AI RESEARCH

Diagnosing Retrieval Bias Under Multiple In-Context Knowledge Updates in Large Language Models

arXiv CS.AI

ArXi:2603.12271v1 Announce Type: cross LLMs are widely used in knowledge-intensive tasks where the same fact may be revised multiple times within context. Unlike prior work focusing on one-shot updates or single conflicts, multi-update scenarios contain multiple historically valid versions that compete at retrieval, yet remain underexplored. This challenge resembles the AB-AC interference paradigm in cognitive psychology: when the same cue A is successively associated with B and C, the old and new associations compete during retrieval, leading to bias. Inspired by this, we.