International College, Guangxi University, Nanning 530004, China.
School of Mathematics and Information Science, Guangxi University, Nanning 530004, China.
Comput Intell Neurosci. 2022 Jul 4;2022:8500662. doi: 10.1155/2022/8500662. eCollection 2022.
The research performed here intends to explore the future development model of new rural financial institutions and determine the financial efficiency goals, thereby providing a huge stage for the development of new rural financial institutions. It applies data envelopment analysis (DEA) to assess financial efficiency to make up for the research gap. First, the relevant theories of rural finance are discussed. Then, some indicators are selected to build an evaluation system. In addition, the DEA method is used to evaluate the rural financial efficiency in Hebei Province by listing the input indexes and output indexes. After training, the backpropagation neural network (BPNN) model is designed and simulated to obtain the evaluation results. The research results show that before 2015, the comprehensive efficiency of Xingtai, Hengshui, Shijiazhuang, and Langfang showed a downward trend. After 2015, the comprehensive efficiency of all cities in Hebei Province tended to be stable, generally stable at about 0.95. It suggests that rural finance in Hebei Province has developed stably in recent years, and the overall efficiency of rural finance has been improved to a certain extent. The simulation results of BPNN demonstrate that the operation efficiency evaluation result of the poverty alleviation development model in the financial support industry is 0.6995, in the interval (0.6, 0.8). In addition, the model operation efficiency is better, indicating that the poverty alleviation development model of the financial support industry has achieved good results and promoted the development of poor rural areas. The research content can provide reference and inspiration for the continuous promotion of rural finance and the formulation and implementation of financial institution reform policies.
本研究旨在探索新型农村金融机构的未来发展模式,并确定金融效率目标,为新型农村金融机构的发展提供广阔的舞台。应用数据包络分析(DEA)评估金融效率,弥补了研究空白。首先,探讨了农村金融的相关理论。然后,选择了一些指标来构建评估体系。此外,采用 DEA 方法,通过列出投入指标和产出指标,对河北省农村金融效率进行评估。经过训练,设计并模拟了反向传播神经网络(BPNN)模型,以获得评估结果。研究结果表明,2015 年以前,邢台、衡水、石家庄和廊坊的综合效率呈下降趋势。2015 年以后,河北省所有城市的综合效率趋于稳定,普遍稳定在 0.95 左右。这表明近年来河北省农村金融发展稳定,农村金融整体效率得到了一定程度的提高。BPNN 的模拟结果表明,金融支持产业扶贫发展模式的运行效率评价结果为 0.6995,处于(0.6,0.8)区间内。此外,该模型的运行效率较好,表明金融支持产业扶贫发展模式取得了良好的效果,促进了贫困农村地区的发展。研究内容可为农村金融的持续推进和金融机构改革政策的制定和实施提供参考和启示。