LLM Agents Display Human Biases but Exhibit Distinct Learning Patterns
- URL: http://arxiv.org/abs/2503.10248v1
- Date: Thu, 13 Mar 2025 10:47:03 GMT
- Title: LLM Agents Display Human Biases but Exhibit Distinct Learning Patterns
- Authors: Idan Horowitz, Ori Plonsky,
- Abstract summary: We investigate the choice patterns of Large Language Models (LLMs) in the context of Decisions from Experience tasks.<n>We find that on the aggregate, LLMs appear to display behavioral biases similar to humans.<n>However, more nuanced analyses of the choice patterns reveal that this happens for very different reasons.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We investigate the choice patterns of Large Language Models (LLMs) in the context of Decisions from Experience tasks that involve repeated choice and learning from feedback, and compare their behavior to human participants. We find that on the aggregate, LLMs appear to display behavioral biases similar to humans: both exhibit underweighting rare events and correlation effects. However, more nuanced analyses of the choice patterns reveal that this happens for very different reasons. LLMs exhibit strong recency biases, unlike humans, who appear to respond in more sophisticated ways. While these different processes may lead to similar behavior on average, choice patterns contingent on recent events differ vastly between the two groups. Specifically, phenomena such as ``surprise triggers change" and the ``wavy recency effect of rare events" are robustly observed in humans, but entirely absent in LLMs. Our findings provide insights into the limitations of using LLMs to simulate and predict humans in learning environments and highlight the need for refined analyses of their behavior when investigating whether they replicate human decision making tendencies.
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