AI RESEARCH
Polar probe linearly decodes semantic structures from LLMs
arXiv CS.CL
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ArXi:2605.14125v1 Announce Type: new How do artificial neural networks bind concepts to form complex semantic structures? Here, we propose a simple neural code, whereby the existence and the type of relations between entities are represented by the distance and the direction between their embeddings, respectively. We test this hypothesis in a variety of Large Language Models (LLMs), each input with natural-language descriptions of minimalist tasks from five different domains: arithmetic, visual scenes, family trees, metro maps and social interactions.