The New Quality Productive Force, Science and Technology Innovation, and Optimization of Industrial Structure
Abstract
:1. Introduction
2. Literature Review
3. Theoretical Analysis and Research Hypothesis
4. Modeling and Data Sources
4.1. Model Setup
4.2. Variable Selection
4.2.1. Explained Variable: Industrial Structural Optimization (ind)
4.2.2. Core Explanatory Variable: New Quality Productive Force (NQPF)
4.2.3. Mediating Variable: Science, Technology, and Innovation (Patent)
4.2.4. Control Variable
4.3. Data Sources and Descriptive Statistics
5. Empirical Results and Analysis
5.1. Analysis of Benchmark Regression Results
5.2. Heterogeneity Test
5.3. Analysis of Transmission Mechanisms
5.4. Robustness Analysis
5.4.1. Endogeneity Test
5.4.2. Robustness Check
5.5. Results Analysis
6. Discussion
7. Conclusions and Policy Recommendations
- (1)
- For the central region with significant late-mover advantages, it is recommended to prioritize the implementation of an industrial integration development strategy. Specifically, the “new quality productive force–industrial innovation” pilot zones could be established in cities with strong STI foundations. This would involve creating industrial collaborative innovation centers to facilitate targeted R&D cooperation between leading enterprises and research institutions. Concurrently, intelligent transformation incentive policies should be implemented, and regional industrial internet platforms should be developed to enable manufacturing resource sharing. To optimize the allocation of innovation factors, a “dual-appointment” system for scientific and technological talent could be introduced, allowing university researchers to hold concurrent positions in innovative enterprises, along with establishing specialized technology transfer funds focusing particularly on pilot-scale testing.
- (2)
- For the eastern region with robust innovation foundations but facing diminishing marginal returns, efforts should concentrate on transforming innovation paradigms. On the one hand, there should be a shift from follow-up innovation to original innovation, with major scientific and technological infrastructure deployed in cutting-edge fields, such as artificial intelligence and quantum information. On the other hand, the research evaluation system should be reformed to establish long-term assessment mechanisms for major original achievements. Simultaneously, the innovation ecosystem needs optimization, including streamlining approval processes for new technologies and products, establishing “regulatory sandbox” mechanisms, improving venture capital systems, and developing international science and technology cooperation parks to attract world-class R&D institutions.
- (3)
- For the western region with relatively weak innovation foundations, the primary task is to strengthen basic innovation capacity. It is recommended to implement a “digital infrastructure improvement” special project, prioritizing the construction of 5G private networks and edge computing nodes in industrial parks. Through “science and technology commissioner” initiatives, talent from eastern regions could be organized to provide on-site services at western enterprises. Meanwhile, leveraging regional resource advantages, emphasis should be placed on cultivating specialized innovation clusters, such as establishing new energy technology application demonstration bases based on clean energy advantages and developing comprehensive innovation systems for specialized agricultural deep processing.
