Can Digital Innovation Improve Green Total Factor Productivity: Evidence from Digital Patents of China
Abstract
:1. Introduction
2. Literature Review and Theoretical Analysis
2.1. Literature Review on DI and GTFP
2.2. The Direct Impact of DI on GTFP
2.3. The Mediating Effect of Resource Allocation Efficiency
3. Measurement Model Setting and Data Description
3.1. Model Design
3.1.1. Directional SBM–GML Index Measurement Model
3.1.2. Econometric Model
3.2. Variable Selection
3.3. Data Sources and Descriptive Statistics
4. Empirical Results
4.1. Benchmark Regression Results
4.2. Robustness and Endogeneity Test
- a.
- Revising the assessment approach of GTFP. The estimation outcomes may be influenced by variations in the measurement methods of GTFP. Therefore, we adopt the SBM–BML methodology as an alternative approach for calculating GTFP. As shown in Column (1), the coefficient of DI is 0.090, which exhibits statistical significance at 5%. The coefficient and its significance remain stable, consistent with the benchmark regression results.
- b.
- Refining the methodology for measuring DI. Given that variations in DI measurement methods may impact estimation results, this research uses the count of utility model patent apps related to the digital economy in each province and city as an alternative indicator for DI. The outcomes are presented in Column (2), where the coefficient of DI is 0.080, demonstrating statistical significance at 5%. Notably, the coefficient and its significance remain robust, aligning consistently with the benchmark regression findings.
- c.
- Incorporating the time-lagged term of GTFP into the analysis. Given the potential presence of temporal sequence correlation in GTFP, which could influence a region’s current year GTFP based on previous year figures, this study re-evaluates by incorporating the lagged term of GTFP into the regression analysis. The results are presented in Column (3), where the coefficient of DI is estimated to be 0.103 with a statistical significance. The coefficient and its significance remain robust, consistent with the benchmark regression findings.
- d.
- To further discuss the matter of omitted variables, this article incorporates additional control variables including industrial agglomeration (IA), transportation infrastructure (TI), economic development (ED), and population density (PD). The degree of IA is represented by the employment density within a region, which is quantified as the percentage of people in employment by the area of the administrative district. The level of TI is assessed based on the logarithm of regional road mileage. ED is evaluated using the logarithm of regional per capita GDP, with per capita GDP adjusted for inflation using a price series based on 2005. PD is determined by calculating the ratio between the total population and administrative area. The results are presented in Column (4), where the coefficient of DI is 0.103, demonstrating statistical importance at the 1% level. Importantly, this coefficient remains robust, and this agrees with the benchmark findings.
- e.
- Incorporating the interaction fixed effects of province and year. Provinces with a more developed economy may possess a relatively advanced DIC and enjoy a greater competitive edge in terms of DI. Accordingly, this article incorporates province–year interaction fixed effects to account for time-dependent unobservable attributes at the provincial level. The results are presented in Column (5), where the coefficient of DI is 0.086, demonstrating statistical significance at the 1% level. This coefficient remains robust, aligning with the benchmark results.
Variables | (1) | (2) | (3) | (4) | (5) | (6) |
---|---|---|---|---|---|---|
Change Independent Variable | Change Dependent Variable | Include Lagged Terms | Add Control Variables | Multi-Dimensional Interaction Fixed Effects | Instrumental Variable Regression | |
DI | 0.090 ** | 0.080 ** | 0.103 ** | 0.103 *** | 0.086 *** | 0.092 * |
(0.038) | (0.034) | (0.039) | (0.036) | (0.024) | (0.059) | |
IA | 0.560 | |||||
(1.716) | ||||||
TI | −0.053 | |||||
(0.088) | ||||||
ED | −0.005 | |||||
(0.075) | ||||||
PD | 0.042 * | |||||
(0.205) | ||||||
Province | yes | yes | yes | yes | yes | yes |
Year | yes | yes | yes | yes | yes | yes |
Control Variables | yes | yes | yes | yes | yes | yes |
Province–year | no | no | no | no | yes | no |
N | 510 | 510 | 480 | 510 | 510 | 510 |
R2 | 0.255 | 0.243 | 0.282 | 0.250 | - | 0.0346 |
Kleibergen–paap rk LM | 6.46 ** | |||||
Cragg–Donald Wald F | 115.03 |
- f.
