1. Instruction
Agricultural green development is an important concept within the 2030 Sustainable Development Goals proposed by the United Nations [
1]. 2019 data shows that China produces 21% of global food needs and feeds 18% of the world’s population on only 8% of limited cropland; however, behind the high production of Chinese food is the consumption of chemical fertilizer and pesticides, with 35% and 42% of the world’s total, respectively (original data form:
https://www.fao.org/faostat/en/?#data, accessed on 1 June 2022). With the improvement of living standards, the Chinese have paid more attention to food safety and environmental protection [
2]. Agricultural green development is devoted to practicing the protection of the agricultural environment in production, sales, and consumption, alleviating the conflicts among people, land, and the environment [
3]. From the perspective of economics, agricultural green development has positive externalities to social development [
4], so the government needs to provide more legal and financial support for agricultural green development. Meanwhile, financial markets are reluctant to enter rural areas, leading to a lack of agricultural investment [
5]. Therefore, insufficient investment has severely hindered sustainable development in agriculture.
According to the 49th Statistical Report on China’s Internet Development, 284 million rural residents have access to the Internet in 2021. Digital inclusive finance, which through digital technologies provides accessible and affordable financial services and products for Chinese farmers cannot be completely covered by traditional finance [
6], but can play a significant role in alleviating the financial constraints of agricultural green development. The possible channels are shown as follows. First, digital inclusive finance, which relies on big data technology and product innovation, can not only broaden service coverage by the Internet but also reduce the transaction costs of financial products [
7]. This effectively solves the long-standing problems of scattered demand subjects and insufficient effective supply in the rural financial market [
8], improving the availability of financial services for farmers and increasing agricultural investment. Next, with increasing agricultural investment, more and more agricultural machinery will be put into agricultural production [
9], which is conducive to solving the long-standing problem of a lack of agricultural input for most farmers. In addition, digital inclusive finance can also improve digitization in the agricultural chain [
10], promoting the cross-regional flow of agricultural resources and improving their efficiency. Second, the diversification of finance services can be improved by digital inclusive finance [
11]. As asserted by Yu and Wang [
12], the creation of more personal kinds of agricultural insurance can reduce business risks and secure farmers’ interests. Furthermore, digital inclusive finance, when combined with information technology, can enhance farmers’ credit by innovating on the forms of collateral, such as farmland, houses, and social relations [
13]. Third, digital inclusive finance can boost entrepreneurship among farmers to increase their income [
14,
15]. It can also advance the competitiveness of agricultural products and the export rate of agricultural products to increase farmers’ agricultural income by, for example, establishing the traceability of green production and green certificates. As financial products become more accessible, the effective utilization rate of idle funds increases, and farmers’ non-agricultural income also increases [
16].
Furthermore, Li et al. [
17] found that digital inclusive finance has a spatial spillover effect. We take spatial characteristics into consideration as an important research perspective.
This paper estimates the level of agricultural green development in 31 Chinese provinces by employing the entropy-weighted TOPSIS method. Base on this, the dynamic spatial Durbin model is used to explore the effect of digital inclusive finance on agricultural green development. Then, this paper chooses education, digital infrastructure, and rural traditional finance as moderating variables to discuss the effect in depth. The marginal contribution of this article includes two main aspects. First, to the best of our knowledge, no study has focused on the effect of digital inclusive finance on agricultural green development. This paper extends the existing literature by discussing the spatial impact. Second, this article explores the moderating effect of education, digital infrastructure, and rural traditional finance when the spatial effect of digital inclusive finance on agricultural green development is studied.
The remainder of the paper is organized as follows:
Section 2 presents the reviews of agricultural green development and digital inclusive finance in China,
Section 3 presents the materials and methods,
Section 4 introduces the econometric model,
Section 5 analyzes the empirical results, and
Section 6 provides the conclusions and policy implications.
3. Materials and Methods
3.1. Variables
3.1.1. Agricultural Green Development
Agricultural green development (
gad) is the core variable in this paper. Based on a review of relevant literature in green agriculture, eco-agriculture, and organic agriculture [
19,
20,
21], we know that agricultural green development focuses on the carrying capacity of resources and environment while also emphasizing the harmonization of economic, social, and ecological benefits. Therefore, we selected 14 indicators to measure the level of agricultural green development based on resource savings (
res), environmental protection (
env), ecological conservation (
eco), and quality industrialization (
qua), as shown in
Table 1. Because of the overuse of pesticides, fertilizers, and plastic films at present, these three items are set as inverse indicators.
3.1.2. Digital Inclusive Finance
The second core variable in this paper is digital inclusive finance (dif), which is specifically characterized by the total digital inclusive finance index at the provincial level in the Digital Inclusive Finance Index System of Peking University.
