Big Data Innovative Development Experiments, Sci-Technology Finance Ecology, and the Chinese Path to Sustainable Modernization—A Quasi-Natural Experiment Based on SDID and DML
Abstract
1. Introduction
2. Literature Review and Theoretical Framework
2.1. Big Data Innovation Pilot Zones and the Chinese Path to Sustainable Modernization
2.2. Science and Technology Finance Ecology and the Chinese Path to Sustainable Modernization
2.3. Science and Technology Finance Ecology and Sustainable Modernization Under the Big Data Innovation Pilot Framework
3. Quasi-Natural Experiment Design
3.1. Model Construction
3.1.1. Spatial Difference-in-Differences (SDID) Model
3.1.2. Double Machine Learning (DML) Model
3.2. Variable Selection and Data Sources
3.2.1. Dependent Variable: Chinese Path to Modernization (CPM)
3.2.2. Independent Variables
- (1)
- National Big Data Comprehensive Pilot Zone Policy (DID)
- (2)
- Science and Technology Finance Ecology (SFE)
3.2.3. Control Variables
3.2.4. Mechanism Variables
3.2.5. Spatial Weight Matrix
4. Empirical Results and Analysis
4.1. Spatial Difference-in-Differences Model Analysis
4.1.1. Spatial Autocorrelation Analysis
4.1.2. Identification, Selection, and Testing of Spatial Econometric Models
4.1.3. Regression Analysis of the Spatial Difference-in-Differences Model
4.2. Double Machine Learning Model Analysis
4.2.1. Baseline Regression of Double Machine Learning
4.2.2. Robustness Tests
- (1)
- Excluding Potential Regional Factor Interference
- (2)
- Resetting the Double Machine Learning Sample Split Ratio
- (3)
- Replacing Machine Learning Algorithms
4.2.3. Testing for Omitted Variable Bias
- (1)
- Estimate two OLS models:
- (2)
- Compute coefficients and :
- (3)
- Set the safety factor:
- (4)
- Calculate the parametric bounds :
4.2.4. Heterogeneity Analysis
- (1)
- Differences in “Location–Resource–Environment” Conditions
- (2)
- Urban–Rural Integration Pilot Zones
- (3)
- Green Finance Reform and Innovation Pilot Zones
4.2.5. Mechanism Analysis
5. Conclusions and Policy Implications
5.1. Conclusions
5.2. Policy Implications
5.3. Research Limitations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Secondary Dimension | Tertiary Dimension | Proxy Indicator | Attribute |
---|---|---|---|
Economic Development | Economic Performance | GDP per capita | + |
Economic Structure & Efficiency | Advanced industrial structure index | + | |
Rationalized industrial structure index | + | ||
Marketization | Marketization index | + | |
Openness to the World | FDI/GDP | + | |
Total imports and exports/GDP | + | ||
Innovation Capacity | R&D expenditure/GDP | + | |
Technology market transaction value/GDP | + | ||
Urban–Rural Coordination | Urbanization Level | Urbanization rate | + |
Income Level | Urban residents’ per capita disposable income | + | |
Rural residents’ per capita disposable income | + | ||
Income Gap | Urban–rural income Theil index | − | |
Cultural–Ethical Progress | Cultural Investment | Culture, sports & media expenditure/Fiscal spending | + |
Public library collections per capita | + | ||
Broadcast coverage rate | + | ||
Cultural Industry | Number of library-hosted public lectures | + | |
Number of performances by art troupes | + | ||
Ecological Sustainability | Resource Consumption | Water resources per capita | + |
Electricity consumption per unit GDP | − | ||
Pollution Control | SO2 emissions | − | |
NOX emissions | − | ||
Environmental Governance | Daily urban sewage treatment capacity | + | |
Harmless treatment rate of household waste | + | ||
Urban Greening | Green coverage ratio in built-up areas | + | |
Forest coverage rate | + | ||
Social Progress | Employment | Employment rate | + |
