Digital Economy and Industrial Structure Transformation: Mechanisms for High-Quality Development in China’s Agriculture and Rural Areas
Abstract
:1. Introduction
2. The Data
2.1. Data Sources and Definitions
- (1)
- Explained variables: Drawing upon the new development concept, this study constructs a comprehensive evaluation index system for HQARD from five dimensions: innovation, coordination, green development, openness, and sharing (Table 1). The HQARD index is calculated using the entropy method, as proposed by Wang and Kuang [30], to quantitatively assess the level of high-quality agricultural and rural development in different regions.
- (2)
- Explanatory variables: This study constructs a comprehensive digital economy index incorporating internet penetration rate, internet-related employment, internet-related output, and the number of mobile internet users, and the result is shown in Table 2 [33]. Internet penetration rate and the number of mobile internet users indicate the prevalence of digital infrastructure and the adoption of digital technologies by residents, which form the foundation of the digital economy. The proportion of internet-related employment and internet-related output directly measure the scale of the digital industry from the perspectives of employment and output, reflecting the direct contribution of the digital economy to economic growth. Innovatively, this research integrates the digital inclusive finance index into the existing framework, acknowledging digital finance as a critical component of the digital economy. The inclusive finance index measures the extent to which digital technologies have democratized access to financial services, providing a crucial gauge of the digital economy’s inclusiveness. The incorporation of the inclusive finance index highlights the inclusive characteristics of the digital economy, embodying the concept of shared benefits from digital economy development, which significantly supplements and innovates the existing digital economy measurement framework. To calculate the digital economy development level, this study employs an entropy weight method.
- (3)
- Mediating variables: Industrial structure upgrading is measured by ISI and ISU. Industrial structure adjustment refers to the reallocation of factors of production among the sectors of the economy and different industries and the change in the proportion of output value of the sectors of the economy and different industries [34]. A higher industrial structure refers to the process of evolution of industrial structure from lower level to higher level and the increase in labor productivity; higher industrial structure is the process of transferring primary industry to tertiary industry.
- A.
- Industrial Structure Intensification (ISI)
- B.
- Industrial Structure Upgrading (ISU)
- (4)
- Control variables: In this paper, urbanization rate (UR), government financial support level (GFSL), and regional openness level (ROL) are used as control variables for the study. Among them, GFSL is expressed as the proportion of public budget expenditure to GDP; UR is expressed as the proportion of the number of urban resident population to the total population; and the ROL is expressed as the proportion of the amount of actual utilization of foreign direct investment to GDP.
2.2. Comprehensive Indicator Measurement—Entropy Value Approach
3. Methodology
3.1. Mediation Model Construction
3.2. Threshold Model Construction
4. Empirical Results
4.1. Descriptive Statistics and Correlation Analysis
4.2. Benchmark Regression
