使用机器学习模型探索人力资源管理智能实践

Q1 Business, Management and Accounting
Sai Rama Krishna Indarapu , Swathy Vodithala , Naveen Kumar , Siripuri Kiran , Soora Narasimha Reddy , Kumar Dorthi
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引用次数: 1

摘要

自从机器学习软件研究了第一个招聘软件并发现利用技术可以提高他们的工作效率、速度并使过程更简单以来,将机器学习用于招聘已成为人力资源的主要主题之一。为了更好地处理员工档案、档案、流动性、数据分析以及为政府服务记录创建电子个人数据表,创建了一个包含机器学习的人力资源信息系统。使用有监督的机器学习技术,它被设计用于预测员工流动。从理论角度来看,机器学习应用程序可能能够执行与人力资源专家相同的任务,即使不是更好或更快。支持人力资源专业人员成为真正的商业合作伙伴,并为他们提供准确可靠的建议,人力资源专业人士和一线高层管理人员之间的互动认为,人力资源专家在机器学习方面仍有剩余。人力资源方法和机器学习的意义是本文的主要关注点。本文的三个目标是:(1)确定机器学习对组织招聘程序的影响有多大,(2)研究这项技术被采用的程度,以及(3)研究在这些关键练习中提出投诉的频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring human resource management intelligence practices using machine learning models

The use of machine learning for recruitment has become one of the main themes in human resources ever since machine learning software investigated the first recruitment software and discovered that utilizing technology improves their effectiveness at work, speed, and makes the process simpler. In order to better handle employee files, profiles, turnover, data analytics, and the creation of electronic personal data sheets for government service records, a human resource information system that incorporates machine learning has been created. Using a supervised machine learning technique, it was designed to foresee staff turnover. From a theoretical perspective, machine learning apps may be able to perform the same tasks as HR specialists, if not better or faster. Supporting HR professionals in becoming a true business partner and providing them with accurate and reliable advice, the interaction between HR professionals and line top management believes that the HR professionals still has surplus over machine learning, alone. Human resources methods and the significance of machine learning are the primary focus of this paper. This paper's three goals are to (1) determine how much of an impact Machine learning can have on the organization's recruitment procedures, (2) examine the extent to which this technology has been adopted, and (3) examine the frequency with which complaints have been lodged during these crucial exercises.

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来源期刊
Journal of High Technology Management Research
Journal of High Technology Management Research Business, Management and Accounting-Strategy and Management
CiteScore
5.80
自引率
0.00%
发文量
9
审稿时长
62 days
期刊介绍: The Journal of High Technology Management Research promotes interdisciplinary research regarding the special problems and opportunities related to the management of emerging technologies. It advances the theoretical base of knowledge available to both academicians and practitioners in studying the management of technological products, services, and companies. The Journal is intended as an outlet for individuals conducting research on high technology management at both a micro and macro level of analysis.
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