1. Introduction
China’s rural consumption market has great potential [
1]. Notably, boosting rural consumption can significantly further sustainable economic growth. However, rural consumption levels are more than 50% lower than half those in urban areas of China (Source: National Bureau of Statistics official website). Additionally, the consumption gap between farmers is large, and there is serious consumption inequality [
2]. Farmer consumption inequality not only affects their happiness, but can also hinder relative poverty governance and sustainable economic development. Therefore, consumption inequality among farmers must be addressed to alleviate social contradictions and ensure sustained and stable economic operations.
Digital finance (DF) refers to traditional financial institutions and internet enterprises that use digital technology to achieve financing, payment, investment, and other new financial business models. China’s DF includes mobile payment, online finance, and online loans. From 2011 to 2020, China’s DF index increased from 33.6 to 334.8 (Source: “Peking University Digital Inclusive Finance Index”), achieving leapfrog development. Today, China is the most extensive user of DF in the world [
3]. Relying on digital technology, DF is characterized by low costs, low thresholds, and wide coverage, which alleviate the problems of unbalanced and inadequate development of traditional finance. To date, few studies have been conducted on whether the development of DF can stimulate farmer consumption and narrow the consumption gap.
Theoretically, DF may affect farmer consumption behavior in several ways conducive to reducing their consumption inequality. First, it alters the payment method [
4]. Electronic payment circumvents the time and space restrictions of traditional consumption, reduces the cost of payment, highlights consumer experience, weakens the pain of payment, and releases farmer consumption potential. Second, it eases financing constraints [
5]. Online micro-credit services meet the “small and scattered” credit needs of farmers, reduce liquidity constraints, promote farmer entrepreneurship and employment, and encourage farmer consumption. Third, it lowers the access threshold. DF’s characteristics of “low cost”, “wide coverage”, and “sustainability” enable easy access for rural low-income individuals, allowing the “long-tail group” to enjoy its benefits [
6].
Based on the above analysis, this study used survey data for the years 2015, 2017, and 2019 from the China Household Finance Survey database (CHFS) by the Southwest University of Finance and Economics to explore the impact of DF on consumption inequality among Chinese farm households. We found that DF can relieve consumption inequality among farmers. These results remained robust after using the instrumental variable method and changing the empirical model. Thus, to solve the problem of consumption inequality among farmers and alleviate rural relative poverty, China should allow DF to develop and encourage more farmers to participate in the DF market.
This study contributes to the field in the following ways. First, it enriches research related to DF and farm household consumption. Most existing studies have concentrated on the impact of DF on household economic behavior [
7]. Few scholars have focused on consumption inequality among farm households. Second, it enriches related studies in the field of consumption. Existing consumption studies have mostly explored consumption issues in terms of consumption levels [
8], consumption structures, and urban-rural consumption gaps. However, in the context of promoting economic sharing and achieving common prosperity, there is a lack of research on consumption inequality among farm households from the micro perspective. Third, this study is the first to explore the impact of the DF mechanism on farm household consumption inequality from the perspectives of income inequality and online shopping and to analyze regional and household heterogeneity. These contributions help to broaden the scope of existing research and widen the scope of its applications.
3. Data Sources, Variable Selection, and Model Setting
The previous section hypothesized the impact of DF on farmer consumption inequality by examining existing literature. This section details the empirical analysis we conducted to test our hypotheses.
3.1. Data Sources
The data for this study were collected from the CHFS database by the Southwestern University of Finance and Economics in China. The CHFS takes micro-households as follow-up survey objects and collects household financial information. Since the first round of surveys in 2011, the samples have been tracked every two years, and the sixth round of surveys was launched in 2021. Currently, the data of the first five surveys, conducted in 2011, 2013, 2015, 2017, and 2019, have been publicly released. The sample covers 29 provinces and 1481 communities, includes urban and rural areas, and is nationally representative. The questionnaire used to collect the data includes items related to family member information, family economic activities, and family financial status. In terms of DF, the CHFS questionnaire collects information on the use of household DF and includes items on topics, such as mobile payment, online operation, online lending, and online financial management based on household DF use. The CHFS also collects detailed statistics on various types of household consumption, including food, clothing, housing, transportation, education and medical care, online communication, shopping, and personal exchanges. Additionally, the CHFS collects basic information on household members, such as age, gender, work, marital status, health, and education level. Given these features, the CHFS database provided good data for this study. Based on the research objectives and index design, we used three-phase data from the 2015–2019 CHFS and removed missing values and samples with household heads younger than 16 years old. To ensure the continuity of the tracking objects, only data from respondents who had participated in each of the three survey periods were retained. Finally, data on 5492 farmers in each period were obtained and merged into balanced panel data.
