Research on the Digital Transformation of Producer Services to Drive Manufacturing Technology Innovation
Abstract
:1. Introduction
2. Mechanism Analysis and Hypothesis Formulation
2.1. Digital Transformation of Producer Services, Industrial Productivity, and Manufacturing Technology Innovation
2.2. Digital Transformation of Producer Services, Knowledge Stock, and Manufacturing Technology Innovation
2.3. Digital Transformation of Producer Services, the Market Environment, and Manufacturing Technology Innovation
3. Research Design
3.1. Econometric Model Specification
3.2. Variable Construction
3.2.1. Manufacturing Technology Innovation (Inn)
3.2.2. Core Explanatory Variables (Dtp)
3.2.3. Mediating Variables
3.2.4. Control Variables
3.3. Data Sources
4. Analysis of Empirical Results
4.1. Spatial Econometric Model Specification Test
4.2. Base Regression Analysis
4.3. Test of Mediating Effects
4.4. Heterogeneity Test
4.5. Robustness Test
5. Conclusions
- (1)
- The digital transformation of producer services promotes manufacturing technology innovation and generates positive spatial spillover effects.
- (2)
- The digital transformation of producer services affects manufacturing technology innovation through three paths: industrial productivity, knowledge stock, and the market environment. Among these paths, the direct effect of industrial productivity is the largest, followed by the market environment and knowledge stock, while the spillover effect of knowledge stock is the largest, followed by market environment and industrial productivity.
- (3)
- There is regional heterogeneity in the mediating effect of the digital transformation of productive service industries. The largest direct effect of industrial productivity was observed in the eastern regions of China, while the largest spillover effect of the market environment was found in the central regions of China. In addition, an inhibitory effect of industrial productivity and the market environment was observed in the western regions of China; however, the mediating utility was statistically insignificant.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Primary Indicators | Comprehensive Weight | Secondary Indicators | Comprehensive Weight |
---|---|---|---|
Digital talent | 0.2516 | Number of computers per million people | 0.0889 |
Number of employees in information transmission, computer services, and software industries in urban units | 0.0888 | ||
Number of employees in software industry | 0.0739 | ||
Industry digital input | 0.2432 | Ratio of the number of R&D personnel to the total population in the software industry | 0.0805 |
Information transmission, computer services, and software industry fixed investment completed as a percentage | 0.0889 | ||
Ratio of investment in R&D to regional GDP in the software industry | 0.0738 | ||
Industry digital revenue | 0.2363 | Ratio of software product revenue to regional GDP in the software industry | 0.0770 |
E-commerce sales to regional GDP ratio | 0.0863 | ||
Technology market turnover to regional GDP | 0.0730 | ||
Digital infrastructure | 0.2689 | Number of websites per 100 enterprises | 0.0942 |
Number of software enterprises to total regional enterprises | 0.0834 | ||
Ratio of e-commerce enterprises to the total number of enterprises in the region | 0.0913 |
Variable | Name | Definition |
---|---|---|
Inn | Manufacturing technology innovation | Number of patents granted and new product sales revenue (logarithm) |
Dtp | Comprehensive index of the digital transformation of producer services | Construct an index system of producer services and adopt the entropy value method for measurement |
Sei | Intensity of R&D investment | Ratio of the sum of fiscal expenditures on science and technology and education to fiscal expenditures |
Gov | Government intervention | Ratio of fiscal expenditure to GDP |
