1. Introduction
Transportation infrastructure development in China is vital for economic growth, promoting social welfare, and achieving regional balance [
1,
2]. It provides physical connectivity through roads, railways, ports, and airports, facilitating trade, investment, and commerce. This enables access to markets, reduces transportation costs, and promotes competition, leading to economic growth [
3,
4]. Transportation infrastructure also plays a crucial role in enhancing access to education, healthcare, and other essential services, especially in rural areas that lack such amenities. Additionally, transportation infrastructure development helps bridge the gap between urban and rural areas, reducing income disparities and promoting regional equalization [
5]. Investment in transportation infrastructure leads to increased efficiency, greater connectivity, and enhanced access to opportunities, contributing to sustainable development in both rural and urban areas [
6].
The transportation infrastructure development in China has been characterized by significant investment and expansion over the past several decades [
7]. In the 1980s, the Chinese government embarked on a series of reforms to modernize and improve the country’s transportation infrastructure, which had been neglected during the Cultural Revolution [
8]. These reforms included decentralization of transportation planning and management, as well as the establishment of new institutions to oversee transportation infrastructure development at the provincial and local levels. Since then, China has made massive investments in transportation infrastructure development, particularly in large-scale projects such as the high-speed rail network and expressways [
9]. This investment has helped to transform the country’s transportation system, greatly increasing connectivity and reducing travel times between major urban centers.
However, there have been persistent disparities in transportation infrastructure investment and development between urban and rural areas. Urban areas have received a disproportionately larger share of investment in transportation infrastructure, leading to a significant urban-rural divide in terms of access to transportation services [
10]. This has contributed to widening income disparities between urban and rural areas, as urban areas have benefited from greater access to opportunities and growth while rural areas have lagged behind [
11]. Despite these challenges, recent years have witnessed increased investment in transportation infrastructure in rural areas, with a focus on improving connectivity and reducing the urban-rural gap. For example, the “New Rural Construction” strategy has been implemented to promote comprehensive rural development, including investments in transportation infrastructure (China releases action plan on rural construction,
https://english.www.gov.cn/policies/latestreleases/202205/24/content_WS628c31bcc6d02e533532b372.html, accessed on 26 March 2023). These efforts aim to enhance the competitiveness of rural industries, increase access to markets, and promote regional balance [
12]. Transportation infrastructure development in China has been marked by significant investment and expansion, but has also been characterized by persistent urban-rural disparities. Efforts to address these disparities through increased investment and optimized planning approaches represent a critical step toward promoting balanced economic development and reducing income disparities in China.
Transportation infrastructure development is a crucial factor affecting regional economic growth and development. However, little is known about the relationship between transportation infrastructure development and income inequality in urban and rural areas of China. This study investigate the mechanisms and effects of transportation infrastructure development in China towards narrowing the income disparities between urban and rural areas. The study seeks to answer the following research questions: What is the impact of transportation infrastructure on the urban-rural income gap in China? How does the level of urbanization mediate the relationship between transportation infrastructure and the urban-rural income gap? What are the pathways through which transportation infrastructure can be used to narrow the income disparities between urban and rural areas in China? This study utilizes a Spatial Dubin model and an intermediary effect test method to analyze the impact of transportation infrastructure on China’s urban-rural income gap, and to investigate the mediating role of urbanization level. The scope of this study covers a time period from 2010 to 2020 and spans 30 provinces in China. The study uses panel data for all 30 provinces in China, allowing for a more comprehensive analysis of the impact of transportation infrastructure development on the urban-rural income gap. Analyze the mechanisms by which transportation infrastructure can be used to narrow income disparities between urban and rural areas, and provide recommendations for policymakers to optimize the impact of infrastructure investments on regional balance in China.
