cs.AI updates on arXiv.org 07月22日 12:34
PhysGym: Benchmarking LLMs in Interactive Physics Discovery with Controlled Priors
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本文介绍PhysGym,一个用于评估大型语言模型在交互式物理环境中的科学推理能力的基准平台。PhysGym通过控制预先知识水平,提供标准化评估协议和指标,以评估假设准确性和模型保真度。

arXiv:2507.15550v1 Announce Type: cross Abstract: Evaluating the scientific discovery capabilities of large language model based agents, particularly how they cope with varying environmental complexity and utilize prior knowledge, requires specialized benchmarks currently lacking in the landscape. To address this gap, we introduce PhysGym, a novel benchmark suite and simulation platform for rigorously assessing LLM-based scientific reasoning in interactive physics environments. PhysGym's primary contribution lies in its sophisticated control over the level of prior knowledge provided to the agent. This allows researchers to dissect agent performance along axes including the complexity of the problem and the prior knowledge levels. The benchmark comprises a suite of interactive simulations, where agents must actively probe environments, gather data sequentially under constraints and formulate hypotheses about underlying physical laws. PhysGym provides standardized evaluation protocols and metrics for assessing hypothesis accuracy and model fidelity. We demonstrate the benchmark's utility by presenting results from baseline LLMs, showcasing its ability to differentiate capabilities based on varying priors and task complexity.

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PhysGym LLM科学推理 基准平台 预先知识 评估协议
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