Spatial Correlation Network Structure of and Factors Influencing Technological Progress in Citrus-Producing Regions in China
Abstract
:1. Introduction
2. Literature Review
3. Materials and Methods
3.1. Materials
3.2. Methods
3.2.1. Transcendental Logarithmic Cost Function
3.2.2. Modified Gravity Model
3.2.3. Social Network Analysis
- (1)
- Overall network correlation structure analysis: In this paper, we used four indicators, namely network density, network correlation degree, network level, and network efficiency, as follows:
- (2)
- Individual network structure characterization: This paper adopted three indicators, namely point degree centrality, proximity centrality, and intermediary centrality, to conduct centrality analysis and reveal the role of each citrus-producing region in the network, as follows:
- (3)
- Quadratic assignment procedure (QAP) model: The QAP model is a non-parametric method to explore the relationship between matrices by comparing different matrix data with permutation [34], which usually includes two stages: QAP correlation analysis and QAP regression analysis. This method does not need to assume that the explanatory variables are independent of each other, which can effectively solve the endogeneity problem of relational data, and the regression results are more stable [36]. QAP correlation analysis compares the correlation between two matrices by looking at the matrices as long vectors containing n(n − 1) numbers and then similarly comparing the correlations between the two variables and calculating the correlation coefficients of the two vectors [37,38]. QAP regression analysis is the study of regression relationships between multiple matrices and one matrix by performing a regular regression analysis on the long vector elements corresponding to the independent and dependent variable matrices and then performing a regression on the rows and columns of the dependent variable. The variables are replaced, the regression is repeated, all coefficient values are saved, and the value of R2 is determined [37]. The QAP model is constructed as follows:
4. Characterization of Changes in Citrus Production Technology Progress
5. Characterization of the Spatial Correlation Network Structure
5.1. Characteristics of the Overall Network Structure
5.2. Characteristics of the Individual Network Structure
6. Analysis of Factors Influencing the Spatial Correlation Network
6.1. QAP Correlation Analysis
6.2. QAP Regression Analysis
7. Conclusions and Policy Implications
7.1. Conclusions
7.2. Policy Implications
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Variable | Observed Value | Unit | Minimum Value | Maximum Value | Average Value | Standard Deviation | |
---|---|---|---|---|---|---|---|
Output | Output of main products | 224 | kg | 498.56 | 4633.70 | 1834.93 | 690.56 |
Input | Labor prices | 224 | CNY/workday | 17.46 | 85.13 | 43.12 | 15.38 |
Land prices | 224 | CNY/ha | 387.50 | 6642.20 | 1965.78 | 69.18 | |
Fertilizer prices | 224 | CNY/kg | 3.04 | 43.21 | 5.66 | 3.06 | |
Pesticide prices | 224 | CNY/kg | 16.37 | 1441.29 | 273.51 | 238.37 | |
Other prices | 224 | — | 100.00 | 184.97 | 147.07 | 22.48 |
Influencing Factors | Variable Code | Calculation Methods and Explanations | Data Sources |
---|---|---|---|
Industrial structure | str | Value added of primary sector/GDP | Database of the National Bureau of Statistics |
Informatization level | inf | Number of internet broadband access ports | Database of the National Bureau of Statistics |
Education level | edu | Educational level of the rural labor force | China Population and Employment Statistical Yearbook |
Economic development level | eco | GDP per capita | Database of the National Bureau of Statistics |
Innovation support | inn | Science and technology expenditure/Total fiscal expenditure | Database of the National Bureau of Statistics |
