houses with acceptable quality (%) | 5.94 | 73.61 | 100.00 |
Economic Environment | ||||
X11 per household income | Average annual income of resident households (CNY 10,000) | 1.20 | 5.97 | 14.91 |
X12 number of enterprises | Number of registered enterprises (pcs) | 0.00 | 9.05 | 256.00 |
X13 fiscal revenue | Annual fiscal revenue of its town (CNY million) | 11.93 | 127.37 | 543.72 |
X14 proportion of poor families | Proportion of registered low-income households (%) | 0.00 | 13.81 | 54.53 |
Population and Family Environment | ||||
X15 dependency ratio | Average number of elderly and children to support per worker | 0.44 | 0.93 | 1.70 |
X16household density | Ratio of permanently settled households to area (pcs/km2) | 1.00 | 111.18 | 372.64 |
X17 proportion of leavers | Proportion of whole families leaving frequently (%) | 0 | 12.02 | 58.40 |
X18 proportion of vacant house | Proportion of vacant (abandoned) buildings (%) | 0 | 18.05 | 81.03 |
Location Environment | ||||
X19 distance to metro area | Travel time by car to the center of Huai’an City (min) | 8.46 | 49.66 | 113.77 |
X20 distance to county town | Travel time by car to its county government site (min) | 1.53 | 23.87 | 53.51 |
X21 distance to traffic station | Travel time by car to the nearest transport station (min) | 0.01 | 5.40 | 20.98 |
X22 distance to township | Travel time by electric bike to its town government site (min) | 0.01 | 17.12 | 63.87 |
Public Service Environment | ||||
X23 commercial development | Number of shops (pcs) | 0 | 59.86 | 1556 |
X24 education accessibility | Travel time by car to the nearest high school (min) | 0.01 | 18.62 | 50.29 |
X25 healthcare accessibility | Travel time by car to the nearest secondary hospital (min) | 0.10 | 19.46 | 53.45 |
X26 kindergarten accessibility | Travel time by electric bike to the nearest kindergarten (min) | 0.01 | 9.09 | 44.59 |
Policy Environment | ||||
X27proportion of policy village | Proportion of natural villages with development policies (%) | 0 | 6.96 | 100 |
X28 proportion of reserve | Proportion of natural villages with ecological reserves (%) | 0 | 9.33 | 100 |
Min | Median | Max | Mean | CV | |
---|---|---|---|---|---|
All | 0.16% | 47.24% | 99.79% | 45.96% | 0.400 |
In township | 0.00% | 9.11% | 99.79% | 14.63% | 1.110 |
In county town | 0.00% | 15.08% | 63.38% | 18.78% | 0.741 |
In metropolitan area | 0.00% | 3.19% | 47.88% | 4.82% | 1.207 |
In foreign cities | 0.00% | 6.21% | 55.88% | 7.74% | 0.837 |
Moran’s I | Z | p | |
---|---|---|---|
All | 0.528 | 41.823 | 0.000 |
In township | 0.410 | 32.517 | 0.000 |
In county town | 0.698 | 55.275 | 0.000 |
In metropolitan area | 0.525 | 41.727 | 0.000 |
In foreign cities | 0.647 | 51.315 | 0.000 |
Model 1 | Model 2 | Model 3 | Model 4 | |
---|---|---|---|---|
In Township | In County Town | In Metropolitan Area | In Foreign Cities | |