3.1.3. Control Variables
Base on the main conclusion of the related literature [
35,
36], the following five indicators are selected as control variables in this paper: (1) financial agricultural input (
fai) reflects the strength of state subsidies to agriculture and is measured by the share of expenditures on agriculture, forestry, and water affairs in local general public budget expenditures; (2) government investment in environmental management (
gep) reflects the government’s investment in energy conservation and environmental protection and is expressed as the proportion of local general public budget expenditure on energy conservation and environmental protection; (3) the agricultural price index (
api) reflects the price fluctuation of agricultural products and is expressed as the producer price index of agricultural products, of which the data for Tibet is missing and is replaced by its total regional production index [
38]; (4) economic openness (
eor) reflects the economic activity of the region and is defined as the proportion of total regional imports and exports to GDP; (5) the natural disaster incidence rate (
ndr) reflects the natural production conditions of the region, and it is expressed as the proportion of the affected area to the total sown area of crops.
3.1.4. Moderating Variables
Referring to Guo et al. [
37], we select the level of education (
edu), digital infrastructure (
inf) and traditional finance (
rtf) as the moderating variables. First, the level of education is expressed by the proportion of people with a college degree or above in the population aged 6 and above. Second, the digital infrastructure level is measured by the proportion of rural Internet access users. Third, the development level of rural traditions is expressed by the ratio of the year-end loan balance to the year-end deposit balance of rural credit cooperatives.
3.2. Data
Due to the incomplete data for Hong Kong, Macao, and Taiwan, the observed samples are limited to 31 provinces in China from 2011 to 2019. The sources of digital inclusive finance data from the Peking University Digital Inclusive Financial Index (2011–2020). The original data of agricultural green development can be seen in
Appendix A. Except that the year-end loan balance and the year-end deposit balance of rural credit cooperatives are from the Wind Database, the original data of other control variables and moderating variables are from the China Statistical Yearbook.
3.3. Entropy-Weighted TOPSIS Method
The entropy-weight TOPSIS method is used to measure and evaluate agricultural green development in this paper. First, the data are dimensionless processed by the deviation method, then the index weight is determined by the entropy-weight method, and finally the relative level of agricultural green development in each province is calculated by the TOPSIS method. The steps of TOPSIS method are as follows:
Step 1: build a weighting matrix
for each evaluation index of agricultural green development according to the weights of each index calculated by the entropy weight method.
represents the weight calculated by entropy-weight method, represents the standardized value obtained by the dispersion method, represents provinces, represents measurement indicators, represents the number of provinces, represents the number of measurement indicators.
Step 2: determine the positive ideal solutions
and negative ideal solutions
.
Step 3: calculate the distance measures for the positive ideal solutions
and negative ideal solutions
.
Step 4: calculate the relative closeness to ideal solutions
.
Here, . The higher , the higher the level of agricultural green development in province ; and the smaller , the lower the level of agricultural green development in province .
3.4. Descriptive Statistics
The descriptive statistics of variables are shown in
Table 2. The average value of agricultural green development is 0.428, and the standard deviation is 0.064. The standard deviation of digital inclusive finance is 0.679, which shows that digital inclusive finance varies greatly among provinces. The coefficient of variation of agricultural green development 0.150 is greater than that of digital inclusive finance 0.132, indicating that agricultural green development is more discrete. The mean values of the control variables, such as financial agricultural input, government investment in environmental management, agricultural price index, economic openness, and natural disasters incidence rate, are 0.151, 0.115, 0.030, 0.207, 0.234 and 5.143, respectively.
4. Econometric Model
4.1. Spatial Weight Matrix and Spatial Correlation
According to the first geographical law of Tobler [
39], every place is connected. The reciprocal of the square of highway mileage
between cities is used to construct the geographical distance matrix, and the element
in row
and column
of the matrix is shown here:
Meanwhile, this paper uses the method of changing the spatial weight to test the robustness, and it uses the actual GDP of each province in the sample period to construct the economic distance matrix line
number
column element
. This expression is shown in Equation (6):
In Equation (6), represents the square of the mileage of intercity roads, expresses the actual average GDP of the province in the sample period, and represents the average of the actual GDP of all provinces in the sample period.
This paper uses the Moran index to test the spatial correlation of variables, and the calculation formula is shown in Formula (7):
is the spatial weight matrix, is the agricultural green development.
4.2. Dynamic Spatial Durbin Model
In order to measure the spatial effect of digital inclusive finance on agricultural green development and take the continuity and spatial correlation of agricultural green development into account, the dynamic spatial Durbin model is chosen as the econometric model, and the expression is shown in Equation (8):
represents the one-period lag of agricultural green development,
represents its spatial lag term,
indicates the effect of digital inclusive finance on agricultural green development in surrounding areas, and
represents the other control variables.
and
are the regression coefficient,
is a constant term,
,
and
are individual effect, time effect, and random disturbance term, respectively. According to Lesage et al. [
40], the spatial lag term makes the regression coefficient unable to accurately reflect the influence of
on
, thus we use the effect decomposition to better describe the spatial interaction, in which the direct effect represents the influence of
on this region, the indirect effect represents the influence of
on other regions, and the total effect represents the average influence of
on all regions.
