AI RESEARCH

Friends and Grandmothers in Silico: Localizing Entity Cells in Language Models

arXiv CS.CL

ArXi:2604.01404v2 Announce Type: replace How do language models retrieve entity-specific facts from their parameters? We investigate this question by searching for sparse, entity-selective MLP neurons - which we call entity cells, by analogy to the "grandmother cell" hypothesis in neuroscience - and testing whether they play a causal role in factual recall. We localize candidate entity cells by ranking MLP neurons for activation consistency across varied prompts about the same entity, applying this procedure across seven models on a curated subset of PopQA.