Algorithmic management and human-centered task design: a conceptual synthesis from the perspective of action regulation and sociomaterial systems theory.

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-09-25 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1441497
Carsten Röttgen, Britta Herbig, Tobias Weinmann, Andreas Müller
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Abstract

This paper aims to explain potential psychological effects of algorithmic management (AM) on human-centered task design and with that also workers' mental well-being. For this, we link research on algorithmic management (AM) with Sociomaterial System Theory and Action Regulation Theory (ART). Our main assumption is that psychological effects of sociomaterial systems, such as AM, can be explained by their impact on human action. From the synthesis of the theories, mixed effects on human-centered task design can be derived: It can be expected that AM contributes to fewer action regulation opportunities (i.e., job resources like job autonomy, transparency, predictability), and to lower intellectual demands (i.e., challenge demands like task complexity, problem solving). Moreover, it can be concluded that AM is related with more regulation problems (i.e., hindrance demands like overtaxing regulations) but also fewer regulation problems (like regulation obstacles, uncertainty). Based on these considerations and in line with the majority of current research, it can be assumed that the use of AM is indirectly associated with higher risks to workers' mental well-being. However, we also identify potential positive effects of AM as some stressful and demotivating obstacles at work are often mitigated. Based on these considerations, the main question of future research is not whether AM is good or bad for workers, but rather how work under AM can be designed to be humane. Our proposed model can guide and support researchers and practitioners in improving the understanding of the next generation of AM systems.

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算法管理和以人为本的任务设计:从行动调节和社会物质系统理论的角度进行概念综合。
本文旨在解释算法管理(AM)对以人为本的任务设计以及工人心理健康的潜在心理影响。为此,我们将算法管理(AM)研究与社会物质系统理论和行动调节理论(ART)联系起来。我们的主要假设是,社会物质系统(如 AM)的心理效应可以通过其对人类行动的影响来解释。综合这些理论,可以得出以人为中心的任务设计的混合效应:可以预计,AM 会减少行动调节机会(即工作资源,如工作自主性、透明度、可预测性),降低智力要求(即挑战要求,如任务复杂性、问题解决)。此外,还可以得出这样的结论:AM 与更多的监管问题(即监管过度等阻碍性需求)有关,但也与较少的监管问题(如监管障碍、不确定性)有关。基于这些考虑,并与目前的大多数研究相一致,我们可以认为,AM 的使用与工人精神健康的高风险间接相关。不过,我们也发现了调幅装置的潜在积极影响,因为工作中的一些压力和挫伤积极性的障碍往往会得到缓解。基于这些考虑,未来研究的主要问题不是调幅技术对工人是好是坏,而是如何设计调幅技术下的工作才能人性化。我们提出的模型可以为研究人员和从业人员提供指导和支持,帮助他们更好地理解下一代人工智能系统。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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