AI RESEARCH

Residual Stream Analysis of Overfitting And Structural Disruptions

arXiv CS.AI

ArXi:2603.13318v1 Announce Type: cross Ensuring that large language models (LLMs) remain both helpful and harmless poses a significant challenge: fine-tuning on repetitive safety datasets, where unsafe prompts are paired with standard refusal templates, often leads to false refusals, in which benign queries are declined. We first quantify this effect, showing that safety data exhibits substantially lower token entropy and 2-gram diversity (0.048) compared to general instruction data. To uncover the root cause, we.