SUPR-CONSTR-ELAINov 5, 2025

Expert Evaluation of LLM World Models: A High-$T_c$ Superconductivity Case Study

arXiv:2511.03782v12 citationsh-index: 81
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of assessing LLM accuracy in specialized scientific domains for researchers, though it is incremental as it focuses on evaluation rather than new model development.

The study evaluated six LLM-based systems on their ability to answer expert-level questions about high-temperature cuprate superconductivity, using a curated database of 1,726 papers and 67 questions, finding that two RAG systems outperformed closed models in providing comprehensive and well-supported answers.

Large Language Models (LLMs) show great promise as a powerful tool for scientific literature exploration. However, their effectiveness in providing scientifically accurate and comprehensive answers to complex questions within specialized domains remains an active area of research. Using the field of high-temperature cuprates as an exemplar, we evaluate the ability of LLM systems to understand the literature at the level of an expert. We construct an expert-curated database of 1,726 scientific papers that covers the history of the field, and a set of 67 expert-formulated questions that probe deep understanding of the literature. We then evaluate six different LLM-based systems for answering these questions, including both commercially available closed models and a custom retrieval-augmented generation (RAG) system capable of retrieving images alongside text. Experts then evaluate the answers of these systems against a rubric that assesses balanced perspectives, factual comprehensiveness, succinctness, and evidentiary support. Among the six systems two using RAG on curated literature outperformed existing closed models across key metrics, particularly in providing comprehensive and well-supported answers. We discuss promising aspects of LLM performances as well as critical short-comings of all the models. The set of expert-formulated questions and the rubric will be valuable for assessing expert level performance of LLM based reasoning systems.

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