Financial support | fin | Expenditure on agriculture, forestry, and water affairs/Total fiscal expenditure | Database of the National Bureau of Statistics |
Agricultural disaster rate | dis | Area damaged/Area affected | Database of the National Bureau of Statistics |
Classification | Areas | 2006 | 2009 | 2012 | 2015 | 2018 | 2021 | Average Value |
---|---|---|---|---|---|---|---|---|
Mandarin | Guangdong | 12.57% | 14.76% | 12.77% | 16.75% | 15.26% | 21.96% | 15.99% |
Fujian | 3.62% | 6.85% | 10.58% | 20.52% | 17.06% | 13.54% | 12.66% | |
Guangxi | 10.80% | 8.62% | 7.88% | 15.51% | 11.84% | 8.45% | 10.69% | |
Chongqing | 12.59% | 8.50% | 7.36% | 10.10% | 10.57% | 6.76% | 9.55% | |
Hubei | 18.72% | 8.97% | 6.64% | 4.87% | 6.48% | 8.98% | 8.15% | |
Jiangxi | 17.08% | 3.97% | 2.17% | 2.85% | 3.09% | 3.39% | 6.46% | |
Hunan | 10.33% | 3.57% | 1.64% | 6.26% | 3.03% | 3.82% | 4.20% | |
Tangerine | Hunan | 29.61% | 20.98% | 16.79% | 6.78% | 14.18% | 8.32% | 15.22% |
Zhejiang | 13.35% | 14.60% | 4.84% | 8.62% | 4.31% | 6.51% | 9.90% | |
Guangdong | 10.42% | 8.06% | 4.45% | 7.28% | 11.21% | 6.57% | 9.05% | |
Jiangxi | 14.77% | 9.09% | 5.14% | 12.94% | 6.99% | 5.56% | 8.59% | |
Fujian | 6.59% | 5.13% | 3.16% | 8.09% | 5.52% | 0.61% | 6.18% | |
Chongqing | 3.34% | 1.68% | 0.97% | 3.79% | 6.80% | 7.42% | 4.25% | |
Hubei | 6.61% | 6.72% | 5.38% | 4.00% | −0.28% | 0.49% | 3.66% |
Classification | Areas | Point Degree Centrality | Proximity Centrality | Intermediary Centrality | ||
---|---|---|---|---|---|---|
Degree of Point-Out | Degree of Point-Entry | Degree of Centrality | ||||
Mandarin | Guangdong | 2 | 5 | 83.333 | 85.714 | 25.556 |
Guangxi | 1 | 2 | 33.333 | 60 | 1.333 | |
Jiangxi | 3 | 2 | 50 | 66.667 | 1.333 | |
Hubei | 4 | 2 | 66.667 | 75 | 3.556 | |
Hunan | 3 | 3 | 50 | 66.667 | 1.333 | |
Fujian | 3 | 4 | 83.333 | 85.714 | 25.556 | |
Chongqing | 2 | 0 | 33.333 | 60 | 1.333 | |
Tangerine | Guangdong | 2 | 2 | 50 | 60 | 8.889 |
Jiangxi | 2 | 2 | 50 | 66.667 | 7.778 | |
Zhejiang | 1 | 5 | 83.333 | 85.714 | 48.889 | |
Hubei | 1 | 0 | 16.667 | 50 | 0 | |
Hunan | 1 | 3 | 50 | 66.667 | 7.778 | |
Fujian | 3 | 0 | 50 | 66.667 | 2.222 | |
Chongqing | 2 | 0 | 33.333 | 60 | 4.444 |
Influencing Factors | QAP Correlation Analysis | QAP Regression Analysis | ||
---|---|---|---|---|
Correlation Coefficient | p-Value of Significance | Coefficient of Regression | p-Value of Significance | |
Industrial structure | 0.239 | 0.184 | 0.365 | 0.179 |
Informatization level | 0.467 * | 0.085 | 0.614 * | 0.078 |
Educational level | −0.460 *** | 0.002 | −0.877 *** | 0.004 |
Economic development | 0.932 *** | 0.000 | 2.012 *** | 0.001 |
Innovation support | 0.612 ** | 0.019 | 1.137 ** | 0.024 |
Financial support | 0.386 * | 0.082 | 0.865 * | 0.081 |
Agricultural disaster rate | 0.127 | 0.333 | 0.321 | 0.323 |
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Gu, Y.; Qi, C.; He, Y.; Liu, F.; Luo, B. Spatial Correlation Network Structure of and Factors Influencing Technological Progress in Citrus-Producing Regions in China. Agriculture 2023, 13, 2118. https://doi.org/10.3390/agriculture13112118
Gu Y, Qi C, He Y, Liu F, Luo B. Spatial Correlation Network Structure of and Factors Influencing Technological Progress in Citrus-Producing Regions in China. Agriculture. 2023; 13(11):2118. https://doi.org/10.3390/agriculture13112118
Chicago/Turabian StyleGu, Yumeng, Chunjie Qi, Yu He, Fuxing Liu, and Beige Luo. 2023. "Spatial Correlation Network Structure of and Factors Influencing Technological Progress in Citrus-Producing Regions in China" Agriculture 13, no. 11: 2118. https://doi.org/10.3390/agriculture13112118
APA StyleGu, Y., Qi, C., He, Y., Liu, F., & Luo, B. (2023). Spatial Correlation Network Structure of and Factors Influencing Technological Progress in Citrus-Producing Regions in China. Agriculture, 13(11), 2118. https://doi.org/10.3390/agriculture13112118