员工离职预测系统

Mehul Jhaver, Yogesh Gupta, A. Mishra
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引用次数: 3

摘要

由于员工流动对工作场所吞吐量和长期发展策略的不利影响,员工流动已被公认为行业的主要问题。为了解决这个问题,官方使用机器学习技术来猜测员工流动率。准确的预测使管理部门有资格采取行动来留住员工。尽管如此,这类问题的数据来自人力资源信息系统。这导致数据中噪声的优势,提取的预测模型倾向于过度拟合,因此不精确。这是主要的问题,也是本研究的动机,也是一个以前没有处理的问题。本研究的创新贡献在于探索了梯度增强技术的应用,该技术由于其正则化公式而具有更强的鲁棒性。全球零售商的数据被用来比较梯度增强与三种传统使用的监督分类器,如逻辑回归,支持向量机,随机森林,并揭示其建议更高的准确性预测员工流失。在这项研究中,我还实现了人工神经网络,研究神经网络如何帮助分类不同的类。本文旨在开发模型,可以预测员工流失,它可以帮助组织采取必要的步骤来留住这些员工。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Employee Turnover Prediction System
Employee turnover has been recognized as a main problem for industries due to its contrary influence on work place throughput and long term development tactics. To resolve this issue, officialdoms use machine learning techniques to guess employee turnover. Precise predictions qualify administrations to take action for holding of employees. Nonetheless, the data for this type of issue comes from HR Information Systems. This leads to the supremacy of noise in the data that extracts predictive models disposed to over-fitting and hence imprecise. This is the main problem that is the motivation of this study, and one that has not been handled earlier. The innovative contribution of this study is to reconnoiter the application of Gradient Boosting technique which is more robust because of its regularization formulation. The global retailer data is used to compare Gradient Boosting against three traditionally used supervised classifiers like Logistic Regression, Support Vector Machine, Random Forest and reveal its suggestively higher accuracy for predicting employee turnover. In this study I have also implemented Artificial Neural Network to study how to the neural network helps in classification of different classes. This paper is aimed at developing models which can predict employee turnover and it can help the organization to take necessary steps to retain these employees.
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