How Does the Smart City Policy Influence Digital Infrastructure? Spatial Evidence from China
Abstract
:1. Introduction
2. Literature Review
2.1. Smart City Policy in China
2.2. Smart City Policy, Innovation, and Digital Infrastructure
2.3. Smart City Policy, Government Investment, and Digital Infrastructure
3. Data Description and Mode Setting
3.1. Data Description
3.2. Model Setting
- (1)
- Geographical distance matrix: Firstly, the actual distance between the two places is calculated according to the latitude and longitude coordinates of the two countries, and the elements on the diagonal of the matrix are all taken as 0 and the economic meaning expresses that the geographical distance of the same country is 0; next, the non-diagonal elements are taken as the reciprocal of the geographical distance between the two places. The matrix is then row-normalised to obtain the geographic matrix required for this paper.
- (2)
- Economic distance matrix: To construct the economic distance matrix, firstly, a representative economic indicator between two cities is selected to measure the economic closeness of the two places, and GDP per capita is usually chosen in the relevant literature. The diagonal element of this matrix is 0, and the elements in other positions are the inverse of the absolute value of the difference between the GDP per capita of the two countries. Finally, row-normalisation is performed to obtain the economic distance matrix.
- (3)
- Economic and social matrix: The economic matrix and the social matrix are multiplied before two row standardisation, and then row standardisation is carried out to obtain the economic and social matrix.
3.3. Selection of Variables
3.3.1. Independent Variable
3.3.2. Core Explanatory Variables
3.3.3. Control Variables
3.4. Description of Data
3.5. Spatial Autocorrelation Test
4. Empirical Result
4.1. Baseline Regression Analysis
4.2. Robustness Tests
4.2.1. Parallel Trend and Dynamic Effects Test
4.2.2. Placebo Test
4.2.3. Excluding Other Policy Interference
5. Mechanism Analysis
5.1. Government Investment Effect
5.2. High-Tech Enterprise Effect
6. Heterogeneity Analysis
6.1. Heterogeneity at the Level of City Economy
6.2. Heterogeneity of the Administrative Levels of Cities
6.3. Heterogeneity of Urban Location Characteristics
7. Main Conclusions and Policy Implications
7.1. Research Conclusions
7.2. Policy Implications
- Targeted Funding for Digital Infrastructure: Policy makers should allocate targeted funding specifically for digital infrastructure development within smart city policies. By doing so, local governments can prioritise the improvement of digital infrastructure, which is a key component of smart city development. This funding can be used to support projects such as broadband expansion, intelligent transportation systems, and smart grid technologies, which will contribute to building more connected, efficient, and sustainable urban environments.
- Incentivise High-Tech Enterprise Collaboration: Policy makers should create incentives to encourage high-tech enterprises to collaborate with local governments on digital infrastructure projects within smart city initiatives. By fostering partnerships between the private sector and local governments, cities can benefit from the innovation and expertise of high-tech companies. Incentives could include tax breaks, access to public infrastructure for testing and deployment, and streamlined regulatory processes for participating enterprises.
- Digital Inclusion Strategies: As part of the smart city policies, policy makers should develop digital inclusion strategies to ensure that all residents, regardless of socio-economic status, have access to and can benefit from digital infrastructure improvements. This may involve investing in affordable broadband connectivity, public Wi-Fi networks, and digital literacy programs as well as ensuring that digital infrastructure projects are implemented equitably across various neighbourhoods and communities.
- Leveraging Data and Analytics for Decision Making: Policy makers should emphasise the importance of leveraging data and analytics in smart city policy development and digital infrastructure planning. By utilising data-driven insights, cities can make more informed decisions on resource allocation, infrastructure investments, and policy adjustments, leading to more effective and efficient outcomes. This may involve investing in data collection and analysis tools as well as building the capacity of local government officials and urban planners to understand and interpret data for decision-making purposes.