- (4)
- To promote regional coordinated development, it is suggested to establish multi-level cooperation mechanisms. These include forming a NQPF Development Alliance to regularly organize technology matching activities, implementing a cross-regional universal redemption system for science and technology innovation vouchers, building a national technology trading market to enhance technology transfer efficiency, and improving benefit sharing mechanisms for cross-regional industrial transfers. These measures not only account for the differentiated characteristics of each region but also focus on key aspects of NQPF development, effectively promoting the virtuous cycle of “NQPF-STI-industrial upgrading”.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
NQPF (nqpf) | new quality productive force |
ISO | industrial structural optimization |
NBS | the National Bureau of Statistics of China |
STI | scientific and technological innovation |
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Target Level | Standardized Layer | Indicator Layer | Note |
---|---|---|---|
New mass productivity | Innovation level | New product development capability | + |
Technological innovation capacity | + | ||
Funding for research | + | ||
Research staff inputs | + | ||
Quality level | Percentage of people with advanced degrees | + | |
Number of employees in high-tech industries | + | ||
(Generated) electrical energy | + | ||
Product quality qualification rate | + | ||
Arithmetic level | Telecommunications communications capacity | + | |
Fiber optic line length | + | ||
Internet penetration | + | ||
Technology market size | + | ||
Green level | Percentage of expenditure on environmental protection | + | |
Percentage of wastewater | − | ||
Percentage of exhaust gas | − | ||
Forest area | + |
Variant | Number of Observations | Average Value | (Statistics) Standard Deviation | Minimum Value | Maximum Value |
---|---|---|---|---|---|
ind | 330 | 2.407 | 0.121 | 2.132 | 2.835 |
nqpf | 330 | 0.478 | 0.208 | 0.035 | 0.884 |
patent | 330 | 10.390 | 1.419 | 6.219 | 13.680 |
open | 330 | 0.283 | 0.282 | 0.007 | 1.476 |
gov | 330 | 0.260 | 0.111 | 0.105 | 0.758 |
secur | 330 | 0.349 | 0.136 | 0.0295 | 0.575 |
infra | 330 | 0.304 | 0.127 | 0.0697 | 0.712 |
Variant | ind | nqpf | patent | open | gov | secur | infra |
---|---|---|---|---|---|---|---|
ind | 1 | ||||||
nqpf | 0.3059 *** | 1 | |||||
patent | 0.4409 *** | 0.3847 *** | 1 | ||||
open | 0.5060 *** | −0.0877 | 0.4934 *** | 1 | |||
gov | −0.2155 *** | −0.0508 | −0.7992 *** | −0.4384 *** | 1 | ||
secur | −0.5697 *** | 0.0452 | −0.1351 ** | −0.6698 *** | 0.0777 | 1 | |
infra | 0.3310 *** | 0.4137 *** | 0.3615 *** | 0.3512 *** | −0.2228 *** | −0.4888 *** | 1 |
Variable | VIF | 1/VIF |
---|---|---|
nqpf | 5.11 | 0.195703 |
patent | 3.62 | - |
open | 3.04 | 0.329348 |
gov | 2.59 | 0.385952 |
secur | 2.05 | 0.486752 |
infra | 1.84 | 0.543960 |
Mean VIF | 3.04 |
Variant | Model (1) | Model (2) |
---|---|---|
nqpf | 2.628 *** (7.55) | 2.532 *** (12.96) |
open | 1.577 *** (8.01) | |
gov | −8.301 *** (−21.90) | |
secur | 1.174 *** (2.88) | |
infra | 0.094 (0.25) | |
constant term (math.) | 9.130 *** (50.37) | 10.450 *** (35.38) |
sample size | 330 | 330 |
0.148 | 0.804 | |
F-value | 56.97 | 266.31 |
Variant | Eastern Part | Central Region | Western Region |
---|---|---|---|
Model (1) | Model (2) | Model (3) | |
npqf | 0.135 *** (3.68) | 0.183 *** (7.53) | 0.076 * (1.86) |
open | −0.170 *** (−5.28) | −0.609 *** (−5.12) | 0.169 *** (2.67) |
gov | −0.473 *** (−3.85) | 0.545 *** (4.52) | 0.120 ** (2.37) |