3.2. Variable Definition
3.2.1. Explained Variable
The explanatory variable in this study is the consumption inequality of farmers. Existing studies mainly use the Gini coefficient or Theil index to describe consumption inequality; however, these studies tend to reflect inequality at the macro rather than the household level. We therefore introduce the concept of “relative deprivation of consumption,” which is based on the theory of relative deprivation and the Kakwani index. The latter is measured by farmer consumption expenditure. We used the Kakwani index to measure farmer consumption inequality [
25]. The smaller the Kakwani index, the lower the household’s relative level of consumption. The specific calculation method is derived by assuming that the number of individuals in the sample group,
X, is
n, and arranging the consumption of farmers in the sample in ascending order. Next, the consumption distribution of the group is
X = (
x1,
x2,…,
xn), and
x1 ≤
x2 ≤ …≤
xn. Therefore, the formula for calculating the relative deprivation of consumption by the
ith individual,
xi, is derived as:
where
is the average consumption of the sample,
is the average calculated according to the individuals in sample
X who consume more than
xi, and
is the proportion of individuals in sample
X who consume more than
xi.
3.2.2. Core Explanatory Variables
The core explanatory variable of this study is DF. Most existing studies on DF use the “Peking University Digital Financial Inclusion Index” (PUDFII), which covers 31 provinces. There are about 2800 counties (districts and county-level cities) in a prefecture-level city; this high number prevents the PUDFII from reflecting the use of DF at the farmer level. Therefore, this study drew on the results of other research [
26] and information from the CHFS database to uncover the use of DF among farmers across four categories: mobile payment, online operation, online loan, and online financial management. To reflect the use of DF by farmers, we assigned the core explanatory variable a value of 1 if farmers used any of these types of DF, a value of 2 if they used two types, and so on.
3.2.3. Other Control Variables
Following the research of Wu et al. [
18], we chose control variables from the three levels of household head personal characteristics, family demographic characteristics, and family economic characteristics. The personal characteristics of the head of the household include age, gender, marital status, and education level. The family demographic characteristics include family size, the proportion of healthy persons in the family, and the dependency ratio of older adults and children. The family economic characteristics include total family income, family net assets, and whether the household is poor. The variable description statistics are specified in
Table 1.
3.3. Model Design
3.3.1. Benchmark Regression Model
Based on the research objectives of this study, combined with the data, and according to the results of the Hausman test, we established that a
p-value of 0.00 would mean rejecting the original hypothesis that the disturbance term was not related to the explanatory variable. We selected a panel two-way fixed-effects model to conduct an empirical analysis on the impact of DF on rural household consumption inequality. The benchmark regression model was constructed as follows:
where
represents the consumption inequality of the
ith farmer in year
t;
represents the use of DF by the
ith farmer in year
t;
represents the relevant control variable of the
ith farmer in year
t; and
is a random error term.
3.3.2. Two-Stage Least Squares Method
As noted above, we used a panel two-way fixed-effects model for a benchmark regression, which alleviates the estimation bias caused by omitted variables. However, consumption inequality among farmers may adversely affect farmers’ use of DF. Therefore, there may be reverse causality in the benchmark model. Accordingly, it was necessary to use the instrumental variable method [
27] to correct the benchmark model. Drawing on relevant research, we adopted the PUDFII [
26] and used the product of the first lag period of DF and the first-order difference of DF as instrument variables [
28] to conduct an endogeneity analysis.
3.3.3. The Mediation Effect Model
While a benchmark regression can test the relationship between DF and rural household consumption inequality, it does not reveal the internal impact mechanism. Therefore, on the basis of the benchmark regression, we employed a mediation effect model to explore the internal mechanism of DF’s impact on farmer consumption inequality [
29,
30]. Specifically, we set the mediation effect model as follows:
First, we regressed Model (3) to test the impact of DF on farmer consumption inequality. The meaning of each variable was consistent with the benchmark regression. Second, we regressed Model (4) to test the impact of DF on the intermediary variables and established that a significant DF coefficient would indicate that DF significantly impacts the intermediary variables. Third, we regressed Model (5) and established that a significant intermediary variable coefficient would indicate that the intermediary variable is effective and that DF development can affect farmer consumption inequality through the intermediary variable.
4. Empirical Results
This section reports the results of our empirical analysis based on the above model setting and data to verify our hypotheses.
