AI RESEARCH

Grounding Agent Memory in Contextual Intent

arXiv CS.AI

ArXi:2601.10702v2 Announce Type: replace-cross Deploying large language models in long-horizon, goal-oriented interactions remains challenging because similar entities and facts recur under different latent goals and constraints, causing memory systems to retrieve context-mismatched evidence. We propose STITCH (Structured Intent Tracking in Contextual History), an agentic memory system that indexes each trajectory step with a structured retrieval cue, contextual intent, and retrieves history by matching the current step's intent.