4.3. Analysis of the Mediation Effect
4.4. Further: Bootstrap Mediation Effect Test
4.5. Test of the Threshold Effect
5. Conclusions and Policy Recommendations
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Dimension Layer | Evaluation Indicators | Specific Indicators | Causality | ||
---|---|---|---|---|---|
blaze new trails developmental | Innovative foundations | Level of agricultural mechanization | Chief Motivator for Agricultural Mechanization | + | |
Percentage of financial investment in agriculture | Agriculture, forestry, and water fiscal expenditure/financial expenditure | + | |||
Number of agricultural and economic institutions at the commune level | Data-direct (in LAN emulation) | + | |||
Number of professional and technical staff in agricultural and economic institutions | Data-direct (in LAN emulation) | + | |||
Benefits of innovation | Increased number | labor productivity | Gross output value of agriculture, forestry, animal husbandry, and fishery/number of employees in primary industry | + | |
Land productivity | Gross agricultural output/area sown under crops | + | |||
Quality Enhancement | Number of green food enterprises | Number of green food units certified in the year | + | ||
Number of green food products | Number of green food products certified in the year | + | |||
trade-off developmental | Industrial coordination | Agricultural industry structural adjustment index | 1—(Agricultural output/gross value of agriculture, forestry, livestock and fisheries) | + | |
Urban and rural coordination | Binary comparison coefficient | Comparative labor productivity in primary industry/Comparative labor productivity in secondary and tertiary industries | + | ||
greener developmental | Depletion of resources | Water consumption of 10,000 yuan of agricultural value added | Water use in agriculture/value added in agriculture | - | |
Intermediate consumption of agriculture, forestry, livestock and fisheries per unit of output value | Share of intermediate consumption in agriculture, forestry, livestock and fisheries in the value of production | - | |||
Per capita electricity consumption of primary sector employees | Rural electricity consumption/primary sector employees | - | |||
Energy consumption per unit of value added of agriculture, forestry, animal husbandry and fisheries | Energy consumption in agriculture, forestry and fisheries/value added in agriculture, forestry and fisheries | - | |||
Environmental pollution | Strength of agricultural plastic films | Agricultural plastic film use/cultivated land area | - | ||
Fertilizer application per unit area | Fertilizer application/cultivated land area | - | |||
Pesticide use per unit area | Pesticide use/cropland area | - | |||
Environmental protection | forest cover | Data-direct (in LAN emulation) | + | ||
liberalization developmental | Resource optimization | Domestic resources | Rural land transfer rate | Share of family-contracted land transfers in agricultural land | + |
Percentage of investment in fixed assets in agriculture | Investment in fixed assets in agriculture, forestry, animal husbandry and fishery/total fixed asset investment | + | |||
External resources | Share of FDI in agricultural investment | FDI in agriculture/total investment in agriculture | + | ||
Market Optimization | Domestic market | Number of agricultural markets | data-direct (in LAN emulation) | + | |
Agricultural market turnover as a percentage | Agricultural market turnover/value added in primary sector | + | |||
