Providing a Hybrid Clustering Method as an Auxiliary System in Automatic Labeling to Divide Employee into Different Levels of Productivity and their Retention

IF 0.8 Q4 MANAGEMENT
Seyed Alireza Mousavian, A. Haeri, F. Moslehi
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引用次数: 1

Abstract

Identifying productive employees and analyzing their turnover by data mining tools without human intervention is an attractive research field in human resource management. This study develops an innovative auxiliary system for automatic labeling of numerical data by providing a hybrid clustering algorithm of K-means and partition around medoids (PAM) methods to identify organizational productive employees and to divide them into different productivity levels. The model is evaluated by calculating the differences between actual and labeled values (93% labeling accuracy) and an innovative criterion for image processing of the final clusters using the singular value decomposition (SVD) algorithm. Ultimately, the results of the algorithm determine four labels of middle and good productive employees who leave the organization and excellent and weak productive employees who stay in the organization. According to each cluster, policies are adopted for their retaining, productivity improvement, replacement.
提供一种混合聚类方法作为自动标注的辅助系统,将员工划分为不同的生产力水平和留任率
在没有人为干预的情况下,通过数据挖掘工具识别有生产力的员工并分析他们的离职率是人力资源管理领域的一个有吸引力的研究领域。本研究开发了一个创新的数字数据自动标注辅助系统,通过提供K-means和药物分割(PAM)方法的混合聚类算法来识别组织生产性员工,并将他们划分为不同的生产水平。通过计算实际值和标记值之间的差异(93%的标记精度)以及使用奇异值分解(SVD)算法对最终聚类进行图像处理的创新标准来评估该模型。最终,算法的结果确定了四个标签,即离开组织的中等和良好生产力员工以及留在组织的优秀和弱生产力员工。根据每个集群,采取了保留、提高生产力和更换的政策。
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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20 weeks
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