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Disparate Impact Diminishes Consumer Trust Even for Advantaged Users

机译:不同的影响降低了消费者的信任,即使是对优势用户也是如此

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Systems aiming to aid consumers in their decision-making (e.g., by implementing persuasive techniques) are more likely to be effective when consumers trust them. However, recent research has demonstrated that the machine learning algorithms that often underlie such technology can act unfairly towards specific groups (e.g., by making more favorable predictions for men than for women). An undesired disparate impact resulting from this kind of algorithmic unfairness could diminish consumer trust and thereby undermine the purpose of the system. We studied this effect by conducting a between-subjects user study investigating how (gender-related) disparate impact affected consumer trust in an app designed to improve consumers' financial decision-making. Our results show that disparate impact decreased consumers' trust in the system and made them less likely to use it. Moreover, we find that trust wa^ affected to the same degree across consumer groups (i.e., advantaged and disadvantaged users) despite both of these consumer groups recognizing their respective levels of personal benefit. Our findings highlight the importance of fairness in consumer-oriented artificial intelligence systems.
机译:当消费者信任他们时,旨在帮助消费者做出决策的系统(例如,通过实施说服技巧)更有可能有效。然而,最近的研究表明,通常作为此类技术基础的机器学习算法可能对特定群体不公平(例如,对男性做出比女性更有利的预测)。这种算法的不公平性所产生的不期望的不同影响可能会削弱消费者的信任,从而破坏系统的目的。我们通过在一个旨在改善消费者财务决策的应用程序中进行受试者之间的用户研究来研究这种影响,该研究调查了(与性别相关的)不同影响如何影响消费者的信任。我们的结果表明,不同的影响降低了消费者对系统的信任,并使他们不太可能使用它。此外,我们发现,尽管这两个消费者群体都认识到各自的个人利益水平,但信任在消费者群体(即优势用户和弱势用户)中的影响程度是相同的。我们的发现突显了公平在面向消费者的人工智能系统中的重要性。

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