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Understanding perception of algorithmic decisions: Fairness, trust, and emotion in response to algorithmic management

机译:了解算法决策的感知:响应算法管理的公平,信任和情感

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Algorithms increasingly make managerial decisions that people used to make. Perceptions of algorithms, regardless of the algorithms' actual performance, can significantly influence their adoption, yet we do not fully understand how people perceive decisions made by algorithms as compared with decisions made by humans. To explore perceptions of algorithmic management, we conducted an online experiment using four managerial decisions that required either mechanical or human skills. We manipulated the decision-maker (algorithmic or human), and measured perceived fairness, trust, and emotional response. With the mechanical tasks, algorithmic and human-made decisions were perceived as equally fair and trustworthy and evoked similar emotions; however, human managers' fairness and trustworthiness were attributed to the manager's authority, whereas algorithms' fairness and trustworthiness were attributed to their perceived efficiency and objectivity. Human decisions evoked some positive emotion due to the possibility of social recognition, whereas algorithmic decisions generated a more mixed response ?¢???? algorithms were seen as helpful tools but also possible tracking mechanisms. With the human tasks, algorithmic decisions were perceived as less fair and trustworthy and evoked more negative emotion than human decisions. Algorithms' perceived lack of intuition and subjective judgment capabilities contributed to the lower fairness and trustworthiness judgments. Positive emotion from human decisions was attributed to social recognition, while negative emotion from algorithmic decisions was attributed to the dehumanizing experience of being evaluated by machines. This work reveals people's lay concepts of algorithmic versus human decisions in a management context and suggests that task characteristics matter in understanding people's experiences with algorithmic technologies.
机译:算法越来越多地做出人们过去做出的管理决策。对算法的感知,无论算法的实际性能如何,都可能极大地影响算法的采用,但是与人类做出的决策相比,我们还没有完全理解人们如何看待算法做出的决策。为了探索对算法管理的认识,我们使用四个需要机械或人工技能的管理决策进行了在线实验。我们操纵决策者(算法的或人的),并衡量感知到的公平,信任和情感反应。对于机械任务,算法决策和人为决策同样被认为是公平和值得信赖的,并引起类似的情绪。然而,人类管理者的公平性和可信赖性归因于管理者的权威,而算法的公平性和可信赖性则归因于其感知的效率和客观性。由于社会认可的可能性,人类的决策引起了一些积极的情绪,而算法的决策则产生了更加混杂的反应。算法被视为有用的工具,但也可能是跟踪机制。对于人工任务,算法决策被认为比人工决策更不公平,更不值得信赖,并且引起了更多的负面情绪。算法缺乏直觉和主观判断能力,导致较低的公平性和可信赖性判断。人类决策的积极情绪归因于社会认可,而算法决策的消极情绪归因于机器评估的非人性化体验。这项工作揭示了人们在管理环境中算法和人为决策的外在概念,并建议任务特征对于理解人们对算法技术的体验至关重要。

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