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How should intelligent agents apologize to restore trust? Interaction effects between anthropomorphism and apology attribution on trust repair

机译:智能代理应该如何道歉才能恢复信任? 拟人体术与道歉归因对信任修复的互动效应

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Trust is essential in individuals' perception, behavior, and evaluation of intelligent agents. Because, it is the primary motive for people to accept new technology, it is crucial to repair trust when damaged. This study investigated how intelligent agents should apologize to recover trust and how the effectiveness of the apology is different when the agent is human-like compared to machine-like based on two seemingly competing frameworks of the Computers-Are-Social-Actors paradigm and automation bias. A 2 (agent: Human-like vs. Machine-like) X 2 (apology attribution: Internal vs. External) between-subject design experiment was conducted (N = 193) in the context of the stock market. Participants were presented with a scenario to make investment choices based on an artificial intelligence agent's advice. To see the trajectory of the initial trust-building, trust violation, and trust repair process, we designed an investment game that consists of five rounds of eight investment choices (40 investment choices in total). The results show that trust was repaired more efficiently when a human-like agent apologizes with internal rather than external attribution. However, the opposite pattern was observed among participants who had machine-like agents; the external rather than internal attribution condition showed better trust repair. Both theoretical and practical implications are discussed.
机译:信任对个人的感知,行为和对智能代理商的评估至关重要。因为,人们接受新技术的主要动机是,在损坏时修复信任至关重要。这项研究调查了智能代理人如何道歉,以恢复信任以及道歉的有效性如何与基于计算机的两种看似竞争的框架的机器类似的机器相比,当代理人相比 - 是社交演员范例和自动化的机器相比偏见。 A 2(代理商:人类类似的与机器类似)X 2(道歉归属:在股票市场的上下文中进行了主题设计实验之间的主题设计实验的内部与外部)。参与者介绍了一种情况,以基于人工智能代理的建议进行投资选择。要查看初始信任建设,信任违规行为和信任修复过程的轨迹,我们设计了一个由五轮八轮投资选择(共有40个投资选择)的投资游戏。结果表明,当人类的代理与内部归属道歉时,信任更有效地修复。然而,观察到具有机器状代理商的参与者之间的相反模式;外部而不是内部归因情况显示更好的信任修复。讨论了理论和实际意义。

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