Foreign market | Dependence on exports and imports of agricultural products | China’s agricultural import and export trade/added value of primary industry | + | ||
enjoy together developmental | Rising living standards | Income level of the rural population | Per capita net income of rural residents | + | |
Overall level of affluence of the rural population | Rural Engel coefficient | - | |||
Enrichment of the life of the rural population | Per capita expenditure on education, culture and recreation/per capita consumption expenditure | + | |||
Value placed on health care by the rural population | Per capita health care expenditure/per capita consumption expenditure | + | |||
Benefit sharing | Ratio of income of urban and rural residents | Urban disposable income/rural disposable income | - | ||
Ratio of urban to rural consumption levels | Per capita consumption expenditure of urban residents/per capita consumption expenditure of rural residents | - | |||
Gap in income distribution among rural residents | Rural Gini coefficient | - |
Level 1 Indicators | Level 1 Indicators | Indicator Measurements | Indicator Properties |
---|---|---|---|
Digital economy Composite development index | Internet penetration | Internet users per 100 population | + |
Internet-related practitioners | Percentage of employees in computer services and software | + | |
Internet-related outputs | Total telecommunication services per capita | + | |
Number of mobile Internet users | Cell phone subscribers per 100 population | + | |
Financial inclusion index | PKU-DFIIC | + |
(1) | (2) | (3) | (4) | (5) | |
---|---|---|---|---|---|
VARIABLES | N | mean | sd | min | max |
HQARD | 310 | 0.255 | 0.080 | 0.112 | 0.625 |
DE | 310 | 0.123 | 0.095 | 0.017 | 0.552 |
ISI | 310 | 2.404 | 0.121 | 2.132 | 2.834 |
ISU | 310 | 1.374 | 0.738 | 0.611 | 5.244 |
UR | 310 | 0.602 | 0.118 | 0.363 | 0.896 |
GFSL | 310 | 0.263 | 0.113 | 0.105 | 0.758 |
ROL | 310 | 0.293 | 0.303 | 0.008 | 1.532 |
HQARD | DE | ISI | ISU | UR | GFSL | ROL | |
---|---|---|---|---|---|---|---|
HQARD | 1 | ||||||
DE | 0.596 *** [0.517, 0.664] | 1 | |||||
ISI | 0.664 *** [0.596, 0.723] | 0.639 *** [0.566, 0.701] | 1 | ||||
ISU | 0.639 *** [0.567, 0.702] | 0.399 *** [0.299, 0.490] | 0.731 *** [0.673, 0.779] | 1 | |||
UR | 0.739 *** [0.683, 0.702] | 0.617 *** [0.541, 0.682] | 0.810 *** [0.767, 0.846] | 0.537 *** [0.451, 0.613] | 1 | ||
GFSL | −0.341 *** [−0.437, −0.237] | −0.544 *** [−0.619, −0.459] | −0.192 *** [−0.298, −0.081] | 0.0470 [−0.067, 0.159] | −0.323 *** [−0.421, −0.218] | 1 | |
ROL | 0.557 *** [0.473, 0.630] | 0.615 *** [0.539, 0.681] | 0.700 *** [0.638, 0.754] | 0.454 *** [0.359, 0.539] | 0.769 *** [0.718, 0.811] | −0.415 *** [−0.505, −0.317] | 1 |
HQARD | HQARD | HQARD | |
---|---|---|---|
(1) ols | (2) re | (3) fe | |
DE | 0.128 *** | 0.163 *** | 0.081 ** |
(0.043) | (0.051) | (0.036) | |
ISI | −0.138 *** | −0.127 | −0.360 *** |
(0.049) | (0.081) | (0.070) | |
ISU | 0.052 *** | 0.059 *** | 0.062 *** |
(0.005) | (0.011) | (0.012) | |
UR | 0.422 *** | 0.321 *** | −0.403 *** |
(0.043) | (0.071) | (0.101) | |
GFSL | −0.134 *** | −0.196 *** | −0.266 *** |
(0.030) | (0.057) | (0.054) | |
ROL | −0.044 *** | −0.019 | 0.087 *** |
(0.014) | (0.018) | (0.022) | |
Controlled variable | yes | yes | yes |
Time effect | deny | deny | yes |
Regional effect | deny | yes | yes |
_cons | 0.294 *** | 0.321 ** | 1.250 *** |
(0.099) | (0.158) | (0.160) | |
N | 300.000 | 300.000 | 300.000 |
r 2 | 0.692 | 0.856 | |
r 2_a | 0.686 | 0.4462 | 0.832 |
Hausman | 75.90 *** |
(1) | (2) | (3) | (4) | |
---|---|---|---|---|
HQARD | ISI | ISU | HQARD | |
DE | 0.029 | 0.105 *** | −0.645 *** | 0.081 ** |