This study has significant implications for policy-makers, practitioners, and scholars interested in transportation infrastructure development and income disparities between China’s urban and rural areas. Empirically, the research provides evidence for the effectiveness of transportation infrastructure in promoting regional balance and reducing income disparities. Theoretically, the findings enhance our understanding of the complex relationship between transportation infrastructure, urbanization, and income disparities. The study offers recommendations for optimizing the impact of transportation infrastructure investments on regional balance, including the need to strengthen cooperation between neighbouring regions and boost urbanization levels. These insights can inform policymakers seeking to promote balanced economic development and reduce urban-rural disparities both in China and other countries with similar challenges. The existing literature on the rural-urban income gap in China tends to overlook the relationship between transportation infrastructure, urbanization, and income disparities. This is a significant gap in the literature, as it fails to consider the interdependent nature of these factors and the potential implications of their integration. Addressing this gap by examining the interplay between transportation infrastructure, urbanization, and income disparities from multiple perspectives could provide a more comprehensive understanding of the issue and inform more effective policies and strategies for reducing rural-urban income disparities in China.
The paper follows a rigorous analytical approach, with a
Section 2 that explores existing studies on transportation infrastructure and income disparities. The
Section 3 explains the sources, variables, and analysis methods employed. In the
Section 4, the study finds that transportation infrastructure can be used to narrow income disparities by mediating the effect of urbanization level. Discussion focuses on policy recommendations for promoting regional balance and reducing income disparities. The paper concludes by summarizing the main findings and discussing limitations and future research directions. Overall, this study offers comprehensive empirical evidence and policy recommendations for policymakers, practitioners, and scholars interested in reducing income disparities in China.
3. Data and Methods
3.1. Data Sources
This study utilizes panel data from 30 provinces, municipalities, and autonomous regions in China over a 20-year period from 2000 to 2020. These data sources were obtained from reputable organizations such as the National Bureau of Statistics, EPS database, the Ministry of Finance, and the State Administration of Taxation. These organizations are well-known for providing reliable and accurate data for academic research. It is important to note that the data from Tibet, Hong Kong, Macao, and Taiwan were not included in the analysis due to difficulties in obtaining these data. Therefore, the study’s findings may not be representative of these regions, and the conclusions drawn from the analysis should not include these territories.
The use of panel data allows for the analysis of trends and changes over time in the different regions, providing a more comprehensive understanding of the phenomenon under investigation. By utilizing data from multiple sources, the study enhances its validity and reliability, as it is less likely to be biased by any one data source. Overall, the utilization of these high-quality data sources allows for a robust examination of the research question, providing insights that can inform policy-making and contribute to the academic literature.
3.2. Variables
Explained variables: The urban-rural income gap, the urban-rural income ratio, and Theil index are commonly used in academic research to measure the disparity in income between urban and rural areas. This paper focuses on the urban-rural income ratio as the dependent variable. It shows that from 2000 to 2021, the urban-rural income gap followed an inverted U-shaped curve, with an initial upward trend, followed by a downturn (
Figure 2). This finding is consistent with the Kuznets hypothesis on income distribution, which proposes that as an economy develops, income inequality initially increases before eventually declining. Thus, this study is interested in examining how various factors contribute to the changes in the urban-rural income ratio over time, using the urban-rural income gap as a starting point. By focusing on the urban-rural income ratio and considering the shifts in the urban-rural income gap, this study aims to provide insights into the dynamics of urban-rural economic development and the factors influencing these trends.
Core explanatory variable: The core explanatory variable in this research study is traffic infrastructure, specifically road infrastructure. Roads play a critical role in connecting rural and urban areas and are vital to overall economic development. They facilitate the movement of goods and people, which is essential to the production and sale of goods. In this study, highways were selected as the most representative type of traffic infrastructure for analysis. The ratio of total highway mileage to land area in each province, municipality, or autonomous region is used as the measure of road infrastructure. This ratio is a useful indicator of the extent of highway development in a given region, with higher ratios indicating more extensive infrastructure development. By including road infrastructure as a core explanatory variable, this study aims to examine how improvements in the quality and quantity of road infrastructure impact the levels of urban-rural income disparity in China over time. This information can provide valuable insights to policymakers and aid in the formulation of policies aimed at reducing such disparities.
Intermediate variable: The intermediate variable used in this study is the level of urbanization, represented by the urbanization rate (UR). The urbanization rate is a commonly used indicator for measuring the level of urbanization by many scholars. It is calculated as the ratio of urban population to the year-end resident population. A higher urbanization rate indicates a greater proportion of a region’s population living in urban areas. This variable is an essential factor in assessing and understanding the overall development of urban and rural areas. An increasing urbanization rate implies changes in economic activities, employment patterns, and social structures, which could impact income distribution and inequality between rural and urban regions. Therefore, this study uses the urbanization rate as an intermediate variable to analyze its impact on the relationship between road infrastructure and the urban-rural income ratio. By taking into account the level of urbanization, this study aims to provide a more comprehensive understanding of how road infrastructure and urbanization drive the dynamics of urban and rural economic development and their influence on the urban-rural income gap.
