Economic Impact of the High-Speed Railway on Housing Prices in China
Abstract
:1. Introduction
2. Literature Review
3. How the HSR Affects City-Level Housing Prices: A Theoretical Framework
4. Variables, Data, and Methodology
4.1. Variables
4.2. Samples and Data
- (1)
- 9 national central cities (abbreviated as N), including Beijing, Tianjin, Shanghai, Guangzhou, Chongqing, Chengdu, Wuhan, Zhengzhou, and Xi’an (according to the National Urban System Plan (2010–2020), China’s highest-level strategic plan, which was jointly prepared by 19 central ministries and commissions, including the Ministry of Housing, the National Development and Reform Commission, the Health and Family Planning Commission, and the Ministry of Education);
- (2)
- 27 regional central cities (abbreviated as R), including all the provincial capital cities and Municipalities with Independent Planning Status under the National Social and Economic Development Plan (Shijiazhuang, Shenyang, Dalian, Changchun, Taiyuan, Hohhot, Harbin, Jinan, Qingdao, Nanjing, Hangzhou, Xiamen, Shenzhen, Suzhou, Ningbo, Hefei, Fuzhou, Nanchang, Changsha, Nanning, Haikou, Guiyang, Kunming, Lanzhou, Xining, Yinchuan, and Urumqi: These cities are provincial cities or “Municipalities with Independent Planning Status under the National Social and Economic Development Plan”, issued by the nation); and
- (3)
- 249 other prefecture-level cities (abbreviated as O), and these are ordinary prefecture-level cities officially announced by China’s National Government.
- (1)
- Housing price data, a 2009–2017 dataset including 285 city-level real estate prices (the commercial housing transaction price) selected from “ANJUKE (https://anjuke.com)”, one of the largest real estate internet portals in China;
- (2)
- Railway and HSR data (whether or not a certain city possessed a railway or HSR, respectively) from “National Railway Passenger Train Schedules (2009–2017)”, provided by China’s railway customer service center (according to the definition of the National Railway Administration (2014), the HSR in China includes rail lines served by G-, C-, and D-prefixed bullet trains, but in our study, we only took newly constructed HSR lines into account served by G- and C-prefixed bullet trains and excluded HSR lines sped up on ordinary rail lines, served by D-prefix bullet trains);
- (3)
- Population data (total population of municipal districts was introduced to control for heterogeneous patterns of residential characteristics among different cities) sourced from “China’s City Statistical Yearbook (2009–2017)”;
- (4)
- Financial data, GDP, savings, and loans (total savings in municipal districts, total loans in municipal districts) collected from “China’s City Statistical Yearbook (2009–2017)”; and
- (5)
- Airport data (whether or not a certain city possessed an airport) extracted from “the official Civil Aviation Industry Development Statistics Bulletin (2009–2017)”, which are published on the website of the Civil Aviation Administration of China (CAAC). It was considered to be no airport when the following two situations occurred: (1) The airport was licensed for operating permission, but there were no flights opened yet, and (2) the airport shut down for a certain year for the reason of long-term maintenance.
