Relationship Model between Human Resource Management Activities and Performance Based on LMBP Algorithm

Qiang Liu, Zhongwei Zhao
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引用次数: 1

Abstract

The research on the relationship between human resource management activities and performance is an important topic of enterprise human resource management research. There are some errors between the relationship between human resource management activities and performance and the real situation, so it is impossible to accurately predict the performance fluctuation. Therefore, the relationship model between human resource management activities and performance based on the LMBP algorithm is constructed. Using the Levenberg–Marquardt (LM) algorithm and BP (back-propagation) neural network algorithm to establish a new LMBP algorithm, control the convergence of the new algorithm, optimize the accuracy of the algorithm, and then apply the LMBP algorithm to predict the risk of performance fluctuation under human resource management activities of enterprises, the indicators of human resource management activities of enterprises are determined, to complete the mining of enterprise performance data, the grey correlation analysis is combined, and the relationship model between human resource management activities and performance is built. The experimental samples are selected from CSMAR database, and the simulation experiment is designed. Using different algorithms to forecast the fluctuation of enterprise performance, the experimental results show that the LMBP algorithm can more accurately reflect the relationship between enterprise HRM and performance.
基于LMBP算法的人力资源管理活动与绩效关系模型
人力资源管理活动与绩效关系的研究是企业人力资源管理研究的一个重要课题。人力资源管理活动与绩效的关系与实际情况存在一定误差,无法准确预测绩效波动。因此,构建了基于LMBP算法的人力资源管理活动与绩效的关系模型。利用Levenberg-Marquardt (LM)算法和BP(反向传播)神经网络算法建立新的LMBP算法,控制新算法的收敛性,优化算法的准确性,然后应用LMBP算法预测企业人力资源管理活动下绩效波动的风险,确定企业人力资源管理活动的指标,完成企业绩效数据的挖掘。结合灰色关联分析,建立人力资源管理活动与绩效的关系模型。从CSMAR数据库中选取实验样本,设计仿真实验。利用不同的算法预测企业绩效波动,实验结果表明LMBP算法能更准确地反映企业人力资源管理与绩效之间的关系。
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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