Enhancing employees’ quality of work life and engagement to foster corporate social responsibility: a data mining approach

IF 1.9 Q3 MANAGEMENT
Saba Sareminia, Fatemeh Sajedi Haji
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Abstract

Purpose

This paper aims to present a dynamic model for strategic and personalized decision-making in human resources (HR), using data mining techniques to enhance corporate social sustainability (CSS). The focus is on the interconnectedness of employee engagement (EE), enablement and the quality of work life.

Design/methodology/approach

The proposed model integrates various HR data, including demographic information, job specifications, payment and rewards, attendance and absence, alongside employees’ perceptions of their work-life quality, engagement and enablement. Data mining processes are applied to generate meaningful insights for senior and middle managers.

Findings

The study implemented the model within a production organization, revealing that factors influencing EE and enablement differ based on gender, marital status and occupational group. Performance-based rewards play a significant role in enhancing engagement, regardless of the reward amount. Factors such as “being recognized for competency” influence engagement for women, while payment has a greater impact on men. Engagement does not directly influence the quality of work life, but subcomponents like perceived transparency and the organization’s processes, particularly the “employee performance evaluation system,” improve work-life quality.

Research limitations/implications

The findings are specific to the studied organization, limiting generalizability. Future research should explore the model’s effectiveness in different cultural and organizational settings.

Practical implications

The proposed model provides practical implications for organizations that enhance CSS. Organizations can gain insights into factors influencing EE and enablement by using data mining techniques, enabling informed decision-making and tailored human resource management practices.

Social implications

This research addresses the societal concern regarding the impact of business activities on sustainability. Organizations can contribute to a more socially responsible and sustainable business environment by focusing on work-life quality and EE.

Originality/value

This paper offers a dynamic model using data mining and machine learning techniques for sustainable human resource management. It emphasizes the importance of customization to align practices with the unique needs of the workforce.

提高员工工作生活质量和参与度以促进企业社会责任:一种数据挖掘方法
目的 本文旨在介绍一种用于人力资源(HR)战略和个性化决策的动态模型,利用数据挖掘技术提高企业的社会可持续性(CSS)。设计/方法/途径 所提议的模型整合了各种人力资源数据,包括人口统计信息、工作规范、薪酬和奖励、出勤和缺勤,以及员工对其工作生活质量、参与度和能力的看法。研究结果这项研究在一家生产型企业中实施了该模型,结果显示,影响员工敬业度和能力的因素因性别、婚姻状况和职业类别而异。无论奖励金额多少,基于绩效的奖励在提高参与度方面都发挥着重要作用。能力得到认可 "等因素会影响女性的敬业度,而薪酬对男性的影响更大。敬业度并不直接影响工作生活质量,但透明度感知和组织流程(尤其是 "员工绩效评估系统")等子要素可以提高工作生活质量。未来研究应探讨该模型在不同文化和组织环境中的有效性。通过使用数据挖掘技术,组织可以深入了解影响 EE 和赋能的因素,从而做出明智的决策并采取有针对性的人力资源管理措施。社会意义这项研究解决了社会对商业活动对可持续发展影响的担忧。各组织可以通过关注工作-生活质量和 EE,为营造更具社会责任感和可持续发展的商业环境做出贡献。它强调了根据劳动力的独特需求定制实践的重要性。
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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来源期刊
CiteScore
3.10
自引率
7.10%
发文量
33
期刊介绍: ■Action learning-principles and practice ■Applications of new technology ■Careers management and counselling ■Computer-based training and interactive video ■Continuing management education ■Learning methods, styles and processes ■Managing change ■Marketing, sales and customer services ■New training and learning methods ■Quality circles, team-working and business games ■Recruitment and selection ■Specialist training-needs and methods ■Youth employment and training ■Topicality Too much training theory takes too long to read and may not have immediate practical advantages.
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