Digital Financial Inclusion, Land Transfer, and Agricultural Green Total Factor Productivity
Abstract
:1. Introduction
2. Literature Review
- The evaluation index system, established in the existing literature for measuring AGTFP, only considers the undesired output of agricultural carbon emissions, ignoring the dual attributes of agricultural production, namely, carbon source and carbon sink. Ignoring the total ecological value of agriculture will make its evaluation inaccurate;
- The existing literature mainly uses the directional-distance function when evaluating China’s overall agricultural green total factor productivity. This method needs to be improved in order to deal with a situation in which the evaluation system contains both the expected and the unexpected output;
- The existing literature analyzes the impact of digital financial inclusion on agricultural green total factor productivity by mainly using geographical location to divide samples according to regional resource endowment and economic development. This method attaches too much importance to economic development and needs to incorporate institutional, technological, and policy factors. In addition, the existing literature has yet to reveal the role and action of land transfer (LT) in DFI’s effect on AGTFP.
3. Theoretical Analysis and Research Hypothesis
3.1. Direct Impact of DFI on AGTFP
3.2. Heterogeneous Impact of DFI on AGTFP
3.3. Channel Mechanism of LT
4. Study Design and Data Sources
4.1. Definitions of Variables
4.1.1. Explained Variable
4.1.2. Core Explanatory Variable
4.1.3. Channel Variables
4.1.4. Control Variable
4.2. Model Setting
4.2.1. EBM-GML Index Method
4.2.2. Econometrics Model
4.3. Data Sources and Description
5. Empirical Results
5.1. Baseline Regression
5.2. Robustness Test
5.3. Endogeneity
6. Path Mechanism and Heterogeneity Test
6.1. Mediating Effect
6.2. Heterogeneity Test
6.2.1. Digital Infrastructure
6.2.2. Environmental Regulation
7. Conclusions and Policy Implications
7.1. Conclusions
7.2. Policy Enlightenment
- The administrative departments should give full play to the abilities and activities of all parties, and strengthen the mechanisms of cooperation and co-governance in pollution control. The agricultural non-point source is scattered in nature, and industrial development in agricultural regions is lacking, thus diversified cooperation among departments, regions, governments, and farmers is required. In order to give full play to the guiding role of the government and attract intermediate agricultural organizations and farmers to fulfill their responsibilities, the introduction of a professional technical management system and the strengthening of the social supervision mechanism can facilitate the communication of government endowments to the market, and improve the effectiveness of agricultural pollution control. At the same time, by means of production taxes, environmental taxes/subsidies, government funding, and emission rights trading, the driving force motivating responsible subjects at all levels to participate in the control of non-point source agricultural pollution can be enhanced. In addition, a mechanism for the co-control and management of non-point source agricultural pollution in which the government, agricultural intermediary organizations, and farmers coordinate and cooperate with multiple subjects can be established. Government departments should guide market players in the research and development of low-emission, low-residue, and intelligent new green fertilizers and pesticides; strengthen the innovation of mechanized, intelligent, and precise fertilization and application technologies; and give full play to the role of big data and artificial intelligence technology in the prevention and control of agricultural pollution;
- Technological innovation is a prerequisite for success in the collaborative management of agricultural pollution and carbon reduction. The government should establish and improve the “agricultural big data” platform, support and encourage commercial financial institutions to develop and improve the digital financial inclusion credit data analysis technology, innovate the supply model of agricultural digital financial inclusion products, and expand the credit scale. At the same time, they should attach greater importance to the construction of DFI systems and improve the inclusiveness, coverage, and accuracy of financial services. The government should increase the degree of digital support in rural areas; constantly improve DFI systems and infrastructure construction; and ensure the accurate delivery of financial products by optimizing digital functions, such as personal payment, micro-credit, and internet insurance. This can be executed by encouraging internet companies, such as JD Finance, Ant Financial, and Duxiaoman, to enter into the rural market, and by developing and designing digital financial products and services that benefit farmers according to their local conditions. This will help to protect the rights of economic entities, such as very poor individuals, farmers, and small- and medium-sized enterprises, in obtaining financial services. Banks and other financial institutions should rely on 5G, intelligent terminals, and other technologies to support county- and regional-level subjects in independently obtaining financial services through various channels, and solve the problems in the network layout in rural and remote areas. They should also give full play to the information-related advantages of emerging financial businesses. Financial institutions not only need to make good use of digital technology to strengthen their role in collecting information from rural “credit white households”, but should also help farmers to better understand market information and thus help with the green development of agriculture. Local administrative departments and financial institutions can join forces to introduce standardized county data, formulate general rules for county loans, and improve their ability to identify customers and extend credit. Local governments should cooperate with commercial financial institutions to popularize knowledge related to digital agricultural finance through various channels, such as online media publicity and grassroots farmers’ professional training, to improve farmers’ awareness and operational abilities in relation to inclusive digital finance;
