Third-party evaluators perceive AI as more compassionate than expert humans.

Dariya Ovsyannikova, Victoria Oldemburgo de Mello, Michael Inzlicht
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Abstract

Empathy connects us but strains under demanding settings. This study explored how third parties evaluated AI-generated empathetic responses versus human responses in terms of compassion, responsiveness, and overall preference across four preregistered experiments. Participants (N = 556) read empathy prompts describing valenced personal experiences and compared the AI responses to select non-expert or expert humans. Results revealed that AI responses were preferred and rated as more compassionate compared to select human responders (Study 1). This pattern of results remained when author identity was made transparent (Study 2), when AI was compared to expert crisis responders (Study 3), and when author identity was disclosed to all participants (Study 4). Third parties perceived AI as being more responsive-conveying understanding, validation, and care-which partially explained AI's higher compassion ratings in Study 4. These findings suggest that AI has robust utility in contexts requiring empathetic interaction, with the potential to address the increasing need for empathy in supportive communication contexts.

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第三方评估人员认为人工智能比人类专家更有同情心。
同理心将我们联系在一起,但在苛刻的环境下会变得紧张。本研究探讨了第三方如何在四个预先注册的实验中评估人工智能产生的移情反应与人类反应在同情心、反应性和总体偏好方面的对比。参与者(N = 556)阅读描述有价值的个人经历的移情提示,并将人工智能的反应与非专家或专家进行比较。结果显示,与选择的人类响应者相比,人工智能的回应更受青睐,被评为更有同情心(研究1)。当作者身份透明(研究2)、人工智能与专家危机响应者相比(研究3)、以及向所有参与者披露作者身份(研究4)时,这种结果模式仍然存在。第三方认为人工智能更具响应性——传达理解、验证、和关怀——这部分解释了研究4中人工智能更高的同情心评级。这些发现表明,人工智能在需要移情互动的环境中具有强大的实用性,有可能解决支持性沟通环境中日益增长的移情需求。
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