4.1. Benchmark Regression
Table 2 reports the results of the benchmark regression of DF on rural household consumption inequality. Column (1) of
Table 2 lists the two-way fixed effects of the control year and household. The regression coefficient was −0.062 and was significant at the 1% level. Each additional unit of DF reduced farmer consumption inequality by 6.2%. Columns (2)–(4) of
Table 2 list the control variables that were gradually included in the basic regression; all results remained significant at the 1% level. The findings show that more intense farmer use of DF correlated with lower farmer consumption inequality.
From the perspective of the control variables, at the household head level, households with male heads had a lower degree of consumption inequality; however, this impact was not significant. Meanwhile, the regression coefficient of the age of household head was significantly positive, which means that the older the household head, and the lower their education level, the smaller the consumption demand and desire and therefore the more serious the consumption inequality of the farmer. Unmarried farmers had a deeper level of consumption inequality. However, after adding the family economic variable, this was no longer significant. This shows that the impact of the household head’s marital status on consumption inequality is also affected by other family economic variables. At the family population level, families with a high proportion of healthy and underage members and large families had lower economic burdens and lower levels of consumption inequality. Further, families with a high child support ratio had high household consumption expenditures and low consumption inequality. The older adult dependency ratio was positively, but not significantly, correlated with famer consumption inequality. At the household economic level, household total incomes and net assets were high, indicating that farmers had sufficient consumption capacity. Notably, increases in income and assets can significantly alleviate the consumption inequality of farmers. Meanwhile, poverty did not significantly impact consumption inequality.
To further analyze the impact of DF on farmer consumption inequality, we divided farmer consumption into two categories, basic consumption and development-oriented consumption [
4], and explored the impact of DF on these categories. The results are shown in
Table 3. Basic consumption includes consumption related to food, clothing, and housing. Developmental consumption includes consumption related to medical care, education and entertainment, household equipment services, transportation and communication, and other forms of consumption. In terms of regression results, the impact of DF on farmer basic consumption inequality and development consumption inequality was significant at the 5% level. Notably, DF more strongly alleviated developmental consumption inequality; the regression coefficient was 0.035. This may be because the consumption elasticity of basic consumer goods is small, and DF has a limited impact on it. Another explanation may be that DF presents farmers with more consumption channels. The popularization of DF broadens consumer visions and increases their willingness to consume more development-oriented goods, especially in areas with severe consumption inequality.
4.2. Endogenity Analysis
Although the two-way fixed-effects model used in the previous benchmark regression can solve the deviation caused by missing variables, it cannot solve the interference of reverse causality in the estimation results. Therefore, we used instrumental variables to alleviate the endogeneity estimation bias, namely the PUDFII, the product of the first lag period of DF, and the first-order difference of DF. First, the PUDFII can reflect the development level of DF in a region. The larger the index, the higher the level of DF development in the region, and the greater the possibility of farmers using DF, which meets the correlation requirements of the instrumental variables. Second, because the PUDFII is a macro index, it is difficult for it to directly affect the consumption inequality of micro farmers and meet the requirements of exogenous instrumental variables.
The instrumental variable estimation results are shown in
Table 4. Column (1) of
Table 4 reports the estimation results of the first stage. The results reveal that both instrumental variables are significantly positively correlated with DF, indicating that in areas with a high DF index, farmers are more likely to use DF. The F value of the one-stage estimate is 177.40, which is significantly larger than 10, excluding the weak instrumental variable problem. The KP-rk-LM statistic was 147.06 and the
p-value was 0.000; accordingly, we rejected the unidentifiable null hypothesis and reasoned that there was a correlation between the instrumental and endogenous variables. Columns (2)–(4) report the second-stage estimation results of the instrumental variables. The
p-values of Hansen’s exogeneity test are all greater than 0.10, which means that we could not reject the hypothesis that the instrumental variables meet the exogeneity requirements. Therefore, the two instrumental variables selected in this study were valid. As
Table 4 shows, after alleviating the endogeneity problems, the role of DF in reducing farmer consumption inequality remained significant at the 1% level, the impact on basic and developmental consumption inequality was significant at the 5% level, and the mitigation effect was stronger for developmental consumption inequality, in step with the benchmark regression results above.
4.3. Robustness Test
To ensure the robustness of the estimation results, we replaced the model for the robustness test [
31]. According to the calculated peasant household consumption inequality index, peasant households with a consumption inequality index greater than or equal to 0.5 experience consumption inequality; we assigned such households a value of 1. Meanwhile, peasant households with a consumption inequality index less than 0.5 do not experience consumption inequality; we assigned such households a value of 0. The panel logit model was used for the robustness estimation, and the estimation results are shown in
Table 5. After changing the model, the impact remained significant, indicating that the regression results were robust.
