Employee Turnover Prediction based on Machine Learning Model

Lihe Ma
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Abstract

Research shows that high turnover rate will inevitably damage the sustainable and healthy development of the enterprise. Thanks to the rapid development of artificial intelligence technology, it is possible to build a model to predict employee turnover intension by analyzing employee turnover data. This study uses employee data of a company on the Kaggle platform, proposes an oversampling method for predicting employee turnover in view of data imbalance in the data set. Four models Gaussian NB, support vector machine for classification (SVC), K-Nearest Neighbor (KNN) and Gradient Boosting were established and trained to analyze the employee turnover features and predict the occurrence of employee turnover events.
基于机器学习模型的员工离职预测
研究表明,高离职率必然会损害企业的持续健康发展。随着人工智能技术的快速发展,通过分析员工离职数据,建立预测员工离职强度的模型成为可能。本研究利用Kaggle平台上某公司的员工数据,针对数据集中数据不平衡的情况,提出了一种预测员工离职的过采样方法。建立并训练了高斯NB、支持向量机分类(SVC)、k近邻(KNN)和梯度增强(Gradient Boosting)四个模型,用于分析员工离职特征,预测员工离职事件的发生。
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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