cs.AI updates on arXiv.org 09月30日
LoGo框架提升LLM个性化
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本文提出一种结合个性化本地记忆与集体全球记忆的LoGo框架,解决LLM个性化中的冷启动问题和偏差问题,通过实验证明该框架有效提升个性化质量。

arXiv:2509.23767v1 Announce Type: cross Abstract: Large language model (LLM) personalization aims to tailor model behavior to individual users based on their historical interactions. However, its effectiveness is often hindered by two key challenges: the \textit{cold-start problem}, where users with limited history provide insufficient context for accurate personalization, and the \textit{biasing problem}, where users with abundant but skewed history cause the model to overfit to narrow preferences. We identify both issues as symptoms of a common underlying limitation, i.e., the inability to model collective knowledge across users. To address this, we propose a local-global memory framework (LoGo) that combines the personalized local memory with a collective global memory that captures shared interests across the population. To reconcile discrepancies between these two memory sources, we introduce a mediator module designed to resolve conflicts between local and global signals. Extensive experiments on multiple benchmarks demonstrate that LoGo consistently improves personalization quality by both warming up cold-start users and mitigating biased predictions. These results highlight the importance of incorporating collective knowledge to enhance LLM personalization.

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LLM个性化 冷启动问题 偏差问题 LoGo框架 集体知识
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