Using cognitive psychology to understand GPT-3 论文

2023Proceedings of the National Academy of Sciences引用 438
Clinical Reasoning and Diagnostic SkillsIntelligent Tutoring Systems and Adaptive LearningDiet and metabolism studies

详细信息

发表期刊/会议
Proceedings of the National Academy of Sciences
发表日期
2023-02-02
发表年份
2023

关键词

Clinical Reasoning and Diagnostic SkillsIntelligent Tutoring Systems and Adaptive LearningDiet and metabolism studies

摘要

We study GPT-3, a recent large language model, using tools from cognitive psychology. More specifically, we assess GPT-3's decision-making, information search, deliberation, and causal reasoning abilities on a battery of canonical experiments from the literature. We find that much of GPT-3's behavior is impressive: It solves vignette-based tasks similarly or better than human subjects, is able to make decent decisions from descriptions, outperforms humans in a multiarmed bandit task, and shows signatures of model-based reinforcement learning. Yet, we also find that small perturbations to vignette-based tasks can lead GPT-3 vastly astray, that it shows no signatures of directed exploration, and that it fails miserably in a causal reasoning task. Taken together, these results enrich our understanding of current large language models and pave the way for future investigations using tools from cognitive psychology to study increasingly capable and opaque artificial agents.