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Hauptverfasser: Tang, Luoxi, Vaje, Rupali Rajendra, Meng, Yuqiao, Narkar, Sakshi Sunil, Ma, Weicheng, Ding, Zeyu, Zhang, Dazheng, Xi, Zhaohan
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2605.09330
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author Tang, Luoxi
Vaje, Rupali Rajendra
Meng, Yuqiao
Narkar, Sakshi Sunil
Ma, Weicheng
Ding, Zeyu
Zhang, Dazheng
Xi, Zhaohan
author_facet Tang, Luoxi
Vaje, Rupali Rajendra
Meng, Yuqiao
Narkar, Sakshi Sunil
Ma, Weicheng
Ding, Zeyu
Zhang, Dazheng
Xi, Zhaohan
contents Agentic memory enables LLMs to persist information beyond a single context window and reuse it in later decisions, but it also introduces a new vulnerability: spurious correlations, where retrieved memory carries miscorrelated evidence and propagates erroneous reasoning into downstream decisions. Despite the widespread use of agentic memory, this risk remains largely underexplored. We address it from two aspects. First, we benchmark several canonical types of spurious patterns identified through causal structure and record them across trajectory-level memory. Diagnosing agentic memory systems on this benchmark reveals that memory improves reasoning on clean inputs but amplifies reliance on spurious patterns when they are present. Second, we propose CAMEL, a plug-and-play calibration method that operates across diverse memory architectures at both write and retrieval time. CAMEL consistently reduces reliance on spurious patterns across all three types while preserving or improving performance on clean inputs and staying robust under adaptive attacks targeting the calibration. Overall, CAMEL offers a principled and lightweight solution toward more reliable agentic memory deployment.
format Preprint
id arxiv_https___arxiv_org_abs_2605_09330
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The Trap of Trajectory: Towards Understanding and Mitigating Spurious Correlations in Agentic Memory
Tang, Luoxi
Vaje, Rupali Rajendra
Meng, Yuqiao
Narkar, Sakshi Sunil
Ma, Weicheng
Ding, Zeyu
Zhang, Dazheng
Xi, Zhaohan
Machine Learning
Artificial Intelligence
Agentic memory enables LLMs to persist information beyond a single context window and reuse it in later decisions, but it also introduces a new vulnerability: spurious correlations, where retrieved memory carries miscorrelated evidence and propagates erroneous reasoning into downstream decisions. Despite the widespread use of agentic memory, this risk remains largely underexplored. We address it from two aspects. First, we benchmark several canonical types of spurious patterns identified through causal structure and record them across trajectory-level memory. Diagnosing agentic memory systems on this benchmark reveals that memory improves reasoning on clean inputs but amplifies reliance on spurious patterns when they are present. Second, we propose CAMEL, a plug-and-play calibration method that operates across diverse memory architectures at both write and retrieval time. CAMEL consistently reduces reliance on spurious patterns across all three types while preserving or improving performance on clean inputs and staying robust under adaptive attacks targeting the calibration. Overall, CAMEL offers a principled and lightweight solution toward more reliable agentic memory deployment.
title The Trap of Trajectory: Towards Understanding and Mitigating Spurious Correlations in Agentic Memory
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.09330