7.3. Further Analysis
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Variable Name | Average | Standard Deviation | Min | Max | N |
---|---|---|---|---|---|
SCP | 0.3058 | 0.2015 | 0.0000 | 1.0000 | 4573 |
di | 2.4460 | 7.1286 | 0.0464 | 64.0385 | 4573 |
edu | 0.0405 | 0.0736 | 0.0009 | 0.4277 | 4573 |
industry | 0.1760 | 0.1131 | 0.0374 | 0.4333 | 4573 |
land | 48.1854 | 8.7020 | 28.3300 | 66.4100 | 4573 |
manufacture | 1.2886 | 0.5895 | 0.4380 | 3.3208 | 4573 |
science | 0.0133 | 0.0113 | 0.0016 | 0.0424 | 4573 |
finance | 1.3300 | 1.2034 | 0.4697 | 9.6221 | 4573 |
fdi | 0.0105 | 0.0133 | 0.0000 | 0.0613 | 4573 |
den | 0.0401 | 0.0329 | 0.0011 | 0.1185 | 4573 |
Year | 2005 | 2006 | 2007 | 2008 | 2009 | 2010 | 2011 | 2012 |
Moran’s I | 0.064 *** | 0.066 *** | 0.064 *** | 0.066 *** | 0.064 *** | 0.066 *** | 0.052 *** | 0.052 *** |
Year | 2013 | 2014 | 2015 | 2016 | 2017 | 2018 | 2019 | |
Moran’s I | 0.051 *** | 0.052 *** | 2015 | 0.043 *** | 0.038 *** | 0.046 *** | 0.050 *** |
(1) | (2) | (3) | (4) | (5) | (6) | (7) | (8) | |
---|---|---|---|---|---|---|---|---|
Variables | lndi FE | lndi FE | lndi SAR | lndi SAR | lndi SEM | lndi SEM | lndi SDM | lndi SDM |
SCP | 0.183 ** | 0.128 *** | 0.251 ** | 0.134 *** | 0.234 ** | 0.142 *** | 0.121 ** | 0.192 *** |
(1.33) | (1.61) | (2.22) | (1.70) | (2.11) | (1.79) | (1.03) | (1.39) | |
City FE | YES | YES | YES | YES | YES | YES | YES | YES |
Control FE | YES | YES | YES | YES | YES | YES | YES | YES |
Year FE | YES | YES | YES | YES | YES | YES | YES | YES |
rho | 0.186 *** | 0.139 ** | 0.157 *** | 0.117 ** | ||||
(3.43) | (2.52) | (3.10) | (2.29) | |||||
lambda | 0.179 *** | 0.121 ** | ||||||
(3.29) | (2.15) | |||||||
R-squared | 0.033 | 0.108 | 0.041 | 0.054 | 0.048 | 0.061 | 0.001 | 0.011 |
City FE | YES | YES | YES | YES | YES | YES | YES | YES |
Year FE | YES | YES | YES | YES | YES | YES | YES | YES |
(1) | (2) | (3) | |
---|---|---|---|
SCP | 0.0110 | 0.0956 | 0.0780 |
(0.1676) | (0.2675) | (0.4028) | |
rho | −0.4845 | −1.8648 | 0.5587 |
(−0.1238) | (−0.4939) | (0.1566) | |
_cons | −3.0603 | −3.4299 | −6.7852 |
(−0.2920) | (−0.3454) | (−0.6825) |
(1) | (2) | (3) | |
---|---|---|---|
SCP | 0.2640 | 0.5156 | 0.4356 |
(0.2165) | (0.4346) | (0.3283) | |
rho | 0.1514 | 0.1551 | 0.1256 |
(1.1052) | (1.2605) | (0.9157) | |
_cons | −2.9614 | −3.1950 * | −2.6348 |
(−1.4312) | (−1.7116) | (−1.2489) |
(1) | (2) | (3) | |
---|---|---|---|
SCP | 0.121 ** | 0.143 * | 0.126 * |
(1.254) | (1.152) | (1.323) | |
_cons | −4.1901 * | −2.8734 | −3.2898 |
(−1.9492) | (−1.5569) | (−1.4766) |
(1) | (2) | (3) | (4) | (5) | (6) | (7) | (8) | |
---|---|---|---|---|---|---|---|---|
Variables | lndi FE | lndi FE | lndi SAR | lndi SAR | lndi SEM | lndi SEM | lndi SDM | lndi SDM |
SCP | 0.196 *** | 0.151 *** | 0.199 *** | 0.130 ** | 0.138 *** | 0.115 ** | 0.199 *** | 0.130 ** |
(3.58) | (2.71) | (3.50) | (2.29) | (2.64) | (2.22) | (3.50) | (2.29) | |
Gi | 0.014 | 0.019 * | 0.017 | 0.021 * | 0.019 * | 0.020 * | 0.026 ** | 0.031 *** |
