Evaluation of machine learning models for employee churn prediction

Publications

Evaluation of machine learning models for employee churn prediction

Year : 2018

Publisher : Institute of Electrical and Electronics Engineers Inc.

Source Title : Proceedings of the International Conference on Inventive Computing and Informatics, ICICI 2017

Document Type :

Abstract

Employees are the valuable assets of any organization. But if they quit jobs unexpectedly, it may incur huge cost to any organization. Because new hiring will consume not only money and time but also the freshly hired employees take time to make the respective organization profitable. Hence in this paper we try to build a model which will predict employee churn rate based on HR analytics dataset obtained from Kaggle website. To show the relation between attributes, the correlation matrix and heatmap is generated. In the experimental part, the histogram is generated, which shows the contrast between left employees vs. salary, department, satisfaction level, etc. For prediction purpose, we use five different machine learning algorithms such as linear support vector machine, C 5.0 Decision Tree classifier, Random Forest, k-nearest neighbor and Naïve Bayes classifier. This paper proposes the reasons which optimize the employee attrition in any organization.