4.3. Methodology
4.3.1. Baseline Regression: Fixed Effect Model
4.3.2. Dynamic Panel Data Model
4.3.3. Regression Model with City Classification Dummies and Regional Dummies
5. Empirical Results
5.1. Results of Baseline Regression and Dynamic Panel Data Model
5.2. Results of City Classification Dummies and Regional Dummies (National-Scale)
5.2.1. Impacts Varied between Different City Dummies
5.2.2. The Regional Imbalance Narrowed
5.3. Subsample Estimations with More Inner-City Explanatory Variables (35 Key Cities)
5.4. Impacts Varied between Different City Pairs (Micro-Scale)
5.4.1. Impacts between Megacity and Small City Pairs
5.4.2. Impacts between Megacity (or Central City) Pairs
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Appendix A
Scenario | Typical Year | Important Event |
---|---|---|
Period of China Railwayline being upgraded for HSR (2003–2007). | 2003 | The first upgraded line began operating. |
2007 | The second upgraded line operated. | |
The sixth round of the Railway Speed-Up Campaign, during which 6849 km of CR lines were upgraded to speeds of over 200 km/h. | ||
Period of newly built HSR lines expansion (2008–2015). | 2008 | The Mid to Long-Term Railway Network Plan of China’s Ministry of Railways (2008) was issued. |
The first newly built HSR line, from Beijing to Tianjin, operated. | ||
2008–2015 | The HSR network expanded rapidly and newly built HSR lines were introduced annually and on a massive scale: | |
2015 | The “four north-south and four west-east corridors” national HSR network was basically completed by the end of 2015. | |
Period of realizing a miraculous national HSR network (2016–2025). | 2016 | The Mid to Long-Term Railway Network Plan (revised in 2016). |
2025 | Formulating the “eight vertical and eight horizontal corridors” national HSR network. |
HSR Lines | Construction Time | Opening Time | Length (km) | Speed (km/h) |
---|---|---|---|---|
Qinhuangdao–Shenyang | 01/01/1999 | 01/07/2003 | 405 | 250 |
Hefei–Nanjing | 11/06/2005 | 19/04/2008 | 154 | 250 |
Beijing–Tianjin | 07/04/2005 | 01/08/2008 | 120 | 350 |
Qingdao–Jinan | 28/01/2007 | 20/12/2008 | 393 | 250 |
Shijiazhuang–Taiyuan | 11/06/2005 | 01/04/2009 | 190 | 250 |
Hefei–Wuhan | 01/08/2005 | 01/04/2009 | 351 | 200 |
Dazhou–Chengdu | 01/05/2005 | 07/07/2009 | 148 | 250 |
Ningbo–Taizhou–Wenzhou | 27/10/2005 | 28/09/2009 | 268 | 250 |
Wenzhou–Fuzhou | 08/01/2005 | 28/09/2009 | 298 | 250 |
Wuhan–Guanghzou | 23/06/2005 | 26/12/2009 | 968 | 350 |
Zhengzhou–Xian | 01/09/2005 | 06/01/2010 | 455 | 350 |
Fuzhou–Xiamen | 01/10/2005 | 26/04/2010 | 275 | 250 |
Chengdu–Dujiangyan | 04/11/2008 | 12/05/2010 | 65 | 250 |
Shanghai–Nanjing | 01/07/2008 | 01/07/2010 | 301 | 220 |
Nanchang–Jiujiang | 28/06/2007 | 20/09/2010 | 131 | 350 |
Shanghai–Hangzhou | 01/04/2009 | 26/11/2010 | 150 | 350 |
