基于MCDM方法和机器学习算法的员工流失预测

Shefayatuj Johara Chowdhury, Md. Mainul Islam Mahi, S. A. Saimon, Aynur Nahar Urme, Rashidul Hasan Nabil
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引用次数: 1

摘要

员工流失是组织维持成本效益地位和品牌战略的一个值得注意的麻烦。本研究提出了一种系统克服这一问题的综合方法。通过结合机器学习算法和多标准决策(MCDM)技术,将本研究中的所有员工分为三类。对理想解相似偏好排序法(TOPSIS)和层次分析法(AHP)进行了综合研究。检索数据集的特征重要性,并使用AHP来确定导致最多营业额的标准。TOPSIS给出了从AHP中导出的标准权重,根据每个人员离开组织的倾向对其进行排名。为了估计员工流动率,使用了七种机器学习算法。在比较结果后,随机森林算法产生了评估员工流失的最佳准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Integrated Approach of MCDM Methods and Machine Learning Algorithms for Employees' Churn Prediction
Employee churn is a notable nuisance for organizations to maintain a cost-effective position and brand strategy. This research has proposed an integrated approach to overcome this issue systematically. All employees in this study were divided into three categories using a combination of machine learning algorithms and Multi-Criteria Decision Making (MCDM) techniques. The techniques for Order of Preference by Similarity to Ideal Solution (TOPSIS) and the Analytical Hierarchy Process (AHP) have been consolidated. The dataset's feature importance was retrieved, and AHP was used to determine the criteria that caused the most turnover. TOPSIS was given the derived criterion weights from AHP to rank every personnel according to their propensity to depart the organization. To estimate staff turnover, seven machine learning algorithms were applied. After comparing the results, the Random Forest algorithm produces the best accuracy for assessing employee churn.
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