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Autori principali: Lim, Jimin, Damerla, Arjun, Jiang, Arthur, Le, Nam
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2510.13878
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author Lim, Jimin
Damerla, Arjun
Jiang, Arthur
Le, Nam
author_facet Lim, Jimin
Damerla, Arjun
Jiang, Arthur
Le, Nam
contents Large language models (LLMs) have shown to be increasingly capable of performing reasoning tasks, but their ability to make sequential decisions under uncertainty only using natural language remains underexplored. We introduce a novel benchmark in which LLMs interact with multi-armed bandit environments using purely textual feedback, "you earned a token", without access to numerical cues or explicit probabilities, resulting in the model to infer latent reward structures purely off linguistic cues and to adapt accordingly. We evaluated the performance of four open-source LLMs and compare their performance to standard decision-making algorithms such as Thompson Sampling, Epsilon Greedy, Upper Confidence Bound (UCB), and random choice. While most of the LLMs underperformed compared to the baselines, Qwen3-4B, achieved the best-arm selection rate of 89.2% , which significantly outperformed both the larger LLMs and traditional methods. Our findings suggest that probabilistic reasoning is able to emerge from language alone, and we present this benchmark as a step towards evaluating decision-making capabilities in naturalistic, non-numeric contexts.
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TextBandit: Evaluating Probabilistic Reasoning in LLMs Through Language-Only Decision Tasks
Lim, Jimin
Damerla, Arjun
Jiang, Arthur
Le, Nam
Computation and Language
Large language models (LLMs) have shown to be increasingly capable of performing reasoning tasks, but their ability to make sequential decisions under uncertainty only using natural language remains underexplored. We introduce a novel benchmark in which LLMs interact with multi-armed bandit environments using purely textual feedback, "you earned a token", without access to numerical cues or explicit probabilities, resulting in the model to infer latent reward structures purely off linguistic cues and to adapt accordingly. We evaluated the performance of four open-source LLMs and compare their performance to standard decision-making algorithms such as Thompson Sampling, Epsilon Greedy, Upper Confidence Bound (UCB), and random choice. While most of the LLMs underperformed compared to the baselines, Qwen3-4B, achieved the best-arm selection rate of 89.2% , which significantly outperformed both the larger LLMs and traditional methods. Our findings suggest that probabilistic reasoning is able to emerge from language alone, and we present this benchmark as a step towards evaluating decision-making capabilities in naturalistic, non-numeric contexts.
title TextBandit: Evaluating Probabilistic Reasoning in LLMs Through Language-Only Decision Tasks
topic Computation and Language
url https://arxiv.org/abs/2510.13878