员工流失:数据驱动模型分析

Manju Nandal, Veena Grover, Divya Sahu, Mahima Dogra
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摘要

企业一直在努力留住专业员工,以尽量减少招聘和培训新员工的相关费用。准确预测某位员工可能离职还是继续留在公司,可以让企业有能力采取积极措施。与物理系统不同,人力资源挑战无法用精确的科学或分析公式来概括。因此,机器学习技术成为实现这一目标的最有效工具。在本文中,我们介绍了一种利用机器学习、集合技术和深度学习预测员工流失的综合方法,并将其应用于 IBM Watson 数据集。我们在数据集上使用了多种分类器,包括逻辑回归分类器、K-近邻(KNN)、决策树、奈夫贝叶斯、梯度提升、AdaBoost、随机森林、堆叠、XG Boost、"FNN(前馈神经网络)"和 "CNN(卷积神经网络)"。我们最成功的模型利用了一种名为 FNN 的深度学习技术,取得了卓越的预测性能,准确率、召回率和 F1 分数分别达到 97.5%、83.93% 和 91.26%。
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Employee Attrition: Analysis of Data Driven Models
Companies constantly strive to retain their professional employees to minimize the expenses associated with recruiting and training new staff members. Accurately anticipating whether a particular employee is likely to leave or remain with the company can empower the organization to take proactive measures. Unlike physical systems, human resource challenges cannot be encapsulated by precise scientific or analytical formulas. Consequently, machine learning techniques emerge as the most effective tools for addressing this objective. In this paper, we present a comprehensive approach for predicting employee attrition using machine learning, ensemble techniques, and deep learning, applied to the IBM Watson dataset. We employed a diverse set of classifiers, including Logistic regression classifier, K-nearest neighbour (KNN), Decision Tree, Naïve Bayes, Gradient boosting, AdaBoost, Random Forest, Stacking, XG Boost, “FNN (Feedforward Neural Network)”, and “CNN (Convolutional Neural Network)” on the dataset. Our most successful model, which harnesses a deep learning technique known as FNN, achieved superior predictive performance with highest Accuracy, recall and F1-score of 97.5%, 83.93% and 91.26%.
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