From the setting process of spatial metrology model, we can see that dynamic spatial Durbin model can not only obtains short- and long-term spatial effects, but also investigates the lag term of variables. The spatial weight matrix cannot be estimated, but it needs to be set in advance, which is a major disadvantage of spatial metrology.
Considering the regional heterogeneity, we further divide the sample into three subsamples, the eastern, middle, and western regions of China, to compare the heterogenous influence and spatial effect of digital inclusive finance on agricultural green development. According to the standards of the National Bureau of Statistics, the eastern region includes Beijing, Tianjin, Hebei, Liaoning, Shanghai, Jiangsu, Zhejiang, Fujian, Shandong, Guangdong, and Hainan; the middle region includes Shanxi, Jilin, Heilongjiang, Anhui, Jiangxi, Henan, Hubei, and Hunan; the western region includes the inner Mongolia Autonomous Region, the Guangxi Zhuang Autonomous Region, Chongqing, Sichuan, Guizhou, Yunnan, the Tibet Autonomous Region, Shaanxi, Gansu, Qinghai, the Ningxia Hui Autonomous Region, and the Xinjiang Uygur Autonomous Region.
4.3. Moderating Effect Model
Next, we build the moderating effect model to explore the heterogeneous effect of digital inclusive finance on regional agricultural green development in which the differences in the level of higher education, digital infrastructure, and rural traditional finance influence.
represents the dummy variables after moderating variables (edu, inf or rtf) are assigned, when . Other variables are used similarly to Equation (8).
6. Conclusions and Policy Implications
6.1. Conclusions
This paper selects 14 indicators to construct agricultural green development from four dimensions of resource savings, environmental protection, ecological conservation, and quality industrialization using provincial panel data from 2011 to 2019. Then, agricultural green development is estimated using the entropy-weighted TOPSIS method. By using the dynamic spatial Durbin model, we empirically analyze the effect of digital inclusive finance on agricultural green development. Finally, we choose education, digital infrastructure, and traditional finance as moderating variables to explore this effect.
The dynamic SDM results show that digital inclusive finance has a positive effect on agricultural green development, and the short-term effect is more significant than the long-term effect, suggesting that the promotion of digital inclusive finance could be an effective measure for ensuring agricultural modernization. Furthermore, digital inclusive finance has regional heterogeneous effects on agricultural green development. Specifically, in the short term, the direct and indirect effects of digital inclusive finance on agricultural green development are more pronounced in the middle region, while in the long term, both effects on agricultural green development are only effective in the eastern region.
We find that digital inclusive finance also exhibits heterogeneity in agricultural green development in provinces with different socio-economic characteristics, such as education, digital infrastructure, and traditional finance. Higher levels of the above three indicators tend to result in greater and more significant effects on the level of digital inclusive finance.
Due to the impact of COVID-19, the research data collection period is limited. At the same time, this research is based on China’s national conditions, and other developing countries or developed countries can be selected for future research.
6.2. Policy Implications
According to the conclusions, the following policy implications should be put forward:
(1) Promoting the overall development of digital inclusive finance. Digital inclusive finance can effectively promote agricultural green development and has regional heterogeneity. Therefore, the government should provide legal and financial support to financial institutions, ensuring the quantity and level of financial supply in rural areas, and pay attention to digital technology innovation.
(2) Focusing on the sustainability of the development of digital inclusive finance. The east should give better play to the spillover effect and support the development of the middle and western regions. The middle should accelerate the transformation of agricultural industrialization and carbon reduction. Due to the restriction of natural resources and different industrial forms, the west should actively use digital technology to guide financial resources to flow to agricultural technology innovation activities.
(3) Improving the financial literacy and skills of rural people. Digital finance education and training is an important way to improve the financial literacy and skills of rural people. The improvement of financial literacy is conducive to farmers’ mastering financial knowledge. It is suggested to provide diversified and multi-channel financial education and training for rural areas.
(4) Strengthening rural digital financial infrastructure. Digital inclusive finance is limited by digital financial infrastructure. Therefore, the government should vigorously promote the construction of rural digital financial infrastructure, formulate corresponding preferential policies in combination with the development of regional characteristics, encourage financial institutions to take root in rural development, and further release the positive role of digital inclusive finance.
(5) Promoting the innovative combination of traditional finance and digital technology to develop digital inclusive finance. Such measures can build financial and agricultural service platforms through innovating financial instruments, and provide financial support for farmers’ activities, such as agricultural carbon reduction production, living and production pollution prevention, and ecological protection.