Gdp | Level of economic development | Logarithm of GDP per capita |
Fdi | Foreign direct investment | Logarithm of actual foreign capital |
Pop | Population density | Ratio of regional population (year-end resident population) to the area of the administrative region |
Upg | Industrial structure | Ratio of the value added to the tertiary industry to the value added to the secondary industry |
Inv | Fixed investment level | Growth rate of fixed asset investment |
IP | Industrial productivity | Logarithm of the ratio of manufacturing value added to the number of people employed in the industry |
KS | Knowledge stock | Number of teachers in general higher education and university students in school |
ME | Market environment | Percentage of the number of private and individual employees |
Variable | Mean | Min | Max | Std |
---|---|---|---|---|
Inn (number of patents granted) | 3.6225 | 1.9590 | 4.8494 | 0.6029 |
Inn (sales revenue of new products) | 7.3818 | 4.9328 | 8.6465 | 0.6787 |
Dtp | 0.2310 | 0.0850 | 0.7938 | 0.1178 |
Sei | 0.1827 | 0.0313 | 0.2562 | 0.1058 |
Gov | 0.2670 | 0.1129 | 0.7534 | 0.1196 |
Gdp | 4.7198 | 0.1789 | 5.2154 | 4.3415 |
Fdi | 5.7793 | 0.6035 | 7.2772 | 4.2663 |
Pop | 0.0476 | 0.0709 | 0.3924 | 0.0008 |
Upg | 1.3968 | 0.7439 | 5.2440 | 0.6653 |
Inv | 0.0759 | 0.0989 | 0.2800 | −0.5660 |
IP | 91.7129 | 37.6467 | 221.4167 | 28.7620 |
KS | 94.9388 | 58.8083 | 262.5567 | 3.35 |
ME | 0.5208 | 0.0895 | 0.7489 | 0.2991 |
Moran’s I | (R)LM_Error | (R)LM_Lag | LR_SAR | LR_SEM | Wald_SAR | Wald_SEM |
---|---|---|---|---|---|---|
4.0616 *** | 7.5838 *** | 5.0333 ** | 59.4147 ** | 61.5799 *** | 60.1601 ** | 62.2804 *** |
Variable | (1) | (2) | (3) | (4) | (5) | (6) |
---|---|---|---|---|---|---|
Inn | OLS | RE | FE | SEM | SAR | SDM |
Dtp | 0.8868 *** (6.7531) | 0.7869 *** (4.02) | 0.6853 ** (2.07) | 0.1691 (1.1217) | 0.3761 ** (2.4470) | 0.1358 *** (4.9289) |
Sei | 3.0651 *** (4.0035) | 2.3292 *** (3.90) | 2.3302 ** (2.68) | 2.3575 *** (6.0002) | 2.4020 *** (5.1077) | 2.7606 *** (6.9177) |
Gov | −1.6452 *** (−5.6422) | 1.1264 *** (3.26) | 1.6248 ** (2.24) | 0.8795 *** (3.9187) | 0.6907 *** (2.5859) | 1.0142 *** (4.2793) |
Gdp | −0.9099 (−0.5643) | 1.5812 *** (8.64) | 1.7207 *** (7.17) | 0.9562 *** (4.4018) | 0.7756 *** (4.2959) | 1.1213 *** (4.4509) |
Fdi | 0.0657 *** (6.02734) | 0.0284 (0.66) | −0.0148 (−0.31) | −0.0203 (−0.7511) | −0.0003 (−0.0081) | 0.0042 (0.15507) |
Pop | 0.2038 (0.1259) | −0.2689 (−1.26) | −0.2806 (−0.99) | −0.6908 *** (−4.6728) | −0.3485 ** (−2.0302) | −0.6168 *** (−3.9789) |
Upg | −0.1094 *** (−3.0098)) | 0.0421 (0.81) | 0.0419 (0.53) | −0.0691 * (−1.6802) | −0.0206 (−0.4759) | −0.0697 * (−1.7251) |
Inv | −0.2925 * (−1.5796) | −0.1803 *** (−2.63) | −0.1924 ** (−2.46) | −0.0350 (−0.7406) | −0.0445 (−0.8286) | −0.0749 * (−1.6291) |
W*Dtp | 0.7425 * (1.8828) | |||||
W*Sei | −1.7734 * (−1.5395) | |||||
W*Gov | 1.8687 *** (3.4865) | |||||
W*Gdp | 1.4025 ** (2.1148) | |||||
W*Fdi | −0.0381 (−0.3979) | |||||
W*Pop | −1.6914 *** (−9.7685) | |||||
W*Upg | −0.1215 * (−1.7946) | |||||
W*Inv | −0.3848 *** (−2.6551) | |||||
1.5100 *** (4.3102) | 1.6539 *** (10.4017) | 1.4643 *** (4.0123) | ||||
R2 | 0.8352 | 0.7874 | 0.7564 | 0.9932 | 0.9928 | 0.9947 |
Effect | Direct Effect | Spillover Effect | |||||
---|---|---|---|---|---|---|---|
Variable | Dtp | M | Control Variables | Dtp | M | Control Variables | |
Model(1) | 0.1177 ** (2.0902) | YES | 0.6031 ** (2.0162) | YES | |||
Industrial productivity | Model(2) | 0.1531 * (1.7024) | YES | 0.3192 * (1.8315) | YES | ||
Model(3) | 0.0943 *** (6.6276) | 0.1205 ** (2.0437) | YES | 0.5048 * (1.7765) | 0.2352 *** (2.9641) | YES | |
Knowledge stock | Model(2) | 0.0744 ** (2.0398) | YES | 0.1882 *** (3.3140) | YES | ||
Model(3) | 0.0784 *** (3.5271) | 0.0139 * (2.0139) | YES | 0.4986 * (1.7397) | 1.1118 *** (2.8289) | YES | |