Education | Average years of schooling | + | |
Student–teacher ratio in primary & secondary schools | − | ||
Public education expenditure | + | ||
Healthcare | Practicing physicians per 10,000 people | + | |
Number of top-tier hospitals | + | ||
Social Security | Social security & employment expenditure/Fiscal spending | + | |
Infrastructure | Urban road area per capita | + | |
Public transport ridership | + | ||
Broadband access ports per 10,000 people | + | ||
Government Efficiency | Per capita public service expenditure | + |
Secondary Indicator | Tertiary Indicator | Proxy Variable | Attribute |
---|---|---|---|
S&T Finance Producers | Universities | Number of regular higher education institutions | + |
Full-time equivalent R&D personnel in universities | + | ||
Internal R&D expenditure of universities | + | ||
Number of R&D projects in universities | + | ||
Number of patent applications by universities | + | ||
Research Institutes | Number of R&D institutions | + | |
Full-time equivalent R&D personnel in research institutes | + | ||
Internal R&D expenditure of research institutes | + | ||
Number of R&D projects in research institutes | + | ||
Enterprises | Number of R&D-active industrial enterprises (above scale) | + | |
Full-time equivalent R&D personnel in enterprises | + | ||
Internal R&D expenditure of enterprises | + | ||
Number of R&D projects in enterprises | + | ||
S&T Finance Decomposers | Financial Institutions | Employment in urban financial sector | + |
Tech loan balance of financial institutions | + | ||
Total stock market value | + | ||
Intermediaries | Number of university science parks | + | |
Number of business incubators | + | ||
Number of venture capital institutions | + | ||
Intensity of venture capital investment | + | ||
S&T Finance Consumers | Support for Tech Commercialization | Number of listed tech enterprises | + |
Total bank credit for technology | + | ||
Effectiveness of Tech Transfer | Sales revenue of new products (above-scale enterprises) | + | |
Number of new product development projects | + | ||
Contract value of technology transactions | + | ||
S&T Finance Environment | Infrastructure | Year-on-year growth in fixed investment in sci-tech services | + |
Internet penetration rate | + | ||
Number of academic conferences hosted by provincial S&T associations | + | ||
Market Support | FDI as % of GDP | + | |
Marketization index | + | ||
Total output value of financial industry | + | ||
Government Support | Strength of IP protection | + | |
Local government education expenditure as % of total | + | ||
Local government sci-tech expenditure as % of total | + |
Control Variable | Definition | Measurement Description |
---|---|---|
High-Tech Employment Agglomeration (TP) | Concentration of personnel engaged in high-tech industries within a region | and represent the number of high-tech industry employees and total employees in a given region; P and L represent the corresponding national figures |
High-Tech Enterprise Agglomeration (TE) | Clustering of interrelated, complementary, or competing high-tech enterprises within a region | and represent the number of high-tech enterprises and total employees in a given region; E and L represent the corresponding national figures |
Environmental Regulation (ER) | Regulations targeting pollution to protect the environment | |
Tax Burden (TL) | The extent of tax pressure | |
Social Consumption Level (CL) | The degree of material and cultural consumption by society | |
Innovation Level (IL) | Capacity to generate new ideas, theories, or methods through technology and practice |
Year | Moran’s I | p Value | Z Value | Year | Moran’s I | p Value | Z Value |