Yichang–Wanzhou | 01/12/2003 | 22/12/2010 | 377 | 200 |
Wuhan–Yichang | 17/09/2008 | 23/12/2010 | 293 | 250 |
Haikou–Sanya (eastern coastal line) | 29/09/2007 | 30/12/2010 | 308 | 250 |
Changchun–Jilin | 01/04/2008 | 30/12/2010 | 111 | 200 |
Jiangmen–Xinhui | 18/12/2005 | 07/01/2011 | 27 | 350 |
Beijing–Shanghai | 18/04/2008 | 30/06/2011 | 1433 | 350 |
Guangzhou–Shenzhen | 20/08/2008 | 26/12/2011 | 116 | 200 |
Longyan–Xiamen | 25/12/2006 | 01/07/2012 | 171 | 350 |
Zhengzhou–Wuhan | 15/10/2008 | 28/09/2012 | 536 | 350 |
Hefei–Bengbu | 20/05/2009 | 16/10/2012 | 132 | 350 |
Haerbin–Dalian | 23/08/2007 | 01/12/2012 | 921 | 350 |
Beijing–Zhengzhou | 26/12/2007 | 26/12/2012 | 693 | 350 |
Nanjing–Hangzhou | 01/04/2009 | 01/07/2013 | 249 | 350 |
Panjin–Yinkou | 31/05/2009 | 12/09/2012 | 89 | 350 |
Tianjin–Qinghuangdao | 08/11/2008 | 01/12/2013 | 261 | 350 |
Xiamen–Shenzhen | 23/11/2007 | 28/12/2013 | 502 | 250 |
Xian–Baoji | 18/12/2009 | 28/12/2013 | 148 | 250 |
Guangxi Coastal (Nanning–Qinzhou–Beihai) | 11/12/2008 | 28/12/2013 | 261 | 250 |
Liuzhou–Nanning | 27/12/2008 | 28/12/2013 | 223 | 350 |
Wuhan–Xianning | 26/03/2009 | 28/12/2013 | 90 | 250 |
Taiyuan–Xian | 03/12/2009 | 01/07/2014 | 678 | 250 |
Nanchang–Changsha | 26/02/2009 | 16/09/2014 | 344 | 350 |
Hangzhou–Nanchang | 18/04/2010 | 10/12/2014 | 582 | 350 |
Lanzhou–Wulumuqi | 01/01/2010 | 26/12/2014 | 1776 | 250 |
Guangzhou–Nanning | 11/09/2008 | 18/04/2014 | 577 | 250 |
Huanggang–Wuhan–Huangshi | 02/10/2009 | 18/06/2014 | 97 | 250 |
Taiyuan(south)–Xi’an(north) | 03/12/2009 | 01/07/2014 | 579 | 250 |
Nanchang(west)–Changsha(south) | 22/12/2009 | 16/09/2014 | 342 | 300 |
Urumqi (south)–Hami | 04/11/2009 | 16/11/2014 | 530 | 200 |
Hangzhou (east)–Nanchang (west) | 22/12/2009 | 10/12/2014 | 591 | 300 |
Changsha (south)–Xinhuang (west) | 16/03/2010 | 16/12/2014 | 420 | 300 |
Chengdu–Mianyang–Leshan | 30/12/2008 | 20/12/2014 | 319 | 200 |
Wuzhou (south) –Guangzhou (south) | 09/11/2008 | 26/12/2014 | 249 | 200 |
Guizhou–Guangxi | 13/10/2008 | 26/12/2014 | 861 | 250 |
Hami–Lanzhou (west) | 04/11/2009 | 26/12/2014 | 1246 | 200 |
Zhengzhou–Songcheng | 29/12/2009 | 28/12/2014 | 50 | 200 |
Xinhuang (west) –Guiyang (north) | 26/03/1010 | 18/06/2015 | 286 | 300 |
Harbin–Qiqihar | 05/07/2009 | 17/08/2015 | 286 | 250 |
Nanjing (south)–Anqing | 28/12/2008 | 06/12/2015 | 257 | 200 |
Nanning–Baise | 27/12/2009 | 11/12/2015 | 223 | 200 |
Chengdu–Chongqing | 22/03/2010 | 26/12/2015 | 305 | 300 |
Shenzhen–Futian | 20/08/2008 | 30/12/2015 | 8 | 300 |
Zhengzhou–Xuzhou | 26/12/2 012 | 10//9/2016 | 357 | 300 |
Chongqing (north)–Wanzhou (north) | 22/12/2010 | 28/11/2016 | 247 | 200 |
Guiyang–Kunming | 26/03/2010 | 28/12/2016 | 461 | 300 |
Baise–Kunming (south) | 27/12/2009 | 28/12/2016 | 487 | 200 |
Dazhi (north)–Yangxin | 29/12/2013 | 12/06/2017 | 36 | 200–250 |
