基金会模型中的类人情感认知

Kanishk Gandhi, Zoe Lynch, Jan-Philipp Fränken, Kayla Patterson, Sharon Wambu, Tobias Gerstenberg, Desmond C. Ong, Noah D. Goodman
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引用次数: 0

摘要

人类很容易从情境或面部表情中推断出情绪,从情绪中推断出情境,并进行其他各种情感认知。现代人工智能在这些推断方面的能力如何?我们引入了一个评估框架,用于测试基础模型中的情感认知。从心理学理论出发,我们生成了 1280 个不同的场景,探索评价、情绪、表达和结果之间的关系。我们评估了基础模型(GPT-4、Claude-3、Gemini-1.5-Pro)和人类(N = 567)在精心选择的条件下的能力。我们的结果表明,基础模型往往与人类的直觉一致,符合或超过参与者之间的一致。在某些条件下,模型是 "超人"--它们比普通人更好地预测了人类的模态判断。所有模型都受益于思维链推理。这表明基础模型对情绪及其对信念和行为的影响有了类似人类的理解。
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Human-like Affective Cognition in Foundation Models
Understanding emotions is fundamental to human interaction and experience. Humans easily infer emotions from situations or facial expressions, situations from emotions, and do a variety of other \emph{affective cognition}. How adept is modern AI at these inferences? We introduce an evaluation framework for testing affective cognition in foundation models. Starting from psychological theory, we generate 1,280 diverse scenarios exploring relationships between appraisals, emotions, expressions, and outcomes. We evaluate the abilities of foundation models (GPT-4, Claude-3, Gemini-1.5-Pro) and humans (N = 567) across carefully selected conditions. Our results show foundation models tend to agree with human intuitions, matching or exceeding interparticipant agreement. In some conditions, models are ``superhuman'' -- they better predict modal human judgements than the average human. All models benefit from chain-of-thought reasoning. This suggests foundation models have acquired a human-like understanding of emotions and their influence on beliefs and behavior.
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