AI RESEARCH

Attractor Geometry of Transformer Memory: From Conflict Arbitration to Confident Hallucination

arXiv CS.AI

ArXi:2605.05686v1 Announce Type: new Language models draw on two knowledge sources: facts baked into weights (parametric memory, PM) and information in context (working memory, WM). We study two mechanistically distinct failure modes--conflict, when PM and WM disagree and interfere; and hallucination, when the queried fact was never learned. Both produce confident output regardless, making output-based monitoring blind by design. We show both failures share a unified geometric account. In the hidden-state space of autoregressive generation, learned facts form attractor basins.