Baoji–Lanzhou | 19/10/2010 | 09/07/2017 | 403 | 250 |
Hohhot (east)–Wulanchabu | 16/06/2014 | 03/08/2017 | 126 | 250 |
Yangxin–Jiujiang | 29/12/2013 | 21/09/2017 | 79 | 250 |
Jiangyou–Xi’an | 10/11/2010 | 06/12/2017 | 509 | 250 |
Shijiazhuang–Jinan | 08/02/2014 | 28/12/2017 | 319 | 250 |
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Symbols | Definition | Minimum | Maximum | Mean | SD | Observations |
---|---|---|---|---|---|---|
y | ln(housing price) | 7.4697 | 10.9642 | 8.8197 | 0.4893 | 1042 |
hsr | HSR | 0 | 1 | 0.2760 | 0.4471 | 2565 |
pop | Ln(population) | 2.7147 | 7.8043 | 4.6103 | 0.7722 | 2565 |
air | Airline | 0 | 1 | 0.4596 | 0.4985 | 2565 |
rail | Railway | 0 | 1 | 0.9341 | 0.2481 | 2565 |
save | Savings/GDP | 0.0430 | 4.1361 | 0.8454 | 0.3962 | 2515 |
loan | Loans/GDP | 0.0623 | 84.6609 | 1.5597 | 2.2602 | 2516 |
Baseline Regression: Fixed Effect Model | Dynamic Panel Data Model | |||
---|---|---|---|---|
Difference GMM | System GMM | |||
hsri,t−1 | 0.139 *** | 0.048 * | 0.073 *** | |
(0.204) | (0.025) | (0.024) | ||
hsri,t | 0.185 *** | 0.072 ** | 0.086 ** | |
(0.022) | (0.036) | (0.036) | ||
yi,t−1 | 0.670 *** | 0.805 *** | ||
(0.056) | (0.036) | |||
pop | 0.382 *** | 0.491 *** | 0.361 *** | 0.185 *** |
(0.051) | (0.053) | (0.070) | (0.053) | |
air | −0.018 | −0.021 | 0.065 | −0.038 |
(0.060) | (0.066) | (0.053) | (0.119) | |
rail | 0.033 | 0.027 | −0.171 ** | −0.220 *** |
(0.140) | (0.154) | (0.070) | (0.083) | |
save | −0.058 | −0.064 | 0.234 *** | 0.238 *** |
(0.053) | (0.056) | (0.076) | (0.079) | |
loan | 0.049 *** | 0.070 *** | 0.016 ** | −0.003 |
(0.010) | (0.010) | (0.009) | (0.011) | |
constant | 6.803 *** | 6.189 *** | 1.027 ** | 0.864 ** |
(0.301) | (0.320) | (0.478) | (0.341) | |
Observations | 1000 | 1031 | 532 | 779 |
Diagnosis | R2 = 0.3397 Hausman test (p = 0.00) | R2 = 0.3260 Hausman test (p = 0.00) | Sargan test (p = 0.00) First-order (p = 0.00) Second-order (p = 0.38) | Sargan test (p = 0.00) First-order (p = 0.00) Second-order (p = 0.28) |
Pooled Data | Panel Data: Fixed Effect Model | |||
---|---|---|---|---|
Beta | Standard Errors | Beta | Standard Errors | |
hsr | −0.003 | 0.028 | 0.049 | 0.033 |
hsr*N | 0.600 *** | 0.078 | 0.317 *** | 0.056 |
hsr*R | 0.349 *** | 0.061 | 0.196 *** | 0.048 |
N | 0.087 * | 0.077 | ||
R | 0.102 ** | 0.048 | ||
pop | 0.122 *** | 0.021 | 0.482 *** | 0.052 |
air | 0.083 *** | 0.027 | −0.017 | 0.065 |
rail | 0.040 | 0.082 | 0.023 | 0.150 |
save | −0.171 *** | 0.033 | −0.043 | 0.055 |
loan | 0.086 *** | 0.014 | 0.061 *** | 0.010 |
constant | 8.049 *** | 0.129 | 6.256 *** | 0.313 |
Observations | 1031 | 1031 | ||
Diagnosis | R2 = 0.4632 | R2 = 0.3735 Hausman test (p = 0.00) |
Pooled Data | Panel Data: Fixed Effect Model | |||
---|---|---|---|---|
Beta | Standard Errors | Beta | Standard Errors | |
