AI RESEARCH

Quantitative Introspection in Language Models: Tracking Internal States Across Conversation

arXiv CS.AI

ArXi:2603.18893v1 Announce Type: new Tracking the internal states of large language models across conversations is important for safety, interpretability, and model welfare, yet current methods are limited. Linear probes and other white-box methods compress high-dimensional representations imperfectly and are harder to apply with increasing model size. Taking inspiration from human psychology, where numeric self-report is a widely used tool for tracking internal states, we ask whether LLMs' own numeric self-reports can track probe-defined emotive states over time.