- We should accelerate the innovation of the LT mode and mechanisms, and attach importance to regional differences during circulation. After the implementation of reforms in land confirmation and agricultural rights separation, we should actively explore and refine the three rights separation reforms, and introduce supporting policies to encourage land transfer and achieve large-scale management. While helping farmers and collective economic organizations to transfer contracted land in the traditional way, we should also build a platform providing information and services related to transfers; encourage farmers to transfer land through new modes, such as principal agent, cooperative shareholding, land trusts, and mortgaging; and clarify the rights and responsibilities of both parties involved in a land transfer. At the same time, local governments should formulate LT price systems based on the actual agricultural conditions in the region to ensure a basic balance between supply and demand, and they should implement a reasonable transfer price. In order to deal with the problem of arable land fragmentation, the government should encourage villagers to merge and exchange plots within their communities, and promote the consolidation of small scattered plots into large plots to achieve large-scale management and improve the allocation efficiency of various production factors;
- Administrative departments should promote the construction of “green+” financial service coordination systems between green finance and inclusive finance, technology and finance, and rural finance and supply chain finance. They should also adapt the environmental and social risk management concept, the pricing mechanism, and the value discovery function of green finance to other financial systems, thus promoting the development of financial businesses, such as those involved in green securities, green funds, and green insurance. At the same time, we should pay attention to the heterogeneity of different financial ecosystems in the process of integration, and construct a negative list mechanism for green inclusive finance. Banks should increase their input in financial infrastructure at the rural grassroots level and set up more “green financial service offices” organized by rural credit cooperatives and other institutions to provide agricultural business entities with green financial education and other services. The financial sector must explore the establishment of a green finance evaluation system that is in line with the development of green agricultural projects influenced by local conditions, encourage banks to increase the proportion and weight of green finance in their evaluations, and promote the innovation of green financial products and services.
7.3. Limitation
- (1)
- This study only considered the undesirable output of agricultural carbon emissions when evaluating AGTFP, ignoring agricultural non-point source pollution. In future studies, it would be beneficial to use a single analysis method to calculate the total nitrogen (TN), total phosphorus (TP), and chemical oxygen demand (COD) of agricultural non-point source pollutants, and include them in the calculation of green total factor productivity. In addition, this paper mainly takes chivalrous planting as its statistical sample. The data on forestry, fishery, and animal husbandry, under the broader definition of agriculture, should also be included in the evaluation system.
- (2)
- This is an empirical study that was undertaken at the level of statistics and econometrics, and the research conclusions do not provide detailed operation schemes. In future studies, it would be helpful to use the case analysis method to deeply analyze the specific experiences of financial institutions that are using DFI products to promote green and clean agricultural production, based on specific cases.
- (3)
- It would be beneficial to use digital financial inclusion in agricultural policy systems to perform policy evaluations, such as using DID, RDD, and other methods to make up for the deficiencies in the study of causal inference.
- (4)
- Clarifying the total amount of agricultural carbon emissions and carbon sinks is a prerequisite for relevant research. However, compared with industrial carbon sources, agricultural carbon sources are more diverse and complex, and many calculation methods may make the calculation results quite different. Although the IPCC coefficient method we used is widely used, it needs to fully reflect the whole picture of carbon emissions in the production process of agricultural systems. Compared with agricultural carbon emissions, agricultural carbon sinks are mainly calculated based on different carbon sinks. Due to the different characteristics of different carbon sinks, the measurement methods are challenging to unify. A significant error often exists between the carbon sink data, obtained by different methods, and the actual value. Establishing a more scientific assessment system or using digital technology to monitor natural carbon sinks would be beneficial.