Control variables: This study includes several control variables to account for potential confounding factors that may impact the relationship between road infrastructure, urbanization, and the urban-rural income ratio.The first variable is the proportion of government expenditure on agriculture (AC), measured as the ratio of government expenditure on agriculture, forestry, water, and general government budget expenditure. This variable is important as it could potentially affect the overall economic growth and development of rural areas. The second variable is foreign trade openness (FTO), which is measured by the ratio of total imports and exports to GDP. A higher FTO ratio suggests a higher degree of economic integration with other countries, potentially resulting in variations in regional development and income distribution. The third variable is agricultural development level (DR), which is expressed by the grain disaster rate, a measure of the area affected by natural disasters relative to the area designated for grain production. This variable is included as it could potentially affect agricultural productivity and cause disparities in rural incomes. The fourth variable is rural infrastructure level (HEAL), which is represented by the number of village and town clinics. Greater investment in healthcare infrastructure in rural areas can improve the health and well-being of rural residents, potentially contributing to economic growth and reduced income inequality. Finally, gross domestic product (GDP) growth rate is included as a control variable, representing the overall economic development of the region. By including these control variables, this study aims to account for potential confounding factors that might otherwise affect the relationship between road infrastructure, urbanization, and the urban-rural income ratio. Descriptive statistics of each variable are presented in the study for thorough analysis.
Table 1 provides information on the variables in the study and their descriptive statistics. The selection of variables in this study is based on existing research on urban-rural income disparities, with previous studies indicating that road infrastructure, urbanization, government expenditure on agriculture, foreign trade openness, agricultural development, rural infrastructure, and economic growth are key factors in determining income gaps in China. Road infrastructure is particularly important in connecting rural and urban areas, while urbanization rates could signal changes in economic activity, employment patterns, and social structures that impact income inequality. The inclusion of control variables, such as government expenditure on agriculture, foreign trade openness, agricultural development level, rural infrastructure level, and GDP growth rate, further enhances the study’s reliability and comprehensiveness in analysing the dynamics of urban and rural economic development and their effect on the urban-rural income gap in China.
3.3. Spatial Dubin Model
The Spatial Dubin Model (SDM) is a type of spatial point process model that was first introduced by Dubin (1978) to study the distribution of crime incidents in Los Angeles. It has since been applied to a wide range of other areas, including ecology, epidemiology, and transportation. The spatial Dubin model assumes that the underlying spatial point process of interest is a Poisson point process with an intensity function that depends on both the distance between points and the covariates associated with the points [
50]. The model also assumes that the distances between points follow a bivariate normal distribution, and that the covariance structure of the distance distribution can be described by a correlation parameter. Let Y be a spatial point process with points located in a region D. The spatial Dubin model assumes that the log of the intensity function of Y can be represented as a linear combination of covariates X and a distance function d(Y), i.e.,
where λ(Y) is the intensity function of the point process, β is a vector of regression coefficients, ϕ is a parameter that controls the strength of the distance effect, and d(Y) is the minimum distance between any pair of points in the set Y.
There are several methods for estimating the parameters of the spatial Dubin model, including maximum likelihood estimation (MLE), Bayesian inference [
51], and Markov chain Monte Carlo (MCMC) methods [
52]. MLE involves maximizing the likelihood of the observed data under the spatial Dubin model, while Bayesian inference involves determining the posterior distribution of the model parameters given the data and prior information. MCMC methods generate samples from the posterior distribution using iterative simulation, and can be used to estimate both the parameters and their uncertainties. In summary, the spatial Dubin model is a flexible and useful tool for analyzing spatial point patterns that incorporates both covariate effects and distance effects. Its assumptions, mathematical formulation, and estimation methods make it applicable to a wide range of fields and research questions.
