Denied by an (Unexplainable) Algorithm: Teleological Explanations for Algorithmic Decisions Enhance Customer Satisfaction

Geoff Tomaino, Hisham Abdulhalim, Pavel Kireyev, K. Wertenbroch
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引用次数: 8

Abstract

Algorithmic or automated decision-making has become commonplace, with firms implementing either rule-based or statistical models to determine whether or not to provide services to customers based on their past behaviors. Policy-makers are pressed to determine if and how to require firms to explain the decisions made by their algorithms, especially in cases where the algorithms are “unexplainable,” or are equivalently subject to legal or commercial confidentiality restrictions or too complex for humans to understand. We study consumer responses to goal-oriented, or “teleological,” explanations, which present the purpose or objective of the algorithm without revealing its mechanism, making them candidates for explaining decisions made by “unexplainable” algorithms. In a field experiment with a technology firm and several online lab experiments, we demonstrate the effectiveness of teleological explanations and identify conditions when teleological and mechanistic explanations can be equally satisfying. Participants perceive teleological explanations as fair, even though algorithms with a fair goal may employ an unfair mechanism. Our results show that firms may benefit by offering teleological explanations for unexplainable algorithm behavior. Regulators can mitigate possible risks by educating consumers about the potential disconnect between an algorithm’s goal and its mechanism.
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被(无法解释的)算法否定:算法决策的目的论解释提高了客户满意度
算法或自动化决策已经变得司空见惯,公司要么实施基于规则的模型,要么实施统计模型,根据客户过去的行为来决定是否向他们提供服务。政策制定者被迫决定是否以及如何要求公司解释其算法做出的决定,特别是在算法“无法解释”的情况下,或者同样受到法律或商业保密限制,或者过于复杂,人类无法理解。我们研究了消费者对目标导向或“目的论”解释的反应,这些解释在不揭示其机制的情况下呈现了算法的目的或目标,使它们成为解释由“不可解释”算法做出的决定的候选人。在与一家技术公司的实地实验和几个在线实验室实验中,我们证明了目的论解释的有效性,并确定了目的论和机械论解释可以同样令人满意的条件。参与者认为目的论解释是公平的,即使具有公平目标的算法可能采用不公平的机制。我们的研究结果表明,企业可以通过为无法解释的算法行为提供目的论解释而获益。监管机构可以通过教育消费者,让他们了解算法的目标和机制之间可能存在的脱节,从而降低可能存在的风险。
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