Employee Attrition System Prediction using Random Forest Classifier

Soumen Nayak, Pranati Palai
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Abstract

Despite rising unemployment, most job coverage of the COVID-19 outbreak has concentrated on layoffs. Employees have been fired for reasons related to the epidemic, which has been a less prominent issue. COVID-19 is still doing damage to the country's economy. Companies are in the midst of a recession, so they are beginning to fire off unproductive employees. Making critical decisions like laying off employees or cutting an employee's compensation is a challenging undertaking that must be done with extreme attention and accuracy. Adding negligence would harm the employee's career and the company's image in the industry. In this paper, we have predicted employee attrition using Logistic Regression, Random Forest, and Decision Tree techniques. Random Forest Classifier has outperformed other algorithms in this work. After using different machine learning techniques, we can say that Random Forest gives the best performance with a recall of 70%, and also, we have found Precision, Accuracy, and F1- Score.
基于随机森林分类器的员工流失系统预测
尽管失业率不断上升,但关于COVID-19爆发的大多数就业报道都集中在裁员上。员工因与疫情有关的原因被解雇,这是一个不太突出的问题。COVID-19仍在对该国经济造成损害。公司正处于经济衰退之中,因此他们开始解雇效率低下的员工。做出诸如解雇员工或削减员工补偿之类的关键决定是一项具有挑战性的任务,必须非常关注和准确地完成。增加疏忽会损害员工的职业生涯和公司在行业中的形象。在本文中,我们使用逻辑回归、随机森林和决策树技术预测了员工流失。随机森林分类器在这项工作中表现优于其他算法。在使用不同的机器学习技术后,我们可以说随机森林给出了最好的性能,召回率为70%,而且,我们还发现了Precision, Accuracy和F1- Score。
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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