Diagnosing Retrieval Bias Under Multiple In-Context Knowledge Updates in Large Language Models
arXiv cs.AI / 3/16/2026
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Key Points
- The paper proposes the Dynamic Knowledge Instance (DKI) evaluation framework to model multi-updates of the same fact as a cue paired with a sequence of updated values.
- Across diverse LLMs, retrieval bias intensifies as the number of updates increases, with earliest-state accuracy remaining high while latest-state accuracy drops substantially.
- Analyses of attention, hidden-state similarity, and output logits show the bias signals becoming flatter and less discriminative, offering little stable basis for identifying the latest update.
- Cognitively inspired heuristic interventions yield only modest gains and do not eliminate the bias.
- Overall, the work reveals a persistent challenge in tracking and following knowledge updates in long-context reasoning.
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