School of Economics and Trade, Fujian Jiangxia University, Fuzhou, China.
Fujian Southeast Digital Economy Research Institute, Fuzhou, China.
PLoS One. 2024 Nov 15;19(11):e0310846. doi: 10.1371/journal.pone.0310846. eCollection 2024.
Clarifying the spatiotemporal structure and driving mechanism of China's digital village construction (DVC) is imperative for ameliorating regional disparities and fostering the holistic progression of DVC in China. This study assesses the index of DVC in 30 Chinese provinces from 2011 to 2021 using the Intuitionistic Fuzzy Analytic Hierarchy Process (IFAHP) and dynamic GRA. It analyzes the spatiotemporal structure of DVC with kernel density, trend surface, and social network analysis techniques. Additionally, it employs Geodetector to elucidate the driving mechanism behind spatial differentiation in China's digital village development network. The results indicate that: (1) Although the index of DVC in China from 2011 to 2021 has shown progressive enhancement, the average DVC index for all regions throughout the years surveyed stands at 0.457, which means that the DVC in China is still at an early stage. (2) The overall network structure analysis suggests that the number of ties in China's DVC spatial correlation network grew slowly but still falls significantly short of the ideal number. Additionally, there is an increase in the network density of China's DVC over the years, providing strong evidence of spatial spillover effects within the network. (3) The block roles of the central and western regions are main inflow and bidirectional spillover while the block roles of the eastern region are agent and main outflow. (4) The main driving factors of DVC in China are investment in information infrastructure and fiscal expenditure on education. Bivariate enhancement effect and nonlinear enhancement were found to exist in all interactions of indicators. These findings offer theoretical insights and practical directives for improving DVC in China and its synergistic effects.
厘清中国数字乡村建设(DVC)的时空结构和驱动机制,对于改善区域差异、促进中国数字乡村建设的整体发展具有重要意义。本研究运用直觉模糊层次分析法(IFAHP)和动态 GRA 对 2011 年至 2021 年中国 30 个省份的 DVC 指数进行了评估。通过核密度、趋势面和社会网络分析技术,分析了 DVC 的时空结构。此外,采用地理探测器阐明了中国数字乡村发展网络空间分异的驱动机制。结果表明:(1)尽管中国 2011 年至 2021 年 DVC 指数呈递增趋势,但历年平均 DVC 指数为 0.457,表明中国的 DVC 仍处于起步阶段。(2)总体网络结构分析表明,中国 DVC 空间相关网络中的关系数量增长缓慢,但仍远低于理想数量。此外,中国 DVC 的网络密度逐年增加,有力地证明了网络内存在空间溢出效应。(3)中、西部地区的区块角色主要为流入和双向溢出,而东部地区的区块角色主要为主体和流出。(4)中国 DVC 的主要驱动因素是信息基础设施投资和教育财政支出。在所有指标的相互作用中,都发现了双变量增强效应和非线性增强效应。这些发现为提高中国的 DVC 及其协同效应提供了理论见解和实践指导。