AI RESEARCH

Analysis and Explainability of LLMs Via Evolutionary Methods

arXiv CS.LG

ArXi:2605.02930v1 Announce Type: cross Evolutionary methods have long been useful for analysis and explanation in genetics, biology, ecology, and related fields. In this work, we extend these methods to neural networks, specifically large language models (LLMs), to better analyze and explain relationships among models. We show how relating weights to genotypes and output text to phenotypes can improve our understanding of model lineage, important datasets, the roles of different model layers, and visualization of model relationships.