基于大数据改进 GWO-DELM 算法的员工绩效管理方法研究

Zhuyu Wang, Yue Liu
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摘要

引言:准确客观的人力资源绩效管理评价方法,有利于全面了解教师的真实客观情况,有利于发现教师的管理水平、教学水平和学术水平,使教师管理者对教师中存在的差距和问题有清晰的认识:针对目前人力资源绩效管理评价方法中,存在评价指标存在客观性不强、精度差、方法单一等问题.方法:本研究提出了一种基于智能优化算法的提高学习机网络深度极限的人力资源绩效管理评价方法.(1)通过分析当前人力资源绩效管理中存在的问题,选取人力资源绩效管理评价指标,构建人力资源绩效管理评价体系;(2)通过多策略灰狼优化算法方法改进深度学习网络,构建高校人力资源绩效管理评价模型;(3)通过仿真实验分析验证了所提方法的高精度和实时性。结果:结果表明,所提方法提高了评价模型的精度,改善了预测时间。结论:本研究解决了人力资源绩效管理评价精度低、系统指标非客观等问题。
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Research on Employee Performance Management Method Based on Big Data Improvement GWO-DELM Algorithms
INTRODUCTION: Accurate and objective human resources performance management evaluation methods are conducive to a comprehensive understanding of the real and objective situation of teachers, and are conducive to identifying the management, teaching and academic level of teachers, which enables teacher managers to have a clear understanding of the gaps and problems among teachers. OBJECTIVES: Aiming at the current human resources performance management evaluation method, there are evaluation indexes exist objectivity is not strong, poor precision, single method and other problems. METHODS: This research puts forward an intelligent optimisation algorithm based on the improvement of the depth of the limit of the learning machine network of human resources performance management evaluation method. (1) Through the analysis of the problems existing in the current human resources performance management, select the human resources performance management evaluation indexes, and construct the human resources performance management evaluation system; (2) Through the multi-strategy grey wolf optimization algorithm method to improve the deep learning network, and construct the evaluation model of the human resources performance management in colleges; (3) The analysis of simulation experiments verifies the high precision and real-time nature of the proposed method. RESULTS: The results show that the proposed method improves the precision of the evaluation model, improves the prediction time. CONCLUSION: This research solves the problems of low precision and non-objective system indicators of human resource performance management evaluation.
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