cs.AI updates on arXiv.org 07月08日
PRIME: Large Language Model Personalization with Cognitive Memory and Thought Processes
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本文提出一种名为PRIME的LLM个性化框架,通过引入认知双记忆模型和慢思考策略,有效捕捉用户动态个性化需求,并验证其有效性。

arXiv:2507.04607v1 Announce Type: cross Abstract: Large language model (LLM) personalization aims to align model outputs with individuals' unique preferences and opinions. While recent efforts have implemented various personalization methods, a unified theoretical framework that can systematically understand the drivers of effective personalization is still lacking. In this work, we integrate the well-established cognitive dual-memory model into LLM personalization, by mirroring episodic memory to historical user engagements and semantic memory to long-term, evolving user beliefs. Specifically, we systematically investigate memory instantiations and introduce a unified framework, PRIME, using episodic and semantic memory mechanisms. We further augment PRIME with a novel personalized thinking capability inspired by the slow thinking strategy. Moreover, recognizing the absence of suitable benchmarks, we introduce a dataset using Change My View (CMV) from Reddit, specifically designed to evaluate long-context personalization. Extensive experiments validate PRIME's effectiveness across both long- and short-context scenarios. Further analysis confirms that PRIME effectively captures dynamic personalization beyond mere popularity biases.

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相关标签

LLM个性化 认知双记忆模型 PRIME框架 慢思考策略 长上下文个性化
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