Natural Environment | ||||
X1 slope | 0.029 * 1 | −0.030 ** | 0.021 *** | −0.027 *** |
X2 pollution degree | 0.010 *** | −0.026 *** | 0.006 | −0.011 |
Settlement Environment | ||||
X3 road density | −0.082 *** | 0.045 *** | −0.053 *** | −0.022 *** |
X4 per capita arable land | 0.154 ***(H) | −0.096 *** | −0.044 *** | −0.020 * |
X5 size of natural village | 0.090 *** | −0.022 ** | −0.006 | −0.015 |
X6 settlement connectivity | −0.041 *** | 0.033 *** | 0.019 ** | 0.009 |
Housing Environment | ||||
X7 proportion of buildings | −0.243 ***(H) | −0.220 ***(H) | 0.106 ***(H) | 0.072 *** |
X8 per family homestead size | 0.134 ***(H) | −0.049 *** | 0.062 *** | −0.032 *** |
X9 per capita living area | −0.169 ***(H) | −0.088 *** | 0.077 *** | −0.103 ***(H) |
X10 housing quality | 0.033 *** | 0.021 ** | 0.034 *** | −0.041 *** |
Economic Environment | ||||
X11 per household income | −0.020 ** | 0.018 * | 0.007 | 0.072 *** |
X12 number of enterprises | −0.022 * | 0.059 *** | −0.018 | 0.024 *** |
X13 fiscal revenue | 0.130 ***(H) | −0.038 *** | 0.046 *** | 0.117 ***(H) |
X14 proportion of poor families | 0.016 * | −0.047 *** | −0.018 * | 0.053 *** |
Population and Family Environment | ||||
X15 dependency ratio | −0.038 *** | 0.015 * | −0.011 | −0.006 |
X16 household density | −0.205 ***(H) | 0.121 ***(H) | −0.034 *** | 0.027 *** |
X17 proportion of frequent leavers | −0.031 *** | 0.041 *** | 0.008 | −0.045 *** |
X18 proportion of vacant houses | 0.207 ***(H) | −0.069 *** | 0.026 *** | 0.061 *** |
Location Environment | ||||
X19 distance to metro area | 0.107 ***(H) | 0.159 ***(H) | −0.236 ***(H) | −0.133 ***(H) |
X20 distance to county town | 0.023 *** | −0.025 *** | −0.019 ** | 0.111 ***(H) |
X21 distance to traffic station | −0.011 | 0.034 *** | 0.023 *** | 0.047 *** |
X22 distance to township | 0.076 *** | −0.023 ** | −0.020 ** | 0.022 ** |
Public Service Environment | ||||
X23 commercial development | 0.035 ** | −0.034 *** | 0.047 *** | −0.063 *** |
X24 education accessibility | −0.016 * | 0.098 *** | 0.022 *** | −0.056 *** |
X25 healthcare accessibility | −0.010 | 0.028 *** | 0.024 *** | 0.080 *** |
X26 kindergarten accessibility | −0.009 *** | 0.040 *** | 0.021 *** | 0.052 *** |
Policy Environment | ||||
X27proportion of policy village | −0.032 *** | −0.020 * | 0.016 | 0.020 |
X28 proportion of reserve | 0.022 * | −0.042 *** | 0.061 *** | −0.009 |
Model 1: In Township | Model 2: In County Town | Model 3: In Metropolitan Area | Model 4: In Foreign Cities | ||||
---|---|---|---|---|---|---|---|
Inter. | q Statistic | Inter. | q Statistic | Inter. | q Statistic | Inter. | q Statistic |
X13 ∩ X19 | 0.432 * | X19 ∩ X25 | 0.404 | X13 ∩ X19 | 0.350 | X19 ∩ X20 | 0.330 |
X7 ∩ X13 | 0.432 | X19 ∩ X20 | 0.394 | X19 ∩ X28 | 0.344 | X13 ∩ X20 | 0.315 |
X7 ∩ X24 | 0.402 | X7 ∩ X13 | 0.389 | X18 ∩ X19 | 0.330 | X13 ∩ X19 | 0.314 |