According to existing research, there is a strong spatial correlation between transport infrastructure and the urban and rural income gap in China. To accurately model this spatial correlation, we turned to the spatial Dubin model (SDM), which includes both endogenous and exogenous interaction models. Unlike other spatial econometric models, the SDM can account for spatial correlation when variables are missing, leading to more precise regression results. For this reason, we used the SDM to test our regression.
Our regression model, as shown in Equation (1), examines the relationship between the urban-rural income gap (Gap) and road infrastructure (Road) as well as other control variables (X). We employed a spatial weight matrix (Wij) to capture the spatial dependencies among our observations. Additionally, we included individual effects (μi), time effects (σt), and an error term (εit) to control for unobserved heterogeneity and measurement errors.
Our study covers 30 provincial administrative regions in China (excluding Tibet, Hong Kong, Macao, and Taiwan) from 2010 to 2019. By leveraging the SDM, we aim to develop a better understanding of the impact of road infrastructure on the urban-rural income gap. Through our analysis, we hope to provide insights that can inform policy decisions aimed at reducing income disparities in urban and rural areas.
3.4. Intermediary Effect Model
The intermediary effect model is a statistical technique used to explore how an intermediate variable mediates the relationship between an exposure variable and an outcome variable [
53]. In other words, it examines how much of the effect of the exposure variable on the outcome variable is explained by changes in the intermediate variable. The intermediary effect model assumes that the exposure variable affects the intermediate variable, which in turn affects the outcome variable. It also assumes that there are no unmeasured confounders that can influence both the exposure and outcome variables.
Suppose we are interested in studying the relationship between an exposure variable X, an intermediate variable M, and an outcome variable Y. The intermediary effect model can be expressed using the following regression equations:
where α
0, α
1, β
0, β
1, and β
2 are coefficients to be estimated, and ε
1 and ε
2 are error terms. The coefficient β
2 represents the direct effect of the intermediate variable M on the outcome variable Y, while the product of α1 and β
2 represents the indirect effect of the exposure variable X on the outcome variable Y through the mediator M. The total effect of X on Y is the sum of the direct and indirect effects.
There are several methods for estimating the parameters of the intermediary effect model, including least squares regression and structural equation modeling (SEM) [
54]. Least squares regression involves regressing both the intermediate and outcome variables on the exposure variable, and then calculating the indirect effect as the product of the corresponding coefficients. SEM is a more flexible approach that allows researchers to specify more complex models and test for additional hypotheses. In summary, the intermediary effect model is a useful tool for investigating how an intermediate variable mediates the relationship between an exposure variable and an outcome variable. Its assumptions, mathematical formulation, and estimation methods make it applicable to a variety of research questions in fields such as epidemiology, psychology, and social sciences.
In this study, we employed intermediary effect model to analyze how an intermediate variable mediates the relationship between an exposure variable and an outcome variable. In the context of transportation infrastructure, urbanization level can act as an intermediary variable that affects income disparities between urban and rural areas in China. The equations of intermediary effect model in this study is;
where, UR
it is the intermediary variable: urbanization level. The intermediary effect test steps are as follows. Step 1, test Equation (1), if the regression coefficient β
1 Significant, indicating that the improvement of transport infrastructure can directly narrow the urban-rural income gap; Otherwise, stop the inspection. Step 2: Test Equations (2) and (3), if the regression coefficient α
1 and γ
2 are significant, indicating that there is a mediating effect; If the regression coefficient α 1 and γ If there is an insignificant value in 2, it needs to be further tested with Bootstrap method.
where, Gap
it is rural-urban income gap,
In addition, if the regression coefficient in Equation (3) γ1 Not significant γ2. Significant, indicating that the level of urbanization has a complete intermediary effect; If the regression coefficient γ1 and γ2 are significant, indicating that the level of urbanization has a partial intermediary effect.
4. Results and Discussions
4.1. Spatial Correlation Test
To employ the spatial Dubin model for regression, it is necessary to test whether the urban-rural income gap exhibits spatial correlation by using the Moran index. The calculation formula for the Moran index is presented below as formula (4):
In the above formula, S2 denotes the sample variance, which represents the sample mean while Y
i and Y
j represents the observations of the ith and jth regions, respectively. Additionally, w
ij is the spatial weight matrix.
