Feb. 7, 2024, 5:42 a.m. | Johannes A. Schubert Akshay K. Jagadish Marcel Binz Eric Schulz

cs.LG updates on arXiv.org arxiv.org

We study the in-context learning dynamics of large language models (LLMs) using three instrumental learning tasks adapted from cognitive psychology. We find that LLMs update their beliefs in an asymmetric manner and learn more from better-than-expected outcomes than from worse-than-expected ones. Furthermore, we show that this effect reverses when learning about counterfactual feedback and disappears when no agency is implied. We corroborate these findings by investigating idealized in-context learning agents derived through meta-reinforcement learning, where we observe similar patterns. Taken …

agents belief cognitive context counterfactual cs.lg dynamics feedback in-context learning language language models large language large language models learn learn more llms psychology show study tasks update

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