7. Discussion
The empirical analysis results show that DF can reduce the consumption inequality of farmers and that online shopping and income inequality play intermediary roles. Moreover, the impact effect of DF displays regional, income, and education heterogeneity, which verifies the three research hypotheses put forward above.
7.1. DF Alleviates Farmer Consumption Inequality
On the whole, DF has significantly reduced farmer consumption inequality [
34]. With its inclusive nature, DF helps more low-income farmers to enjoy high-quality financial services. The World Bank has put forward the concept of “inclusive finance” to promote financial services that benefit more people and can help narrow the gap between the rich and the poor in society through financial means. However, because the promotion cost and threshold of inclusive finance is high and the sustainability of such methods is insufficient, their effect is limited. DF’s wide coverage and low threshold solve this problem.
While DF has already spread to numerous households [
35], it remains necessary to accelerate its development and popularize it across central and western China and low-income earners. As part of this work, financial institutions should enrich financial products to meet the needs of farmers of different strata. Furthermore, infrastructure should be constructed and financial knowledge should be taught in developing areas to facilitate access to DF.
7.2. The Heterogeneous Impact of DF on Farmer Consumption Inequality
This study found that DF heterogeneously impacts farmer consumption inequality across different regions, incomes, and education levels [
36]. DF most strongly alleviated farmer consumption inequality in eastern China and among farmers with a low education and income levels. These findings indicate that there is a “digital divide” and a “digital dividend” in DF. Developed areas in eastern China have more complete infrastructures and, relatedly, more mature conditions for the use of DF. Meanwhile, low-income earners and people with low levels of education have been excluded by traditional finance for a long time. It is notable that DF has a greater marginal impact on these groups [
37]. As above, these findings suggest that DF development should be quickened, especially across central and western China, and that DF access should be ensured for low-income earners.
7.3. Impact of DF on Farmers’ Online Shopping and Income Inequality
DF can alleviate farmer consumption inequality by reducing farmer income inequality and increasing their rates of online shopping; specifically, DF can do so by increasing farmers’ income and making transactions more convenient [
38]. The mobile payment function has promoted the rapid popularization of e-commerce online shopping, reduced the consumption cost of farmers, and widened their consumption channels. The online lending and financial services of DF can promote farmer entrepreneurship, employment, and income growth and enhance the consumption capacity of low-income farmers.
The development of DF has improved the convenience of consumption payments, and the convenient payment method has brought changes to the operation and consumption methods of farmers. Therefore, we should pay attention to the welfare brought about by e-commerce platforms to farmers, further promote the popularization and development of e-commerce in rural areas, and improve the consumption level and quality of farmers. In addition, we should continue to focus on enhancing the role played by online financial management and online loans in helping farmers, easing their credit constraints, enriching their income channels, and enhancing their consumption capacity.
8. Conclusions and Future Research
Based on the context of the digital economy and the digital village, this study focused on the impact of DF on farmer consumption inequality. Research hypotheses were proposed after examining the existing literature and empirical tests were carried out using the micro panel data of the CHFS for 2015, 2017, and 2019 to test the hypotheses. Below, we present the conclusions and limitations of the study and directions for further research.
8.1. Conclusions
First, DF has significantly reduced consumption inequality between basic and developmental farmers. By using the instrumental variable method to alleviate the estimation bias caused by endogeneity, we found that these results remained significant and robust. Second, using a mechanism analysis, we found that DF can alleviate farmer consumption inequality by reducing farmer income inequality and increasing payment convenience. Third, our heterogeneity analysis found that DF involves a “digital divide”. Specifically, it most intensely alleviates rural household consumption inequality in eastern China and has a relatively weak impact on groups that have not gone to school.
8.2. Limitations and Prospects
The research in this study provides theoretical and empirical support for further extending the role of DF in alleviating farmer consumption inequality and achieving common prosperity. In doing so, it helps to alleviate the main contradiction of unbalanced social development in China and offers insights useful for other developing countries seeking to alleviate development imbalances.
However, this study had a few limitations. First, because there is no unified authoritative index standard for DF at the micro level, we could only study mobile payments, online finance, and online lending, which were available in the CHFS database. Second, this study only focused on the positive impact of the development of DF on the lives of farmers, based on data availability, and did not take up the risks of DF.
Therefore, future research on the role of DF in reducing farmer consumption inequality should also pay attention to the risks accompanying the rapid development of DF, such as excessive consumption and informal lending, which may lead to a farmers’ credit crisis and affect credit reporting. Therefore, in the process of promoting the development of DF, we also need to establish and improve the financial market supervision system to prevent financial risks.