---|---|---|---|---|---|---|---|
2009 | 0.277 *** | 0.000 | 14.544 | 2016 | 0.251 *** | 0.000 | 12.967 |
2010 | 0.276 *** | 0.000 | 14.350 | 2017 | 0.244 *** | 0.000 | 12.622 |
2011 | 0.271 *** | 0.000 | 13.990 | 2018 | 0.226 *** | 0.000 | 11.807 |
2012 | 0.273 *** | 0.000 | 14.155 | 2019 | 0.212 *** | 0.000 | 11.155 |
2013 | 0.266 *** | 0.000 | 13.822 | 2020 | 0.206 *** | 0.000 | 10.877 |
2014 | 0.267 *** | 0.000 | 13.837 | 2021 | 0.199 *** | 0.000 | 10.525 |
2015 | 0.256 *** | 0.000 | 13.194 |
Statistic | Value | p Value |
---|---|---|
LM test (SAR) | 108.963 *** | 0.000 |
Robust LM test (SAR) | 46.072 *** | 0.000 |
LM test (SEM) | 126.989 *** | 0.000 |
Robust LM test (SEM) | 46.072 *** | 0.000 |
LR test (SAR) | 121.63 *** | 0.000 |
LR test (SEM) | 138.43 *** | 0.000 |
Wald test (SAR) | 96.06 *** | 0.000 |
Wald test (SEM) | 77.44 *** | 0.000 |
Hausman test (Random Effects) | 181.89 *** | 0.000 |
Model 3 | Model 4 | |||||
---|---|---|---|---|---|---|
Variable | Local Effect | Neighboring Effect | Total Effect | Local Effect | Neighboring Effect | Total Effect |
DID | 0.041 *** | 0.343 ** | 0.384 ** | −0.001 | −0.090 ** | −0.091 ** |
(0.000) | (0.027) | (0.016) | (0.783) | (0.033) | (0.039) | |
SFE | 1.248 *** | 0.488 | 1.736 *** | 0.917 *** | 0.190 | 1.107 *** |
(0.000) | (0.388) | (0.002) | (0.000) | (0.598) | (0.002) | |
DID × SFE | 0.610 *** | 2.084 *** | 2.694 *** | |||
(0.000) | (0.000) | (0.000) | ||||
TP | 0.004 | 0.977 * | 0.981 * | 0.012 | 0.004 | 0.016 |
(0.857) | (0.077) | (0.087) | (0.248) | (0.979) | (0.922) | |
TE | 0.028 | −0.774 * | −0.746 | −0.001 | 0.015 | 0.014 |
(0.163) | (0.080) | (0.104) | (0.918) | (0.913) | (0.922) | |
ER | 0.905 | 10.899 | 11.804 | −1.899 ** | −27.601 *** | −29.500 *** |
(0.455) | (0.582) | (0.567) | (0.017) | (0.002) | (0.002) | |
TL | −0.369 ** | 6.094 ** | 5.725 * | −0.167 | 1.150 | 0.983 |
(0.046) | (0.037) | (0.058) | (0.208) | (0.234) | (0.322) | |
CL | 0.013 | −0.357 | −0.344 | 0.163 *** | 2.345 *** | 2.508 *** |
(0.878) | (0.808) | (0.822) | (0.004) | (0.001) | (0.001) | |
IL | −0.021 *** | −0.070 | −0.092 * | −0.008 ** | 0.020 | 0.012 |
(0.000) | (0.173) | (0.085) | (0.026) | (0.278) | (0.529) | |
rho | 0.644 *** | 0.446 *** | ||||
(0.000) | (0.000) | |||||
lgt_theta | −2.023 *** | −1.827 *** | ||||
(0.000) | (0.000) | |||||
sigma2_e | 0.001 *** | 0.000 *** | ||||
(0.000) | (0.000) | |||||
N | 390 | 390 | ||||
R2 | 0.822 | 0.919 |
Variable | Model 5 | Model 6 | Model 7 |
---|---|---|---|
DID | 0.073 *** | 0.073 *** | |
(0.016) | (0.016) | ||
SFE | 0.837 *** | 0.837 *** | |
(0.128) | (0.128) | ||
DID × SFE | 1.281 *** | ||
_cons | 0.000 | −0.000 | −0.001 |
(0.002) | (0.002) | (0.002) | |
N | 390 | 390 | 390 |
R2 | - | - | - |
Robustness Test Content | Adjusted Sample Range (Excluding Qinghai, Ningxia, Hainan) | Reset Sample Split Ratio (K-Folds = 3) | Replace ML Algorithm (Lasso Regression) | Replace ML Algorithm (Neural Network) |
---|---|---|---|---|
DID | 0.070 *** | 0.079 *** | 0.058 *** | 0.268 *** |
(0.016) | (0.017) | (0.012) | (0.072) | |
SFE | 0.768 *** | 0.938 *** | 1.384 *** | 0.716 *** |
(0.126) | (0.182) | (1.384) | (0.124) | |
DID × SFE | 0.547 ** | 1.334 *** | 0.533 *** | 0.338 *** |
(0.265) | (0.221) | (0.054) | (0.073) | |
Control Variables | Yes | Yes | Yes | Yes |
Time Fixed Effects | Yes | Yes | Yes | Yes |
Regional Fixed Effects | Yes | Yes | Yes | Yes |
N | 351 | 390 | 390 | 390 |
Dependent Variable | Restricted Model | Full Model | ) | Zero Included? | |||
---|---|---|---|---|---|---|---|
CPM | 0.073 *** | 0.085 *** | 0.919 | 0.712 | 0.071 *** | 0.069 *** | No |
SFE | 0.837 *** | 0.921 *** | 0.901 | 0.698 | 0.830 *** | 0.825 *** | No |
