Zayid Husam, Alzubi Ahmad, Berberoğlu Ayşen, Khadem Amir
Department of Business Administration, Institute of Graduate Research and Studies, University of Mediterranean Karpasia, 33010 Mersin, Turkey.
Behav Sci (Basel). 2024 Nov 23;14(12):1123. doi: 10.3390/bs14121123.
Modern workplaces increasingly use algorithmic management practices (AMPs), which shape task assignment, monitoring, and evaluation. Despite the potential benefits these practices offer, like increased efficiency and objectivity, their impact on workforce well-being (WFW) has raised concerns. Drawing on self-determination theory (SDT) and conservation of resources theory (COR), this study examines the relationship between algorithmic management practices and workforce well-being, incorporating job burnout (JBO) and perceived threat (PT) as parallel mediators and person-job fit (PJF) as a moderator. The research employed a cross-sectional survey design targeting 2450 KOSGEB-registered manufacturing SMEs in Istanbul, Turkey. A sample of 666 respondents participated, and the data were analyzed using Smart PLS 4, employing structural equation modeling to test the proposed model. The results indicated that algorithmic management practices significantly increased job burnout and perceived threat, both of which negatively impacted workforce well-being. However, the direct effect of algorithmic management practices on workforce well-being was non-significant. Person-job fit moderated the relationships between algorithmic management practices and both job burnout and perceived threat, further influencing workforce well-being. The findings underscore the critical need for organizations to balance algorithmic efficiency with human-centric practices. Prioritizing person-job fit and fostering transparency in algorithmic processes can mitigate negative impacts, enhance employee well-being, and drive sustainable organizational success in the digital age.
现代工作场所越来越多地采用算法管理实践(AMPs),这些实践塑造了任务分配、监控和评估。尽管这些实践带来了诸如提高效率和客观性等潜在好处,但其对员工福祉(WFW)的影响引发了人们的担忧。本研究借鉴自我决定理论(SDT)和资源守恒理论(COR),考察算法管理实践与员工福祉之间的关系,将职业倦怠(JBO)和感知威胁(PT)作为平行中介变量,将人岗匹配(PJF)作为调节变量。该研究采用横断面调查设计,以土耳其伊斯坦布尔2450家在土耳其科学技术研究理事会(KOSGEB)注册的制造业中小企业为目标。666名受访者参与了抽样调查,并使用Smart PLS 4对数据进行分析,采用结构方程模型来检验所提出的模型。结果表明,算法管理实践显著增加了职业倦怠和感知威胁,这两者均对员工福祉产生负面影响。然而,算法管理实践对员工福祉的直接影响并不显著。人岗匹配调节了算法管理实践与职业倦怠和感知威胁之间的关系,进而影响员工福祉。研究结果强调了组织在算法效率与以人为本的实践之间取得平衡的迫切需求。优先考虑人岗匹配并提高算法流程的透明度可以减轻负面影响,提升员工福祉,并在数字时代推动组织的可持续成功。