AI RESEARCH

Surrogate modeling for interpreting black-box LLMs in medical predictions

arXiv CS.LG

ArXi:2604.20331v1 Announce Type: cross Large language models (LLMs), trained on vast datasets, encode extensive real-world knowledge within their parameters, yet their black-box nature obscures the mechanisms and extent of this encoding. Surrogate modeling, which uses simplified models to approximate complex systems, can offer a path toward better interpretability of black-box models. We propose a surrogate modeling framework that quantitatively explains LLM-encoded knowledge.