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PersistBench: When Should Long-Term Memories Be Forgotten by LLMs?

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abstract

Conversational assistants are increasingly integrating long-term memory with large language models (LLMs). This persistence of memories, e.g., the user is vegetarian, can enhance personalization in future conversations. However, the same persistence can also introduce safety risks that have been largely overlooked. Hence, we introduce PersistBench to measure the extent of these safety risks. We identify two long-term memory-specific risks: cross-domain leakage, where LLMs inappropriately inject context from the long-term memories; and memory-induced sycophancy, where stored long-term memories insidiously reinforce user biases. We evaluate 18 frontier and open-source LLMs on our benchmark. Our results reveal a surprisingly high failure rate across these LLMs - a median failure rate of 53% on cross-domain samples and 97% on sycophancy samples. To address this, our benchmark encourages the development of more robust and safer long-term memory usage in frontier conversational systems.

fields

cs.CR 1

years

2026 1

verdicts

UNVERDICTED 1

representative citing papers

Memory-Induced Tool-Drift in LLM Agents

cs.CR · 2026-05-24 · unverdicted · novelty 7.0

Biased long-term memories in LLM agents cause measurable deviations in tool parameters across 105 scenarios, seven models, and 608 real tools, persisting under standard memory architectures.

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  • Memory-Induced Tool-Drift in LLM Agents cs.CR · 2026-05-24 · unverdicted · none · ref 27 · internal anchor

    Biased long-term memories in LLM agents cause measurable deviations in tool parameters across 105 scenarios, seven models, and 608 real tools, persisting under standard memory architectures.