Heterogeneity Analysis Dimension | Location–Resource–Environment Differences | Urban–Rural Integration Pilot | Green Finance Reform and Innovation Pilot | |||
---|---|---|---|---|---|---|
Eastern Provinces | Central and Western Provinces | Pilot Zone | Non-Pilot Zone | Pilot Zone | Non-Pilot Zone | |
DID | 0.046 *** | 0.059 *** | 0.063 *** | 0.031 * | 0.080 *** | 0.041 *** |
(0.011) | (0.016) | (0.010) | (0.017) | (0.014) | (0.010) | |
SFE | 1.180 *** | 0.702 *** | 0.765 *** | 0.728 *** | 0.802 *** | 0.616 *** |
(0.139) | (0.051) | (0.098) | (0.061) | (0.068) | (0.077) | |
DID × SFE | 0.241 *** | 0.203 *** | 0.215 *** | 0.117 *** | 0.243 *** | 0.202 *** |
(0.077) | (0.029) | (0.042) | (0.029) | (0.044) | (0.041) | |
Control Variables | Yes | Yes | Yes | Yes | Yes | Yes |
Time Fixed Effects | Yes | Yes | Yes | Yes | Yes | Yes |
Region Fixed Effects | Yes | Yes | Yes | Yes | Yes | Yes |
N | 130 | 260 | 143 | 247 | 78 | 312 |
Mechanism Path | Total Effect | Direct Effect | Indirect Effect | Sobel (Z) | Aroian (Z) | Goodman (Z) | Mediation Share |
---|---|---|---|---|---|---|---|
DID → SFE → CPM | 0.102 *** | 0.044 *** | 0.058 *** | 5.340 *** | 5.338 *** | 5.342 *** | 57.22% |
DID → GAT → CPM | 0.102 *** | 0.078 *** | 0.024 *** | 3.845 *** | 3.830 *** | 3.861 *** | 23.31% |
DID → INT → CPM | 0.102 *** | 0.002 | 0.100 *** | 9.226 *** | 9.221 *** | 9.231 *** | 98.03% |
DID → INC → CPM | 0.102 *** | 0.049 *** | 0.053 *** | 6.837 *** | 6.820 *** | 6.855 *** | 51.68% |
DID → GIN → CPM | 0.102 *** | 0.060 *** | 0.042 *** | 5.964 *** | 5.945 *** | 5.983 *** | 40.98% |
DID → AIS → CPM | 0.102 *** | 0.085 *** | 0.017 ** | 2.467 ** | 2.460 ** | 2.474 ** | 16.94% |
Mechanism Path | Indirect Effect | Bootstrap SE | 95% Percentile CI | 95% Bias-Corrected CI | Z-Value | p-Value |
---|---|---|---|---|---|---|
DID → SFE → CPM | 0.058 *** | 0.013 | [0.0314, 0.0844] | [0.0314, 0.0844] | 4.36 | 0.000 |
DID → GAT → CPM | 0.024 *** | 0.005 | [0.0131, 0.0338] | [0.0136, 0.0339] | 4.63 | 0.000 |
DID → INT → CPM | 0.100 *** | 0.015 | [0.0743, 0.1280] | [0.0746, 0.1292] | 6.87 | 0.000 |
DID → INC → CPM | 0.053 *** | 0.007 | [0.0398, 0.0651] | [0.0403, 0.0666] | 7.85 | 0.000 |
DID → GIN → CPM | 0.042 *** | 0.006 | [0.0305, 0.0537] | [0.0310, 0.0548] | 7.11 | 0.000 |
DID → AIS → CPM | 0.017 ** | 0.005 | [0.0079, 0.0264] | [0.0079, 0.2688] | 3.50 | 0.000 |
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Liu, Q.; Guan, T.; Liu, S.; Jia, J.; Yu, C.; Lv, K. Big Data Innovative Development Experiments, Sci-Technology Finance Ecology, and the Chinese Path to Sustainable Modernization—A Quasi-Natural Experiment Based on SDID and DML. Sustainability 2025, 17, 8227. https://doi.org/10.3390/su17188227
Liu Q, Guan T, Liu S, Jia J, Yu C, Lv K. Big Data Innovative Development Experiments, Sci-Technology Finance Ecology, and the Chinese Path to Sustainable Modernization—A Quasi-Natural Experiment Based on SDID and DML. Sustainability. 2025; 17(18):8227. https://doi.org/10.3390/su17188227
Chicago/Turabian StyleLiu, Qi, Tianning Guan, Siyu Liu, Juncheng Jia, Chenxuan Yu, and Kun Lv. 2025. "Big Data Innovative Development Experiments, Sci-Technology Finance Ecology, and the Chinese Path to Sustainable Modernization—A Quasi-Natural Experiment Based on SDID and DML" Sustainability 17, no. 18: 8227. https://doi.org/10.3390/su17188227
APA StyleLiu, Q., Guan, T., Liu, S., Jia, J., Yu, C., & Lv, K. (2025). Big Data Innovative Development Experiments, Sci-Technology Finance Ecology, and the Chinese Path to Sustainable Modernization—A Quasi-Natural Experiment Based on SDID and DML. Sustainability, 17(18), 8227. https://doi.org/10.3390/su17188227