决策树在基层员工离职问题中的应用——以C-R集团为例

Xiaohui Qu
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引用次数: 4

摘要

员工流失是企业员工管理中最为紧迫的问题之一。以往对员工流失问题的研究,在对流动率高的生产线上的员工进行管理、监督和预防方面没有及时取得成功。本研究以C-R集团连锁零售店的员工数据为例,收集2014年华东某城市的所有员工信息,建立挖掘数据库(N=5277)。采用数据挖掘的C4.5决策树对企业门店员工离职情况进行研究。通过计算得到6条门店人员流失率规律,并将结果与非重复验证数据库(N=1066)进行百分比比对检验。两种数据库在所有6条规则上没有显著差异。根据研究结果,对该企业员工流失的原因及预防措施进行了探讨。同时,建议数据挖掘技术在人力资源管理(HRM)领域的进一步应用和发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A decision tree applied to the grass-roots staffs' turnover problem —take C-R Group as an example
Staff turnover is one of the most pressing problems in enterprises' staff management. The former studies on the problem of staff turnover did not succeed timely in the managing, supervising and preventing of the staff on the production line that have great turnover flow. Taking the staff data of the chain retail stores of the C-R Group as an example, collecting all the information of the staff at some city in east China in 2014, this research established a mining database (N=5277). What's more, it adopted the C4.5 decision tree of a data-mining to research the staffs' turnover situation of the enterprise's stores. Six rules of the turnover of staff in the stores are obtained by calculation, then the results were tested with the non-repetitive verification database (N=1066) by percentage comparison. There were no-significant differences between the two databases to all six rules. According to the result of the research, the reason and precautions of the staff turnover of this enterprise are explored. At the same time, it is recommended that the data mining technology can be further applied and developed in the field of Human Resource Management (HRM).
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