Naïve Bayes classifier for optimizing personnel selection process in financial industry

Efstratia Stasi, Georgios Rigopoulos
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Abstract

Algorithmic human resources management (HRM) is becoming increasingly popular among organizations and many HRM processes include automated decision making HRM functions. Research is very active in the domain, and spans across machine learning and data mining, aiming to provide accurate methods to predict best candidates for job roles, or for personnel development among others. In this work, we present a Naïve Bayes based model, which focuses on the preliminary application screening steps, and suggest suitable applicants for further processing, based on a number of features. The model is presented, along with an application in a real case worked with a financial organization and using primary data selected from candidate applications. The results are promising and demonstrate that a mix of professional expertise along with algorithmic support may optimize the HMR processes.
Naïve优化金融行业人员选择过程的贝叶斯分类器
算法人力资源管理(HRM)在组织中越来越受欢迎,许多人力资源管理过程包括自动化决策人力资源管理功能。该领域的研究非常活跃,跨越机器学习和数据挖掘,旨在提供准确的方法来预测工作角色或人员发展的最佳候选人。在这项工作中,我们提出了一个基于Naïve贝叶斯的模型,该模型侧重于初步的申请筛选步骤,并根据一些特征建议适合的申请人进行进一步处理。本文介绍了该模型,以及一个与金融组织合作的实际案例中的应用程序,并使用了从候选应用程序中选择的主要数据。结果是有希望的,并表明专业知识与算法支持的组合可以优化HMR过程。
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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