X19 ∩ X25 | 0.395 | X13 ∩ X19 | 0.375 | X1 ∩ X19 | 0.321 | X19 ∩ X25 | 0.299 |
X7 ∩ X18 | 0.383 | X7 ∩ X24 | 0.362 | X14 ∩ X19 | 0.319 | X7 ∩ X13 | 0.277 |
X8 ∩ X13 | 0.383 | X7 ∩ X19 | 0.358 | X19 ∩ X25 | 0.311 | X13 ∩ X25 | 0.273 |
X13 ∩ X18 | 0.382 | X16 ∩ X19 | 0.349 | X15 ∩ X19 | 0.309 | X13 ∩ X24 | 0.268 |
X8 ∩ X18 | 0.381 | X19 ∩ X24 | 0.330 | X19 ∩ X20 | 0.304 | X19 ∩ X24 | 0.265 |
X13 ∩ X16 | 0.378 | X7 ∩ X21 | 0.325 | X19 ∩ X21 | 0.303 | X9 ∩ X13 | 0.261 |
X4 ∩ X18 | 0.373 | X7 ∩ X16 | 0.325 | X2 ∩ X19 | 0.302 | X11 ∩ X19 | 0.258 |
X19 ∩ X24 | 0.373 | X7 ∩ X20 | 0.308 | X5 ∩ X19 | 0.302 | X13 ∩ X26 | 0.257 |
X18 ∩ X22 | 0.370 | X7 ∩ X18 | 0.306 | X19 ∩ X23 | 0.299 | X19 ∩ X26 | 0.252 |
X4 ∩ X13 | 0.370 | X7 ∩ X10 | 0.305 | X11 ∩ X19 | 0.298 | X11 ∩ X13 | 0.252 |
X16 ∩ X18 | 0.362 | X7 ∩ X25 | 0.302 | X4 ∩ X19 | 0.297 | X19 ∩ X21 | 0.251 |
X9 ∩ X13 | 0.358 | X7 ∩ X17 | 0.298 | X19 ∩ X27 | 0.297 | X9 ∩ X16 | 0.240 |
X7 ∩ X22 | 0.355 | X7 ∩ X14 | 0.297 | X3 ∩ X19 | 0.294 | X13 ∩ X14 | 0.237 |
X7 ∩ X16 | 0.355 | X18 ∩ X19 | 0.297 | X17 ∩ X19 | 0.292 | X11 ∩ X20 | 0.236 |
X4 ∩ X7 | 0.352 | X1 ∩ X7 | 0.297 | X16 ∩ X19 | 0.291 | X7 ∩ X19 | 0.234 |
X7 ∩ X19 | 0.350 | X7 ∩ X11 | 0.295 | X19 ∩ X24 | 0.290 | X13 ∩ X21 | 0.234 |
X16 ∩ X19 | 0.346 | X4 ∩ X7 | 0.295 | X9 ∩ X19 | 0.289 | X9 ∩ X19 | 0.231 |
X4 ∩ X9 | 0.338 | X7 ∩ X22 | 0.293 | X19 ∩ X26 | 0.287 | X7 ∩ X11 | 0.227 |
X6 ∩ X7 | 0.338 | X6 ∩ X7 | 0.293 | X8 ∩ X19 | 0.286 | X11 ∩ X25 | 0.226 |
X9 ∩ X16 | 0.336 | X3 ∩ X7 | 0.288 | X7 ∩ X19 | 0.285 | X13 ∩ X16 | 0.224 |
X7 ∩ X9 | 0.333 | X7 ∩ X15 | 0.286 | X6 ∩ X19 | 0.285 | X8 ∩ X19 | 0.224 |
X7 ∩ X23 | 0.331 | X5 ∩ X7 | 0.285 | X10 ∩ X19 | 0.281 | X17 ∩ X19 | 0.223 |
X7 ∩ X17 | 0.331 | X7 ∩ X26 | 0.283 | X12 ∩ X19 | 0.275 | X8 ∩ X13 | 0.223 |
X7 ∩ X25 | 0.330 | X19 ∩ X21 | 0.283 | X19 ∩ X22 | 0.275 | X24 ∩ X25 | 0.223 |
X1 ∩ X7 | 0.329 | X7 ∩ X8 | 0.282 | X7 ∩ X13 | 0.252 | X13 ∩ X18 | 0.222 |
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Wang, C.; Pang, Z.; Choi, C.G. Township, County Town, Metropolitan Area, or Foreign Cities? Evidence from House Purchases by Rural Households in China. Land 2023, 12, 1038. https://doi.org/10.3390/land12051038
Wang C, Pang Z, Choi CG. Township, County Town, Metropolitan Area, or Foreign Cities? Evidence from House Purchases by Rural Households in China. Land. 2023; 12(5):1038. https://doi.org/10.3390/land12051038
Chicago/Turabian StyleWang, Chengxiang, Zehua Pang, and Chang Gyu Choi. 2023. "Township, County Town, Metropolitan Area, or Foreign Cities? Evidence from House Purchases by Rural Households in China" Land 12, no. 5: 1038. https://doi.org/10.3390/land12051038
APA StyleWang, C., Pang, Z., & Choi, C. G. (2023). Township, County Town, Metropolitan Area, or Foreign Cities? Evidence from House Purchases by Rural Households in China. Land, 12(5), 1038. https://doi.org/10.3390/land12051038