UR | −0.484 *** | 0.007 | −1.862 *** | −0.403 *** |
GFSL | −0.241 *** | 0.147 *** | 1.382 *** | −0.266 *** |
ROL | 0.026 | 0.138 *** | −0.694 *** | 0.087 *** |
ISU | 0.084 *** | 0.062 *** | ||
ISI | 3.106 *** | −0.360 *** | ||
_cons | 0.539 *** | 2.143 *** | −5.227 *** | 1.250 *** |
N | 300.000 | 300.000 | 300.000 | 300.000 |
r 2 | 0.836 | 0.905 | 0.864 | 0.856 |
r 2_a | 0.809 | 0.889 | 0.841 | 0.832 |
P price | 0.000 | 0.000 | 0.000 | 0.000 |
Effect | Observed Coefficient | Bootstrap Std. Err. | z | p > z | Normal-Based | ||
---|---|---|---|---|---|---|---|
[95% Conf. Interval] | |||||||
ISI | Indirect | −0.379 | 0.013 | −2.880 | 0.004 | −0.064 | −0.012 |
Direct | 0.806 | 0.041 | 1.990 | 0.047 | 0.001 | 0.160 | |
Total Eff | 0.427 | 0.039 | 1.080 | 0.278 | −0.034 | 0.120 | |
ISU | Indirect | −0.040 | 0.017 | −2.380 | 0.017 | −0.073 | −0.007 |
Direct | 0.081 | 0.041 | 1.990 | 0.047 | 0.001 | 0.160 | |
Total Eff | 0.041 | 0.040 | 1.030 | 0.303 | −0.037 | 0.118 |
Variable | Threshold | Fstat | Prob | Crit 10 | Crit 5 | Crit 1 |
---|---|---|---|---|---|---|
ISI | Single | 63.730 | 0.000 | 22.113 | 27.483 | 41.278 |
Double | 17.500 | 0.106 | 17.684 | 24.966 | 64.481 | |
Triple | 8.580 | 0.532 | 23.928 | 33.632 | 51.429 | |
ISU | Single | 34.020 | 0.014 | 20.974 | 26.495 | 35.395 |
Double | 20.780 | 0.090 | 19.986 | 26.947 | 39.394 | |
Triple | 15.070 | 0.148 | 17.369 | 23.343 | 38.656 |
Model | Threshold | Lower | Upper | |
---|---|---|---|---|
ISI | Th-21 | 2.706 | 2.704 | 2.707 |
Th-22 | 2.810 | . | . | |
Th-3 | 2.483 | 2.468 | 2.483 | |
ISU | Th-21 | 2.445 | 2.283 | 2.466 |
Th-22 | 3.231 | 2.982 | 4.016 | |
Th-3 | 3.895 | 3.231 | 4.032 | |
DE | Th-21 | 0.257 | 0.248 | 0.268 |
Th-22 | 0.217 | 0.210 | 0.218 | |
Th-3 | 0.049 | 0.047 | 0.050 |
ISI | ISU | |
---|---|---|
VARIABLES | HQARD | HQARD |
ISI | −0.265 ** | −0.233 ** |
(0.109) | (0.0877) | |
ISU | 0.0405 ** | 0.0293 |
(0.0161) | (0.0177) | |
UR | −0.123 | −0.199 |
(0.193) | (0.170) | |
GFSL | −0.227 *** | −0.215 *** |
(0.0765) | (0.0767) | |
ROL | 0.0778 * | 0.0941 ** |
(0.0419) | (0.0431) | |
DE (ISI < 2.7056) | 0.0386 | |
(0.0510) | ||
DE (ISI > 2.7056) | 0.304 *** | |
(0.0726) | ||
DE (ISU < 2.4447) | 0.0362 | |
(0.0406) | ||
DE (2.4447 ≤ ISU < 3.2308) | 0.221 *** | |
(0.0465) | ||
DE (ISU ≥ 3.2308) | 0.488 *** | |
(0.0838) | ||
Constant | 0.893 *** | 0.861 *** |
(0.289) | (0.226) | |
Observations | 300 | 300 |
Number of id | 30 | 30 |
R-squared | 0.882 | 0.879 |
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Liu, J.; Feng, X.; Liu, J.; Yamaka, W. Digital Economy and Industrial Structure Transformation: Mechanisms for High-Quality Development in China’s Agriculture and Rural Areas. Agriculture 2024, 14, 1769. https://doi.org/10.3390/agriculture14101769
Liu J, Feng X, Liu J, Yamaka W. Digital Economy and Industrial Structure Transformation: Mechanisms for High-Quality Development in China’s Agriculture and Rural Areas. Agriculture. 2024; 14(10):1769. https://doi.org/10.3390/agriculture14101769
Chicago/Turabian StyleLiu, Jingruo, Xiuju Feng, Jianxu Liu, and Woraphon Yamaka. 2024. "Digital Economy and Industrial Structure Transformation: Mechanisms for High-Quality Development in China’s Agriculture and Rural Areas" Agriculture 14, no. 10: 1769. https://doi.org/10.3390/agriculture14101769
APA StyleLiu, J., Feng, X., Liu, J., & Yamaka, W. (2024). Digital Economy and Industrial Structure Transformation: Mechanisms for High-Quality Development in China’s Agriculture and Rural Areas. Agriculture, 14(10), 1769. https://doi.org/10.3390/agriculture14101769