Assessment of the Drivers and Effects of International Science and Technology Cooperation in Xinjiang in the Context of the Belt and Road Initiative
Abstract
:1. Introduction
2. Materials and Methods
2.1. Entropy-TOPSIS Model
2.2. STIRPAT Model Construction
3. Results
3.1. Analysis of the International Science and Technology Influencing Factors in Xinjiang Based on the Entropy Power-TOPSIS Model
3.1.1. Determination of the Index Weights
3.1.2. Weighting Coefficient of the Driving Factors in Different Dimensions
3.1.3. Combined Score of The Influencing Factors
3.2. Analysis of the Driving Effectiveness of International Science and Technology Cooperation Based on the STIRPAT Model
3.2.1. Model Variable Selection and Data Description
3.2.2. Ridge Regression and Model Fitting
3.2.3. Comparative Analysis of the Driving Effect over the Years
4. Discussion
5. Conclusions and Suggestions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Drive Dimension | Influencing Factors | Factor Number |
---|---|---|
Technology input | R&D spending as a percentage of GDP (%) | A1 |
Total scientific research funding (USD) | A2 | |
Research funding per capita (USD) | A3 | |
Total number of R&D staff (people) | A4 | |
Total R&D personnel per 1000 workforce (person years) | A5 | |
Educational conditions | Years of compulsory education (years) | B1 |
Total government spending on education as a percentage of GDP (%) | B2 | |
Per-capita education expenditure (USD) | B3 | |
Total government spending on education as a percentage of government spending (%) | B4 | |
Higher education enrollment rate (%) | B5 | |
Economic environment | GDP (USD) | C1 |
GDP per capita (USD) | C2 | |
Total savings (USD) | C3 | |
Total foreign direct investment (USD) | C4 | |
Economic growth rate (%) | C5 | |
Technology level | Total High-Tech Exports (USD) | D1 |
Medium and high technology exports as a percentage of manufactured exports (%) | D2 | |
Number of patent applications (items) | D3 | |
Scientific and technical journal articles (articles) | D4 | |
Medium and high technology value added as a percentage of manufacturing value added (%) | D5 | |
Trade level | Trade as a percentage of GDP (%) | F1 |
Communications and computer exports as a percentage of service exports (%) | F2 | |
Exports of goods and services as a percentage of total (USD) | F3 | |
ICT service exports (USD) | F4 | |
Net terms-of-trade index (dimensionless) | F5 | |
City nature | Land area (square kilometers) | G1 |
Total urban population (people) | G2 | |
Urbanization rate (%) | G3 | |
Urban population growth (%) | G4 | |
Urban population density (persons/km2) | G5 |
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Wang, F.; Dong, Z.; Dong, J. Assessment of the Drivers and Effects of International Science and Technology Cooperation in Xinjiang in the Context of the Belt and Road Initiative. Sustainability 2023, 15, 1497. https://doi.org/10.3390/su15021497
Wang F, Dong Z, Dong J. Assessment of the Drivers and Effects of International Science and Technology Cooperation in Xinjiang in the Context of the Belt and Road Initiative. Sustainability. 2023; 15(2):1497. https://doi.org/10.3390/su15021497
Chicago/Turabian StyleWang, Fei, Zhi Dong, and Jichang Dong. 2023. "Assessment of the Drivers and Effects of International Science and Technology Cooperation in Xinjiang in the Context of the Belt and Road Initiative" Sustainability 15, no. 2: 1497. https://doi.org/10.3390/su15021497