评估机器学习算法以检测员工的流失

Noor Khalifa, Maryam Alnasheet, Hasan Kadhem
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引用次数: 1

摘要

近年来,员工流失已经成为组织中一个众所周知的概念,它是一个导致组织内部许多问题的问题。公司可以利用他们拥有的关于员工的大量数据来帮助解决这个问题。本文重点研究了不同机器学习技术的效率,这些技术可用于预测员工的流失。算法的选择是基于对MATLAB中提供的所有机器学习算法的详细比较,从而选择最合适的算法,然后确定其中表现最好的算法。最合适的算法是逻辑回归、支持向量机(线性、二次和核)和增强树。本文的研究结果可能会对企业防止员工流失的能力产生显著影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating Machine Learning Algorithms to Detect Employees' Attrition
Employees' Attrition has become a well-known concept among organizations in the recent years, and it is a problem that leads to many issues within organizations. Companies can use the enormous amount of data they have about their employees to help solve this problem. This paper focuses on examining the efficiency of different machine-learning techniques that can be used for predicting employees' attrition. The algorithms were chosen based on a detailed comparison between all Machine Learning algorithms provided in MATLAB which led to choosing the most suitable ones to later identify the top performing among them. The most suitable algorithms found are Logistic Regression, Support Vector Machine (Linear, Quadratic, and Kernel), and Boosted Trees. This paper's findings could make a notable impact on businesses' ability to prevent employee attrition.
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