Table 2 presents the global Moran’s I index and the corresponding statistical test results. It indicates the Moran’s I index of the urban-rural income gap between 2010 and 2020. It is clear from the table that the urban-rural income gap exhibits a significant level of spatial correlation, as indicated by the Moran’s I index, suggesting that neighboring regions with similar income levels are likely to cluster together. This information is essential for informing the appropriate modeling techniques and ensuring the validity of the spatial Dubin model in analyzing the relationship between the urban-rural income gap and various explanatory variables.
The analysis of the Moran’s I index for urban-rural income gap between 2010 and 2020 suggests a significant level of spatial correlation, with an overall value that is significantly positive at a 1% significance level. This indicates that changes in the urban-rural income gap within each region are positively correlated on a global scale, with neighboring regions exhibiting similar urban-rural income levels. In
Table 2, the range of Moran’s I indices is from 0.258 to 0.402, which suggests a moderate to strong positive spatial autocorrelation of the urban-rural income gap across provinces in China.
Moreover, the overall Moran’s I index for urban-rural income gap reveals a fluctuating downward trend between 2010 and 2020, suggesting that the spatial dependence of changes in the urban-rural income gap across different regions is gradually weakening over time. This observation highlights a potential shift towards greater income equality between urban and rural areas in China. However, it is important to note that despite a reduction in the strength of spatial dependence, there still remains a significant level of spatial correlation. Hence, further research is needed to investigate the underlying factors driving the observed changes in the urban-rural income gap and identify measures to promote equitable development across regions in China.
4.2. Local Correlation Test
While global correlation provides insights into the correlation of a given space as a whole, it may overlook spatial heterogeneity in local areas. To overcome this limitation, local spatial autocorrelation measures can be employed to evaluate different spatial aggregation patterns that potentially exist across disparate regions. The precise calculation formula for local spatial autocorrelation is presented as Equation (5):
Specifically, Wij denotes the spatial weight matrix; Xi and Xj represent the attribute values of a given region I and its corresponding neighboring region j, respectively. Moreover, Xi and Xj are indicators of expected average values for these attributes. Additionally, N represents the total number of provinces or regions included in the study.
Two Moran scatterplots,
Figure 3 and
Figure 4, were generated based on Equation (5) to analyze the spatial patterns of the urban-rural income gap in 2010, 2014, 2017, and 2020. As shown in the figures, the Moran scatter map is divided into four quadrants. Quadrants I and III indicate that the observations in a given region are similar to those of its surrounding areas, while Quadrants II and IV suggest that they differ.
Specifically, quadrant I corresponds to “high high” clustering, meaning regions with relatively high urban-rural income levels cluster together. Quadrant II is indicative of “low high” clustering, where regions with low urban-rural income gaps form clusters next to regions with high gaps. Quadrant III corresponds to “low low” clustering, suggesting that regions with low urban-rural income gaps are clustered together. Finally, quadrant IV corresponds to “high low” clustering, indicating that regions with high urban-rural income gaps cluster together.
As observed in both
Figure 3 and
Figure 4, most of the data points fall in quadrants I and III, implying that regions with either large or small urban-rural income gaps tend to form clusters in space. This suggests that urban-rural income gap clustering is more common than regions that exhibit a mix of urban-rural income gap levels. These observations have important implications for policymakers seeking to promote regional equality and development in China.
4.3. Spatial Spillover Effect Test
Before proceeding to regression, Wald and LR tests were conducted to ascertain whether the original hypothesis could be simplified into either a spatial panel error model or spatial panel lag model. The tests conducted showed that the original hypothesis was rejected at a 1% significance level, indicating that neither of the models are suitable for analysis. Furthermore, a Hausman test was carried out and at a significant level of 1%, it rejected the original hypothesis, suggesting that the random effect could not be considered. Therefore, to address this issue, this paper selected the spatial Dubin fixed effect model as the most appropriate approach for the analysis. This model is likely to provide more accurate results in terms of evaluating the potential spatial spillover effects involved in the urban-rural income gap across different regions in China.
