AIOct 8, 2025

NewtonBench: Benchmarking Generalizable Scientific Law Discovery in LLM Agents

Tencent
arXiv:2510.07172v19 citationsh-index: 18
Originality Incremental advance
AI Analysis

This provides a scalable and authentic testbed for evaluating AI-driven scientific discovery, addressing a foundational challenge in AI for science, though it is incremental in benchmarking methodology.

The paper tackles the problem of benchmarking scientific law discovery in LLM agents by introducing NewtonBench, a benchmark with 324 tasks across 12 physics domains that addresses trade-offs in relevance, scalability, and memorization resistance, and finds that frontier LLMs show fragile discovery capabilities that degrade with complexity and noise, with tool assistance sometimes hindering performance.

Large language models are emerging as powerful tools for scientific law discovery, a foundational challenge in AI-driven science. However, existing benchmarks for this task suffer from a fundamental methodological trilemma, forcing a trade-off between scientific relevance, scalability, and resistance to memorization. Furthermore, they oversimplify discovery as static function fitting, failing to capture the authentic scientific process of uncovering embedded laws through the interactive exploration of complex model systems. To address these critical gaps, we introduce NewtonBench, a benchmark comprising 324 scientific law discovery tasks across 12 physics domains. Our design mitigates the evaluation trilemma by using metaphysical shifts - systematic alterations of canonical laws - to generate a vast suite of problems that are scalable, scientifically relevant, and memorization-resistant. Moreover, we elevate the evaluation from static function fitting to interactive model discovery, requiring agents to experimentally probe simulated complex systems to uncover hidden principles. Our extensive experiment reveals a clear but fragile capability for discovery in frontier LLMs: this ability degrades precipitously with increasing system complexity and exhibits extreme sensitivity to observational noise. Notably, we uncover a paradoxical effect of tool assistance: providing a code interpreter can hinder more capable models by inducing a premature shift from exploration to exploitation, causing them to satisfice on suboptimal solutions. These results demonstrate that robust, generalizable discovery in complex, interactive environments remains the core challenge. By providing a scalable, robust, and scientifically authentic testbed, NewtonBench offers a crucial tool for measuring true progress and guiding the development of next-generation AI agents capable of genuine scientific discovery.

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