利用机器学习预测员工流失:系统性文献综述

A. Al-Alawi, Yahya A. Ghanem
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引用次数: 0

摘要

由于竞争的加剧和商业环境的动态变化,员工流失或员工自愿离职成为全球企业关注的主要问题。预测员工流失可以帮助企业改进留住员工的策略并提高绩效。本文对以往应用机器学习技术预测员工流失的研究进行了系统的文献综述(SLR)。系统文献综述涵盖了现有文献中使用的数据来源、机器学习模型和评估指标。文章揭示了在获取用于自然减员预测的可靠相关数据方面所面临的挑战,并提出了一些可能的解决方案。文章还比较了不同机器学习模型的性能,如支持向量机(SVM)、决策树、随机森林和神经网络,并使用了各种评价指标,如准确率、精确度、召回率和 F1 分数。文章表明,使用多种机器学习模型和评价指标能提供比依赖单一模型或指标更可靠、更稳健的结果。文章最后强调了当前研究的贡献和局限性,并提出了未来研究的一些方向。本文是商业分析和人力资源领域研究人员和从业人员的宝贵资源,因为它全面概述和分析了使用机器学习技术预测员工流失的最新进展。
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Predicting Employee Attrition Using Machine Learning: A Systematic Literature Review
Employee attrition, or the voluntary turnover of employees, is a major concern for businesses worldwide due to the increased competition and dynamic changes in the business environment. Predicting employee attrition can help organizations improve their retention strategies and enhance their performance. This article presents a Systematic Literature Review (SLR) of the previous studies that have applied machine learning techniques to predict employee attrition. The SLR covers the data sources, the machine learning models, and the evaluation metrics used in the existing literature. The article reveals the challenges of obtaining reliable and relevant data for attrition prediction and suggests some possible solutions. The article also compares the performance of different machine learning models, such as support vector machines (SVMs), decision trees, random forests, and neural networks, using various evaluation metrics, such as accuracy, precision, recall, and F1-score. The article shows that using multiple machine learning models and evaluation metrics can provide more reliable and robust results than relying on a single model or metric. The article concludes by highlighting the contributions and limitations of the current research and proposing some directions for future research. This article is a valuable resource for researchers and practitioners in the fields of business analytics and human resources, as it provides a comprehensive overview and analysis of the state-of-the-art in employee attrition prediction using machine learning techniques.
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