Based on the results presented in
Table 3, it is evident that the direct and indirect effects of transportation infrastructure on the urban-rural income gap are negative and significant. Furthermore, the indirect effect, which represents the spatial spillover effect, is significantly greater than the direct effect. The indirect effect coefficient has a value of −0.9065 and is statistically significant at a 1% level, unlike the comparatively smaller direct effect of −0.099. These findings suggest that transportation infrastructure has a substantial spatial spillover effect in reducing the urban-rural income gap. These results corroborate the findings of a great deal of the previous work in spatial spillover effects of transport infrastructure [
47]. Specifically, infrastructure projects implemented in a given region can have a ripple effect on surrounding areas, contributing to a decrease in the income gap between urban and rural residents. These results are consistent with hypothesis H1, demonstrating the potential for transportation infrastructure development as an effective strategy for promoting regional equity and bridging income gaps across China.
4.4. Robustness Test
To enhance the credibility of the regression results derived from the spatial Dubin model, this study sought to assess their robustness using three different spatial weight matrices: w1 geographical adjacency matrix, w
2 inverse distance matrix, and w3 reciprocal square sum of geographical distance matrix.
Table 4 provides an overview of the regression outcomes obtained from the spatial Dubin model based on these different spatial weight matrices.
Table 4 reveals that all three spatial weight matrices produced positive spatial autoregressive coefficients (Spa rho) for both urban and rural income variables, which were significant at a statistical level of 1%. This indicates a significant positive spatial relationship between provinces in terms of their urban-rural income gaps, as well as a clear spatial spillover effect. Furthermore, the spatial lag term for transport infrastructure was found to be negative, suggesting a negative spatial spillover effect. Thus, the development of transport infrastructure in neighboring provinces can restrain the expansion of the urban-rural income gap in a given province, thereby playing a role in narrowing the gap. The results of the regression analysis, using various spatial weight matrices, reveal significant negative coefficients for transport infrastructure, with a statistical significance level of 1%. These findings suggest that investments in transport infrastructure can play a crucial role in reducing the income gap between urban and rural areas. This finding confirms the reliability and robustness of the spatial Dubin model applied in the study. This study supports evidence from previous observations [
11,
34].
4.5. Intermediary Effect of Urbanization
To obtain a clearer understanding of the direct and indirect effects of the spatial panel Dubin model’s parameter estimates, further decomposition is required using the partial differential method. In Model 3, the results indicate that transportation infrastructure has a significant indirect effect on urbanization levels, implying that infrastructure development can stimulate urbanization in surrounding areas through a radiating effect. These results match those observed in earlier studies [
55]. The study employed the stepwise regression method to examine the intermediary effect of the urbanization level based on Models 2, 3, and 4.
The intermediary effect test based on the geographical adjacency matrix (w
1) involved three key steps. In the first step, the study used a formula to examine the impact of transportation infrastructure on the urban-rural income gap, obtaining the first column of Model 2 in
Table 4. The results demonstrated statistical significance at a level of 1%, indicating that transportation infrastructure can effectively reduce the urban-rural income gap, thereby supporting hypothesis H1. The second step involved utilizing equation 2 to evaluate the influence of transportation infrastructure on the urbanization level, resulting in the first column of Model 3 in
Table 5. The findings revealed a statistically significant relationship at a level of 10%. This suggests that transportation infrastructure development can promote urbanization levels and supports the original hypothesis H2. For the final step, the study used equation 3 to examine the combined impact of transportation infrastructure and urbanization levels on the urban-rural income gap. The results demonstrated statistical significance at a level of 1%, with regression coefficients showing a negative relationship. This indicates that urbanization levels play an intermediary role in this relationship, with the proportion of intermediary effects estimated to be α one γ 2/β 1 = 5.3%. Therefore, hypothesis H2 was verified: transportation infrastructure can improve the level of urbanization.
Transportation infrastructure can also contribute to narrowing the urban-rural income gap by accelerating the pace of urbanization, consistent with research conducted by Mishra and Agarwal (2019) [
56]. Financial support for agriculture, as a control variable, has a positive impact on the urban-rural income gap. However, it may face several challenges in the process, such as the allocation of multiple projects, decentralized distribution of funds, and limited management capacities, which could lead to insufficient funding for the agricultural sector. In contrast, foreign trade appears to have a significant impact on reducing the income gap between urban and rural areas. Firstly, foreign trade creates employment opportunities for rural residents, thereby increasing their wage income. Secondly, it provides farmers with a larger market to sell their agricultural products, increasing their productive income. Thus, foreign trade can help boost the income of rural residents and narrow the urban-rural income gap.