secur | −1.108 *** (−16.24) | 0.242 *** (3.02) | 0.279 *** (3.02) |
infra | −0.091 (−1.57) | 0.241 *** (3.35) | 0.112 (1.30) |
constant term (math.) | 2.932 *** (49.49) | 2.073 *** (35.43) | 2.123 *** (41.04) |
sample size | 110 | 66 | 154 |
0.783 | 0.775 | 0.212 | |
(be) worth | 75.21 | 41.25 | 7.94 |
Variant | ind | patent | ind |
---|---|---|---|
Model (1) | Model (2) | Model (3) | |
npqf | 0.250 *** (9.40) | 2.532 *** (12.96) | 0.151 *** (4.79) |
patent | 0.039 *** (5.42) | ||
open | 0.087 *** (3.25) | 1.577 *** (8.01) | 0.025 (0.89) |
gov | −0.118 ** (−2.29) | −8.301 *** (−21.90) | 0.208 *** (2.67) |
secur | −0.486 *** (−8.76) | 1.174 *** (2.88) | −0.532 *** (−9.88) |
infra | −0.200 *** (−3.94) | 0.094 (0.25) | −0.204 *** (−4.18) |
constant term (math.) | 2.524 *** (62.68) | 10.450 *** (35.38) | 2.113 *** (24.81) |
sample size | 330 | 330 | 330 |
0.500 | 0.804 | 0.542 | |
F-value | 64.78 | 266.31 | 63.60 |
Variant | Phase I | Phase II | ||
---|---|---|---|---|
Model (1) | Model (2) | Model (3) | Model (4) | |
xpqf | ind | patent | ind | |
xqpfv | 0.233 *** (4.61) | |||
xpqf | 11.265 *** (8.06) | 1.658 *** (17.85) | 1.479 *** (14.96) | |
patent | 0.016 *** (4.45) | |||
control variable | containment | containment | containment | containment |
constant term (math.) | −0.430 ** (−2.18) | 5.005 *** (7.46) | 1.615 *** (36.18) | 1.535 *** (32.71) |
sample size | 330 | 330 | 330 | 330 |
0.061 | 0.165 | 0.493 | 0.522 | |
F-value | 21.23 | 64,96 | 318.57 | 178.32 |
Variant | ind | patent | ind |
---|---|---|---|
Model (1) | Model (2) | Model (3) | |
npqf | 0.178 *** (4.80) | 2.216 *** (8.48) | 0.108 *** (2.61) |
patent | 0.032 *** (3.49) | ||
open | 0.091 ** (2.58) | 1.874 *** (7.50) | 0.032 (0.84) |
gov | −0.152 ** (−2.57) | −7.976 *** (−19.10) | 0.099 (1.08) |
secur | −0.505 *** (−8.13) | 1.018 ** (2.32) | −0.537 *** (−8.75) |
infra | −0.238 *** (−4.45) | −0.323 (−0.85) | −0.228 *** (−4.36) |
constant term (math.) | 2.600 *** (55.07) | 10.715 *** (32.10) | 2.262 *** (21.10) |
sample size | 240 | 240 | 240 |
0.510 | 0.817 | 0.534 | |
F-value | 48.72 | 209.45 | 44.56 |
Variant | indt | patent | indt |
---|---|---|---|
Model (1) | Model (2) | Model (3) | |
npqf | 1.303 *** (7.07) | 2.532 *** (12.96) | 1.058 *** (4.67) |
patent | 0.097 * (1.85) | ||
open | −0.807 *** (−4.34) | 1.577 *** (8.01) | −0.960 *** (−4.74) |
gov | −0.515 (−1.44) | −8.301 *** (−21.90) | 0.287 (0.51) |
secur | −4.480 *** (−11.66) | 1.174 *** (2.88) | −4.594 *** (−11.84) |
infra | −1.490 *** (−4.23) | 0.094 (0.25) | −1.499 *** (−4.27) |
constant term (math.) | 3.147 *** (11.28) | 10.450 *** (35.38) | 2.137 *** (3.49) |
sample size | 330 | 330 | 330 |
0.376 | 0.804 | 0.383 | |
F-value | 39.11 | 266.31 | 33.41 |
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Dai, D.; Zheng, Y. The New Quality Productive Force, Science and Technology Innovation, and Optimization of Industrial Structure. Sustainability 2025, 17, 4439. https://doi.org/10.3390/su17104439
Dai D, Zheng Y. The New Quality Productive Force, Science and Technology Innovation, and Optimization of Industrial Structure. Sustainability. 2025; 17(10):4439. https://doi.org/10.3390/su17104439
Chicago/Turabian StyleDai, Debao, and Yu Zheng. 2025. "The New Quality Productive Force, Science and Technology Innovation, and Optimization of Industrial Structure" Sustainability 17, no. 10: 4439. https://doi.org/10.3390/su17104439
APA StyleDai, D., & Zheng, Y. (2025). The New Quality Productive Force, Science and Technology Innovation, and Optimization of Industrial Structure. Sustainability, 17(10), 4439. https://doi.org/10.3390/su17104439