Performance evaluation model of cross border e-commerce supply chain based on LMBP feedback neural network

Ling Tan
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Abstract

In recent years, with the support of national policies, Cross Border E-Commerce (CBEC) has developed rapidly. This business model not only brings significant benefits to the national economy, but also has many unique challenges, especially at the level of supply chain management. Therefore, to enable CBEC enterprises to develop sustainable supply chain, this study discusses the performance evaluation model of supply chain and proposes a CBEC Supply Chain Performance Evaluation Model (CBECSC-EM) based on the Levenberg-Marquardt Backpropagation (LMBP) algorithm. This experiment constructs performance evaluation indicators for the supply chain of CBEC enterprises. On this basis, the LMBP algorithm is introduced, and improved in the experiment to make the overall performance of the evaluation model more scientific and reasonable. In the verification set, the maximum F1 values of LMBP, DEA, SBM, and BP are 98.46%, 93.78%, 87.29%, and 78.95%, respectively. The MAPE value of LMBP model is 0.102%, which is lower than the other three methods (0.282%, 0.343%, and 0.385%) selected in the experiment. The maximum standard deviation rates of importance and operability of the evaluation indexes are 0.1346 and 0.1405, respectively, and there is a significant consistency between the expert scores. Therefore, the LMBP algorithm has broad application prospects in supply chain performance evaluation of CBEC enterprises.
基于LMBP反馈神经网络的跨境电子商务供应链绩效评价模型
近年来,在国家政策的支持下,跨境电子商务发展迅速。这种商业模式在为国民经济带来巨大效益的同时,也面临着许多独特的挑战,尤其是在供应链管理层面。因此,为了使CBEC企业能够发展可持续的供应链,本研究对供应链绩效评价模型进行了探讨,提出了基于Levenberg-Marquardt反向传播(LMBP)算法的CBEC供应链绩效评价模型(cbecc - em)。本实验构建了CBEC企业供应链绩效评价指标。在此基础上,引入了LMBP算法,并在实验中进行了改进,使评价模型的整体性能更加科学合理。在验证集中,LMBP、DEA、SBM和BP的最大F1值分别为98.46%、93.78%、87.29%和78.95%。LMBP模型的MAPE值为0.102%,低于实验中选择的其他三种方法(0.282%、0.343%和0.385%)。评价指标的重要性和可操作性的最大标准差率分别为0.1346和0.1405,专家评分之间存在显著一致性。因此,LMBP算法在CBEC企业供应链绩效评价中具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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