(1.33) | (1.78) | (1.62) | (1.95) | (1.81) | (1.88) | (2.41) | (2.70) | |
rho | 0.186 *** | 0.139 ** | 0.157 *** | 0.117 ** | ||||
(3.43) | (2.52) | (3.10) | (2.29) | |||||
lambda | 0.179 *** | 0.121 ** | ||||||
(3.29) | (2.15) | |||||||
R-squared | 0.036 | 0.112 | 0.043 | 0.047 | 0.051 | 0.056 | 0.006 | 0.007 |
City FE | YES | YES | YES | YES | YES | YES | YES | YES |
Year FE | YES | YES | YES | YES | YES | YES | YES | YES |
(1) | (2) | (3) | (4) | (5) | (6) | (7) | (8) | |
---|---|---|---|---|---|---|---|---|
Variables | lndi FE | lndi FE | lndi SAR | lndi SAR | lndi SEM | lndi SEM | lndi SDM | lndi SDM |
SCP | 0.512 *** | 0.789 *** | 0.153 *** | 0.020 * | 0.026 ** | 0.031 *** | 0.013 *** | 0.019 * |
(0.016) | (0.021) | (0.016) | (1.88) | (2.41) | (2.70) | (1.74) | (1.81) | |
land | 0.174 *** | 0.019 * | 0.117 ** | 0.021 * | 0.019 * | 0.020 * | 0.026 ** | 0.031 *** |
(1.99) | (1.78) | (2.29) | (1.95) | (1.81) | (1.88) | (2.41) | (2.70) | |
rho | 0.186 *** | 0.139 ** | 0.157 *** | 0.117 ** | ||||
(3.43) | (2.52) | (3.10) | (2.29) | |||||
lambda | 0.179 *** | 0.121 ** | ||||||
(3.29) | (2.15) | |||||||
R-squared | 0.036 | 0.112 | 0.043 | 0.047 | 0.051 | 0.056 | 0.006 | 0.007 |
City FE | YES | YES | YES | YES | YES | YES | YES | YES |
Year FE | YES | YES | YES | YES | YES | YES | YES | YES |
(1) | (2) | (3) | |
---|---|---|---|
SCP | 3.6910 ** | 2.6198 * | 0.4061 ** |
(2.0712) | (1.7283) | (1.9954) | |
rho | 0.1151 | 0.1213 * | 0.1256 * |
(1.5515) | (1.8152) | (1.7323) | |
_cons | −4.1901 * | −2.8734 | −3.2898 |
(−1.9492) | (−1.5569) | (−1.4766) |
(1) | (2) | (3) | |
---|---|---|---|
SCP | 4.2723 ** | 3.3169 ** | 0.3551 * |
(2.4334) | (2.1166) | (1.9106) | |
rho | 0.4610 ** | 1.5251 | 0.3551 * |
(2.1415) | (0.4169) | (1.9106) | |
_cons | −2.1854 | −0.1505 | −0.5708 |
(−1.2258) | (−0.1011) | (−0.3239) |
Eastern Region | Central Region | Western Region | |
---|---|---|---|
SCP | 3.5851 * | 5.4974 ** | 4.8785 * |
(1.8244) | (2.1536) | (1.8857) | |
rho | 0.0022 | 0.2182 | 0.8251 *** |
(0.0060) | (0.7844) | (2.9919) | |
_cons | 0.7687 | −2.2825 ** | −2.8020 *** |
(0.4128) | (−2.1157) | (−2.7986) |
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Song, M.; Xiao, Y.; Zhou, Y. How Does the Smart City Policy Influence Digital Infrastructure? Spatial Evidence from China. Land 2023, 12, 1381. https://doi.org/10.3390/land12071381
Song M, Xiao Y, Zhou Y. How Does the Smart City Policy Influence Digital Infrastructure? Spatial Evidence from China. Land. 2023; 12(7):1381. https://doi.org/10.3390/land12071381
Chicago/Turabian StyleSong, Meijing, Yuan Xiao, and Yige Zhou. 2023. "How Does the Smart City Policy Influence Digital Infrastructure? Spatial Evidence from China" Land 12, no. 7: 1381. https://doi.org/10.3390/land12071381
APA StyleSong, M., Xiao, Y., & Zhou, Y. (2023). How Does the Smart City Policy Influence Digital Infrastructure? Spatial Evidence from China. Land, 12(7), 1381. https://doi.org/10.3390/land12071381