- (5)
- It would be useful to refine the statistical sample to the level of micro-data.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Crop Variety | Economic Coefficient | Water Content | Carbon Absorption Rate | Crop Variety | Economic Coefficient | Water Content | Carbon Absorption Rate |
---|---|---|---|---|---|---|---|
Rice | 0.45 | 0.12 | 0.41 | Rapeseed | 0.25 | 0.10 | 0.45 |
Wheat | 0.40 | 0.12 | 0.49 | Sugarcane | 0.50 | 0.50 | 0.45 |
Corn | 0.40 | 0.13 | 0.47 | Cotton | 0.10 | 0.08 | 0.45 |
Beans | 0.34 | 0.13 | 0.45 | Melon | 0.70 | 0.90 | 0.45 |
Potato | 0.70 | 0.70 | 0.42 | Vegetable | 0.60 | 0.90 | 0.45 |
Peanut | 0.43 | 0.10 | 0.45 |
Farming System | Northern Region | Southern Region |
---|---|---|
Crop ripening | One crop a year or three crops every two years | Two or three crops a year |
Cultivated land type | Dry-land farming | Paddy field |
Grain crops | Wheat | Rice |
Oil crops | Peanut | Oil seed rape |
Sugar crop | Beet | Sugarcane |
Economic crops | Cotton, millet, soybeans, etc. | Cotton |
Carbon Source | Pesticide | Fertilizers | Diesel | Agricultural Film | Irrigate | Plough Fields |
---|---|---|---|---|---|---|
Carbon coefficient | 4.934 kg/kg | 0.896 kg/kg | 0.592 kg/kg | 5.18 kg/kg | 266.48 kg/hm2 | 312.6 kg/hm2 |
Variable | Code | Mean | Standard Error | Min | Max |
---|---|---|---|---|---|
Agricultural green total factor productivity | AGTFP | 0.3294 | 0.2883 | −0.3713 | 1.2602 |
Digital financial inclusion | DFI | 5.2760 | 0.6743 | 2.9360 | 6.0683 |
Land transfer | LT | 16.2218 | 1.2899 | 12.0111 | 19.1255 |
Financial support for agriculture | FSA | 6.1629 | 0.5835 | 4.6599 | 7.1612 |
Rural e-commerce | REC | 11.4615 | 0.8637 | 8.8203 | 12.5888 |
Income gap | IP | 0.9516 | 0.1577 | 0.6152 | 1.3584 |
Industrial structure | IS | 0.2146 | 0.3763 | −0.4492 | 1.5880 |
Level of economic development | LED | 10.8575 | 0.4449 | 9.8830 | 11.8415 |
Technological innovation | TI | 9.4752 | 1.5720 | 4.6151 | 12.2225 |
Variable | POLS | POLS | TWFE | TWFE |
---|---|---|---|---|
DFI | 0.1896 *** (10.96) | 0.1295 *** (4.96) | 0.1950 *** (3.46) | 0.1219 ** (2.93) |
LED | −0.1220 ** (−1.97) | −0.3443 * (−2.04) | ||
FSA | 0.2987 *** (5.06) | 0.2486 *** (9.51) | ||
REC | −0.0106 (−0.62) | 0.0807 ** (2.82) | ||
TI | −0.1762 *** (−5.33) | 0.0471 * (2.08) | ||
IP | −0.1233 (−0.99) | −0.4690 * (−2.14) | ||
IS | 0.0010 (0.02) | 0.0572 * (0.49) | ||
Individual effect | No | No | Yes | Yes |
Time effect | No | No | Yes | Yes |
R-Square | 0.1955 | 0.3113 | 0.6724 | 0.7023 |
F test | 33.56 *** | 30.56 *** | ||
Hausman test | 20.04 *** |
Variable | Robustness | Endogeneity | |||
---|---|---|---|---|---|
Interactive Fixation Effect | Coverage Breadth | SAR | GS2SLSAR | LTZ | |
DFI | 0.1023 ** (2.58) | 0.0611 *** (5.96) | 0.1187 * (1.93) | 0.0748 ** (2.40) | 0.5235 ** (1.96) |
Control variables | Yes | Yes | Yes | Yes | Yes |
Individual effect | Yes | Yes | Yes | Yes | Yes |
Time effect | Yes | Yes | Yes | Yes | Yes |
Variable | LT | Pilot Zone for Green Finance Reform | National Big Data Comprehensive Pilot Zone | ||
---|---|---|---|---|---|
Pilot City | Non-Pilot City | Pilot City | Non-pilot City | ||
DFI | 0.2461 *** (3.00) | 0.3301 ** (3.09) | 0.0324 (0.55) | 0.1721 ** (2.27) | 0.0717 (1.61) |
Control variables | Yes | Yes | Yes | Yes | Yes |
Individual effect | Yes | Yes | Yes | Yes | Yes |
Time effect | Yes | Yes | Yes | Yes | Yes |
R-Square | 0.8772 | 0.6993 | 0.8290 | 0.7576 |
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Shen, Y.; Guo, X.; Zhang, X. Digital Financial Inclusion, Land Transfer, and Agricultural Green Total Factor Productivity. Sustainability 2023, 15, 6436. https://doi.org/10.3390/su15086436
Shen Y, Guo X, Zhang X. Digital Financial Inclusion, Land Transfer, and Agricultural Green Total Factor Productivity. Sustainability. 2023; 15(8):6436. https://doi.org/10.3390/su15086436
Chicago/Turabian StyleShen, Yang, Xiaoyang Guo, and Xiuwu Zhang. 2023. "Digital Financial Inclusion, Land Transfer, and Agricultural Green Total Factor Productivity" Sustainability 15, no. 8: 6436. https://doi.org/10.3390/su15086436
APA StyleShen, Y., Guo, X., & Zhang, X. (2023). Digital Financial Inclusion, Land Transfer, and Agricultural Green Total Factor Productivity. Sustainability, 15(8), 6436. https://doi.org/10.3390/su15086436