The effect of the crop disaster rate on the urban-rural income gap was found to be insignificant. This could be because high rates of crop disasters reduce farmers’ enthusiasm to grow crops, resulting in a reduction in their income. Moreover, the coefficient of rural infrastructure development was found to be significantly negative, indicating that it can play an essential role in providing improved production and living conditions for farmers, thereby increasing their income and contributing towards narrowing the urban-rural income gap. Lastly, the study indicated that GDP has an insignificant impact on the urban-rural income gap, suggesting that GDP growth is more effective in promoting overall income growth among urban and rural residents than in reducing poverty.
5. Conclusions and Policy Implication
The objective of economic development is to achieve common prosperity for all, which involves improving the national income level and reducing the income gap between urban and rural residents. This study provides an in-depth analysis of the current situation of the urban-rural income gap in China. Firstly, the study calculates the urban-rural income ratio, which reveals an inverted U-shaped curve, with the income gap peaking in 2007 and gradually decreasing thereafter. This indicates that recent policies on urbanization development and rural governance have begun to show positive results. Secondly, the study uses the Moran index to conduct a spatial correlation test, demonstrating significant spatial correlation in the urban-rural income gap levels. Regions with large or small income gaps tend to cluster together. Thirdly, based on different spatial weight matrices, robustness and spatial spillover tests were conducted, demonstrating that transport infrastructure is not only vital in narrowing the urban-rural income gap within a province but also promotes the reduction of the income gap in neighbouring provinces through spatial spillover effects. The robustness results further support this conclusion. Finally, the study examines the intermediary effect based on the level of urbanization. The results indicate that urbanization has a beneficial role in the impact of transport infrastructure on the urban-rural income gap, playing a part as an intermediary in the relationship.
These findings have important implications for policymakers aiming to promote the common prosperity of all people by narrowing the urban-rural income gap in China. It suggests that developing transport infrastructure and supporting rural governance can facilitate the narrowing of the income gap and contribute to the achievement of the goal of common prosperity. Based on the study’s conclusions, several policy implications can be drawn. Firstly, policymakers must prioritize the construction of transportation infrastructure, specifically highway infrastructure development. It is essential to decrease the differences in transportation infrastructure construction between urban and rural areas and focus on constructing village and township roads that are closely linked to farmers, thereby enhancing rural travel conditions. Secondly, it is essential to invest in and construct highway infrastructure in areas where the urban-rural income gap is significantly high to increase the marginal income generated from transportation infrastructure construction. This will maximize the role of transportation infrastructure in narrowing the urban-rural income gap. Lastly, the study recommends strengthening the construction of other public infrastructure in rural areas and refining the function of urbanization. Policymakers must strive to break the urban-rural dual structure, promote equal distribution of economic growth benefits among all citizens, and establish a strong foundation for the achievement of common prosperity. Overall, these policy implications highlight the critical role of infrastructure development in reducing the urban-rural income gap and achieving common prosperity for all people in China.
The study has several limitations that could be addressed in future research. Firstly, the analysis only focuses on the impact of transport infrastructure on the urban-rural income gap and does not consider other factors that could also play a role, such as education, health care, or social welfare policies. Future studies could adopt a more comprehensive approach and explore the impact of multiple factors on the urban-rural income gap. Secondly, the study analyzes the spatial correlation and spillover effects of transport infrastructure on the urban-rural income gap, but it does not delve into the mechanisms through which these effects occur. Future research could investigate the mechanisms and pathways that link transport infrastructure and the urban-rural income gap to provide policymakers with more practical guidance. Thirdly, the study employs panel data from 2010 to 2020, which may not fully capture the impact of recent policies addressing the urban-rural income gap, such as the targeted poverty alleviation campaign. Using more up-to-date data would allow researchers to gain a better understanding of the current situation and assess the effectiveness of new policies. Lastly, while the study provides valuable insights for policymakers, its focus is limited to China’s specific context, and caution should be taken when applying the findings to other countries or regions with different social and economic characteristics. Therefore, future research could expand beyond China’s context and test the generalizability of the current findings. Additionally, future studies could employ more advanced econometric methods to address potential endogeneity issues and improve the robustness of the results.