Predicting Employee Promotion using Machine Learning

K. Durves Mohideen, S. Prasanna
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Abstract

Training and development are key components of professional development for people to improve their capacity. Professional development programs are typically organized around personal information like as background, personal goals, and work experience, as well as corporate objectives and job requirements. Individual employee classification is required to promote tailored training in the professional development process. As a result, this study provides a classification approach for employee classification in order to facilitate tailored training in enterprises. Machine learning methods such as Decision Tree, Random Forest, and Support Vector Machine are investigated. To cope with imbalance data, the Synthetic Minority Oversampling Technique (SMOTE) approach is applied. In this work, the open data form kaggle is used. The training and testing data are combined to generate the data for technique validation. There are three gropes: 80:20, 70:30, and 60:40. According to the classification results, the SMOTE can increase classification performance for all classifiers. Furthermore, random forest has the highest categorization accuracy.
利用机器学习预测员工晋升
培训和发展是人们提高自身能力的职业发展的关键组成部分。职业发展计划通常围绕个人背景、个人目标、工作经验等个人信息,以及企业目标和工作要求来组织。在职业发展过程中,需要对员工进行个人分类,以促进有针对性的培训。因此,本研究提供了一种员工分类方法,以促进企业中的定制培训。研究了决策树、随机森林和支持向量机等机器学习方法。为应对不平衡数据,采用了合成少数群体过度采样技术(SMOTE)方法。在这项工作中,使用了 kaggle 格式的开放数据。训练数据和测试数据相结合,生成用于技术验证的数据。有三种比例:80:20、70:30 和 60:40。根据分类结果,SMOTE 可以提高所有分类器的分类性能。此外,随机森林的分类准确率最高。
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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