Market environment | Model(2) | 0.0402 ** (2.3656) | YES | 0.3726 * (1.9342) | YES | ||
Model(3) | 0.0995 *** (3.6711) | 0.1127 *** (2.8142) | YES | 0.4901 * (1.7987) | 0.3030 ** (2.1285) | YES |
Effect | Direct Effect | Spillover Effect | |||||
---|---|---|---|---|---|---|---|
Variable | Dtp | M | Control Variable | Dtp | M | Control Variable | |
Industrial productivity | East China | 0.2639 *** (2.9706) | 0.7303 ** (2.7677) | YES | 0.1299 * (1.8527) | 0.0204 ** (2.6533) | YES |
Central China | 0.2417 ** (2.7994) | 0.4712 ** (2.3941) | YES | 0.1701 (1.2065) | 0.0576 * (1.7010) | YES | |
West China | 0.1433 * (1.9879) | −0.2549 (−1.1079) | YES | −0.1510 (−0.9694) | −0.0858 (−1.6329) | YES | |
Knowledge stock | East China | 0.6788 ** (2.5541) | 0.1409 ** (2.1724) | YES | 0.0917 * (2.0014) | 0.2729 ** (2.9344) | YES |
Central China | 0.4953 *** (3.6305) | 0.0948 * (1.9078) | YES | 0.0385 (0.9535) | 0.2539 * (1.9476) | YES | |
West China | 0.7099 *** (3.3549) | 0.2347 *** (3.3611) | YES | 0.5787 *** (3.1738) | 0.1958 *** (3.2551) | YES | |
Market environment | East China | 0.2811 ** (2.9778) | 0.7158 * (1.8459) | YES | 0.1684 ** (2.1798) | 0.2177 * (2.0660) | YES |
Central China | 0.9982 ** (2.5755) | 0.3562 ** (2.7063) | YES | 0.3515 ** (2.6359) | 0.4708 * (1.8768) | YES | |
West China | 0.2529 (0.7519) | −0.1099 ** (−2.2673) | YES | 0.6183 ** (2.4812) | −0.1795 *** (−4.2937) | YES |
Effect | Direct Effect | Spillover Effect | |||||
---|---|---|---|---|---|---|---|
Variable | Dtp | M | Control Variable | Dtp | M | Control Variable | |
Industrial productivity | Replacing the spatial weight matrix | 0.4042 *** (2.5769) | 0.4377 * (1.7363) | YES | 0.2019 *** (3.2536) | 0.5931 ** (2.5613) | YES |
Replacing explained variable | 0.1185 ** (2.7916) | 0.1184 (1.0061) | YES | 0.6047 ** (2.0504) | 0.2444 ** (2.0589) | YES | |
Winsorizing each tail | 0.1861 *** (2.7761) | 0.4957 ** (2.6163) | YES | 0.2471 *** (2.5054) | 0.9238 ** (2.1878) | YES | |
Knowledge stock | Replacing explained variable Winsorizing each tail | 0.0887 *** (6.8954) | 0.0049 *** (3.7902) | YES | 0.4876 ** (2.5061) | −0.1535 ** (−2.5099) | YES |
Replacing explained variable Winsorizing each tail | 0.1555 *** (3.7792) | 0.1098 *** (5.2709) | YES | 0.8278 *** (3.1547) | 0.6934 * (1.9896) | YES | |
Replacing explained variable Winsorizing each tail | 0.1448 *** (2.8462) | 0.0784 *** (4.5261) | YES | 0.6629 * (2.0725) | −0.1679 * (−2.0766) | YES | |
Market environment | Replacing explained variable Winsorizing each tail | 0.1048 ** (3.5421) | 0.1079 *** (3.7786) | YES | 0.4849 * (1.9856) | −0.3025 ** (−2.4552) | YES |
Replacing explained variable Winsorizing each tail | 0.1536 ** (2.1051) | 0.0513 *** (5.9715) | YES | 0.7774 * (1.8473) | −0.2041 *** (−4.2536) | YES | |
Replacing explained variable Winsorizing each tail | 0.1187 ** (2.1728) | 0.0667 * (1.8867) | YES | 0.6291 * (2.0867) | 0.4299 *** (3.0989) | YES |
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Lai, Z.; Wang, B.; He, X. Research on the Digital Transformation of Producer Services to Drive Manufacturing Technology Innovation. Sustainability 2023, 15, 3784. https://doi.org/10.3390/su15043784
Lai Z, Wang B, He X. Research on the Digital Transformation of Producer Services to Drive Manufacturing Technology Innovation. Sustainability. 2023; 15(4):3784. https://doi.org/10.3390/su15043784
Chicago/Turabian StyleLai, Zhihua, Bifeng Wang, and Xiang He. 2023. "Research on the Digital Transformation of Producer Services to Drive Manufacturing Technology Innovation" Sustainability 15, no. 4: 3784. https://doi.org/10.3390/su15043784
APA StyleLai, Z., Wang, B., & He, X. (2023). Research on the Digital Transformation of Producer Services to Drive Manufacturing Technology Innovation. Sustainability, 15(4), 3784. https://doi.org/10.3390/su15043784