hsr | 0.021 | 0.063 | 0.145 *** | 0.048 |
hsr*East | 0.135 ** | 0.070 | 0.064 | 0.056 |
hsr*Central | 0.014 | 0.073 | 0.025 | 0.064 |
East | 0.336 *** | 0.039 | ||
Central | 0.089 ** | 0.043 | ||
pop | 0.211 *** | 0.016 | 0.485 *** | 0.053 |
air | 0.140 *** | 0.026 | −0.021 | 0.066 |
rail | −0.036 | 0.082 | 0.030 | 0.154 |
save | −0.117 *** | 0.032 | −0.069 | 0.056 |
loan | 0.090 *** | 0.012 | 0.070 *** | 0.010 |
constant | 7.419 *** | 0.110 | 6.214 *** | 0.321 |
Observations | 1031 | 1031 | ||
Diagnosis | R2 = 0.4791 | R2 = 0.3373 Hausman test (p = 0.00) |
Symbols | Definition | Minimum | Maximum | Mean | SD | Observations |
---|---|---|---|---|---|---|
y | Housing price (in logs) | 7.8284 | 10.7254 | 8.8189 | 0.5057 | 315 |
hsr | HSR | 0 | 1 | 0.5302 | 0.4999 | 315 |
pop | Population (in logs) | 5.8497 | 7.8034 | 4.4868 | 0.6756 | 315 |
restr | Restriction | 0 | 1 | 0.3841 | 0.4872 | 315 |
metro | Metro | 0 | 18 | 1.7683 | 3.4104 | 315 |
rail | Railway | 0 | 1 | 0.9968 | 0.0563 | 315 |
save | Savings/GDP | 0.0787 | 1.995 | 0.8613 | 0.2545 | 305 |
loan | Loans/GDP | 0.0623 | 4.6291 | 0.7000 | 2.2402 | 304 |
land | Residential Land/construction land | 0.1887 | 0.7143 | 0.3079 | 0.073 | 262 |
(1) | (2) | (3) | ||||
---|---|---|---|---|---|---|
Beta | Standard Errors | Beta | Standard Errors | Beta | Standard Errors | |
hsri,t | 0.207 *** | 0.026 | 0.147 *** | 0.024 | 0.142 *** | 0.026 |
restri,t | 0.017 | 0.018 | ||||
restri,t+1 | −0.039 ** | 0.019 | ||||
pop | 0.840 *** | 0.100 | 0.501 *** | 0.098 | 0.505 *** | 0.114 |
metro | 0.076 *** | 0.010 | 0.060 *** | 0.011 | ||
rail | 0.000 | 0.171 | −0.047 | 0.142 | −0.030 | 0.137 |
save | −0.194 ** | 0.076 | −0.255 *** | 0.081 | −0.208 ** | 0.082 |
loan | 0.203 *** | 0.026 | 0.136 *** | 0.031 | 0.131 *** | 0.034 |
land | 0.100 | 0.326 | −0.110 | 0.019 | ||
constant | 3.511 *** | 0.640 | 5.648 *** | 0.634 | 5.686 *** | 0.734 |
Observations | 304 R2 = 0.5785 Hausman test (p = 0.00) | 256 R2 = 0.5888 Hausman test (p = 0.00) | 226 R2 = 0.5251 Hausman test (p = 0.00) | |||
Diagnosis |
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Share and Cite
Wang, Y.; Liu, X.; Wang, F. Economic Impact of the High-Speed Railway on Housing Prices in China. Sustainability 2018, 10, 4799. https://doi.org/10.3390/su10124799
Wang Y, Liu X, Wang F. Economic Impact of the High-Speed Railway on Housing Prices in China. Sustainability. 2018; 10(12):4799. https://doi.org/10.3390/su10124799
Chicago/Turabian StyleWang, Yuxiang, Xueli Liu, and Feng Wang. 2018. "Economic Impact of the High-Speed Railway on Housing Prices in China" Sustainability 10, no. 12: 4799. https://doi.org/10.3390/su10124799
APA StyleWang, Y., Liu, X., & Wang, F. (2018). Economic Impact of the High-Speed Railway on Housing Prices in China. Sustainability, 10(12), 4799. https://doi.org/10.3390/su10124799