- Instrumental variables regression. Given the positive correlation between a higher level of GTFP and more advanced DIC, as well as potentially stronger systems for safeguarding R&D innovation, this could further facilitate the advancement of DI. Consequently, the benchmark model is potentially vulnerable to issues of endogeneity due to reverse causality, which could lead to biased outcomes in the estimates. Building upon the existing literature [55,56], this study uses postal and telecommunications data as instrumental variables to mitigate endogeneity concerns. The postal and telecommunications data can indicate the initial stage of development in China’s postal and telecommunications industry. On one hand, the enhancement of postal and telecommunications infrastructure is advantageous for fostering DI, while previous communication developments within a region can influence local DI progress in diverse manners. In China, landline telephones represented the main method of accessing networks. Therefore, the prevalence of landline telephones during the 1980s can act as a metric indicating the expansion of the postal and telecommunications sector, which exhibits a positive correlation with regional levels of DI. On the other hand, the utilization frequency of landline telephones in regions has witnessed a significant decline in recent years, thereby not directly impacting regional production efficiency and thus satisfying the exclusivity requirement of an instrumental variable. Moreover, given the cross-sectional nature of the aforementioned historical data, we adopt the approach of [57] by incorporating a time series variable that is correlated with it to construct an interaction term, which is subsequently introduced into the fixed effects model. This article utilizes an interaction term, constructed by combining the count of broadband internet connectivity ports from the year prior in each region with the count of landline phones per hundred people in 1984, as an instrumental variable to measure DI. The results are presented in Column (6). The coefficient of DI is remarkably positive, which aligns with the benchmark regression analysis. The Kleibergen–Paap rk LM statistic exhibits statistical significance at the 5% level, while the Cragg–Donald Wald F statistic exceeds the critical value of the Stock–Yogo weak instrument test with a level of significance of 10%, thereby establishing that the instrumental variable meets the relevance criterion. The aforementioned findings indicate that the benchmark results stay robust even after accounting for endogeneity.
5. Further Analysis and Testing
5.1. Impact Mechanism Testing
5.1.1. CE Improvement Mechanism
5.1.2. LE Improvement Mechanism
5.1.3. TE Improvement Mechanism
5.2. Heterogeneity Analysis
5.2.1. Heterogeneity in the Degree of IPP
5.2.2. Heterogeneity of DIC
5.2.3. Regional Heterogeneity
6. Discussion
7. Conclusions and Policy Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Indicators Type | Indicators | Definition | Data Sources |
---|---|---|---|
Inputs | Capital input | Year-end value of fixed assets for large enterprises | CSY |
Labor input | Year-end employment number in production sector | CLSY | |
Energy input | Total energy consumption of the production sector | CESY | |
Expected outputs | Economic output | Industrial added value | CSY |
Unexpected outputs | Exhaust emissions | Industrial sulfur dioxide emissions | CESY |
