算法管理降低了地位:使用机器扮演社会角色的意外后果

IF 3.2 2区 心理学 Q1 PSYCHOLOGY, SOCIAL
Arthur S. Jago , Roshni Raveendhran , Nathanael Fast , Jonathan Gratch
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引用次数: 0

摘要

随着人工智能在整个社会的普及,它带来了重塑人们感知社会角色和关系的潜力。在五项预先注册的研究中,我们调查了基于人工智能的算法管理如何影响对社会地位的感知和预测。我们发现,人们认为,与典型的人类管理相比,算法管理会导致他人眼中的地位降低(研究1)。此外,在评估主要由算法管理的远程工作时,对低地位的预测会调节人们预期的负面情绪(研究2)。此外,我们发现,人们在给定算法管理的情况下推断出较低的状态,因为他们认为这表明工作任务缺乏复杂性,无论是在评估自己还是他人时(研究3和4)。最后,使用OpenAI的自然语言处理算法(GPT-3),我们创建了一个实际的管理算法,并发现当人们由提供指令、反馈和金钱激励的算法管理时,较低的状态推断会持续存在(研究5)。我们讨论了对地位、等级制度和技术心理学研究的理论意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Algorithmic management diminishes status: An unintended consequence of using machines to perform social roles

As artificial intelligence (AI) proliferates throughout society, it brings the potential to reshape how people perceive social roles and relationships. Across five preregistered studies, we investigated how AI-based algorithmic management influences perceptions and forecasts of social status. We found that people believe algorithmic management, compared to prototypical human management, leads to lower status in the eyes of others (Study 1). Moreover, forecasts of lower status mediated people's anticipated negative emotions when assessing remote jobs that were framed as primarily algorithmically managed (Study 2). Further, we found that people infer lower status given algorithmic management because they believe it signals that job tasks lack complexity, both when evaluating themselves or others (Studies 3 and 4). Finally, using OpenAI's natural language processing algorithm (GPT-3), we created an actual managerial algorithm and found that the lowered status inferences persist when people are managed by an algorithm that provides instructions, feedback, and monetary incentives (Study 5). We discuss theoretical implications for research on status, hierarchy, and the psychology of technology.

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来源期刊
CiteScore
6.30
自引率
2.90%
发文量
134
期刊介绍: The Journal of Experimental Social Psychology publishes original research and theory on human social behavior and related phenomena. The journal emphasizes empirical, conceptually based research that advances an understanding of important social psychological processes. The journal also publishes literature reviews, theoretical analyses, and methodological comments.
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