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Design and data analytics of electronic human resource management activities through Internet of Things in an organization

机译:通过组织中的东西互联网电子人力资源管理活动的设计和数据分析

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摘要

A novel design and data analytics for an electronic human resource management (e-HRM) system has been proposed in this article. E-HRM software is being widely used in big industries and institutions. This e-HRM is very cost-effective, competence, congruence, and commitment for the organization. At present, Internet of Things (IoT) have great impact on e-HRM, which gives various facilities and supports to e-HRM functionalities such as securities, standards, privacy, and regulations. The combination of e-HRM with IoT has wide applications for implementing policies, strategies, and practices within the organization. An e-HRM has mainly five activities: e-Selection, e-Recruitment, e-Performance, e-Compensation, and e-Learning. In this work, the proposed system has two parts. In the first part, the various e-HRM activities have been discussed and elaborated with examples. In the second part, the description of data analytics based on IoT for each e-HRM activity has been discussed and demonstrated. Here the data analytics part is divided into four components: (a) data preprocessing; (b) feature selection; (c) data classification; and (d) performance evaluation. Extensive experimentation has been performed for each e-HRM activity using four HR analytic datasets from Kaggle site, and finally, the performance with proper justifications has been exquisitely done using each dataset respect to each e-HRM activity.
机译:本文提出了一种新颖的电子人力资源管理(E-HRM)系统的设计和数据分析。 E-HRM软件广泛应用于大型产业和机构。这种电子人力资源管理是对本组织的成本效益,能力,同时和承诺。目前,事物互联网(物联网)对电子人力资源有很大影响,这为各种设施提供了各种设施,并支持证券,标准,隐私和法规等E-HRM功能。 E-HRM与IOT的组合具有广泛的申请,用于实施组织内的政策,策略和实践。 E-HRM主要有五项活动:电子选择,电子招聘,电子表现,电子补偿和电子学习。在这项工作中,所提出的系统有两部分。在第一部分中,已经讨论并阐述了各种E-HRM活性。在第二部分中,已经讨论并展示了基于每个E-HRM活动的IOT的数据分析的描述。这里的数据分析部分分为四个组件:(a)数据预处理; (b)特征选择; (c)数据分类;和(d)绩效评估。使用来自kaggle站点的四个小时分析数据集进行了广泛的实验,最后,使用每个数据集对每个E-HRM活动的所有数据集进行了精确完成了正确理解的性能。

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