Wastewater discharge | Industrial effluent discharge volume | ||
Solid waste discharge | Industrial particulate matter (dust) emissions |
Variables Type | Variables | Definition | Data Sources |
---|---|---|---|
Dependent variable | GTFP | Calculated by the directional SBM–GML model | - |
Independent variable | DI | Number of authorized digital economy invention patents | CNRDS |
Control variables | IS | Output value of tertiary industry /output value of secondary industry | CSMAR |
ER | Finished investment in industrial pollution control/industrial added value | ||
ES | Regional electricity consumption /Total national electricity consumption | ||
UL | Regional unemployment rate | ||
SC | Total retail sales of consumer goods/GDP |
Variables | N | Mean | SD | Min | Max |
---|---|---|---|---|---|
GTFP | 510 | 1.001 | 0.202 | 0.243 | 3.224 |
DI | 510 | 7.377 | 1.849 | 1.386 | 11.77 |
IS | 510 | 7.580 | 0.786 | 5.624 | 8.864 |
ER | 510 | 0.034 | 0.007 | 0.0121 | 0.056 |
ES | 510 | 0.033 | 0.024 | 0.003 | 0.108 |
UL | 510 | 0.004 | 0.004 | 0.0001 | 0.031 |
SC | 510 | 0.366 | 0.064 | 0.222 | 0.538 |
Variables | (1) | (2) | (3) |
---|---|---|---|
GTFP | GTFP | GTFP | |
DI | 0.017 ** | 0.043 *** | 0.099 *** |
(0.007) | (0.014) | (0.033) | |
IS | −0.040 | −0.179 | −0.085 |
(0.031) | (0.123) | (0.116) | |
ER | −6.283 * | −4.259 | −0.540 |
(3.519) | (3.114) | (2.845) | |
UL | 1.930 * | 4.336 * | 4.237 |
(1.053) | (2.135) | (3.035) | |
ES | −0.016 | −3.144 ** | −5.194 *** |
(0.636) | (1.313) | (1.567) | |
SC | −0.160 | −0.408 * | −0.402 ** |
(0.138) | (0.207) | (0.159) | |
FE (year) | No | Yes | Yes |
FE (province) | No | No | Yes |
N | 510 | 510 | 510 |
R2 | 0.037 | 0.123 | 0.249 |
Variables | (1) | (2) | (3) |
---|---|---|---|
CE | LE | TE | |
DI | 0.088 ** | −0.039 ** | 0.172 *** |
(0.035) | (0.015) | (0.054) | |
Province | Yes | Yes | Yes |
Year | Yes | Yes | Yes |
Control Variables | Yes | Yes | Yes |
N | 510 | 510 | 510 |
R2 | 0.853 | 0.904 | 0.213 |
Variables | (1) | (2) | (3) | (4) |
---|---|---|---|---|
GTFP | GTFP | GTFP | GTFP | |
Strong IPP | Weak IPP | Advanced DIC | Outdated DIC | |
DI | 0.138 ** | 0.050 | 0.093 * | 0.025 |
(0.065) | (0.040) | (0.050) | (0.048) | |
Inter-group differences | 0.088 ** (p < 0.05) | 0.068 * (p < 0.1) | ||
Province | yes | yes | yes | yes |
Year | yes | yes | yes | yes |
Control Variables | yes | yes | yes | yes |
N | 219 | 225 | 251 | 253 |
R2 | 0.385 | 0.320 | 0.426 | 0.323 |
Variables | (1) | (2) | (3) | (4) |
---|---|---|---|---|
GTFP | GTFP | GTFP | GTFP | |
Eastern | Central | Western | Northeastern | |
DI | 0.046 * | 0.161 *** | 0.027 | 0.005 |
(0.021) | (0.047) | (0.043) | (0.087) | |
Province | yes | yes | yes | yes |
Year | yes | yes | yes | yes |
Control Variables | yes | yes | yes | yes |
N | 170 | 102 | 187 | 51 |
R2 | 0.277 | 0.272 | 0.554 | 0.622 |
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Rao, W.; Liu, P. Can Digital Innovation Improve Green Total Factor Productivity: Evidence from Digital Patents of China. Sustainability 2024, 16, 3891. https://doi.org/10.3390/su16103891
Rao W, Liu P. Can Digital Innovation Improve Green Total Factor Productivity: Evidence from Digital Patents of China. Sustainability. 2024; 16(10):3891. https://doi.org/10.3390/su16103891
Chicago/Turabian StyleRao, Wanying, and Pingfeng Liu. 2024. "Can Digital Innovation Improve Green Total Factor Productivity: Evidence from Digital Patents of China" Sustainability 16, no. 10: 3891. https://doi.org/10.3390/su16103891