cs.AI updates on arXiv.org 09月30日
ReMemR1:长文本问答中的记忆增强方法
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本文提出了一种名为ReMemR1的记忆增强方法,旨在解决长文本问答中信息丢失、监督不足等问题,通过增强记忆和多层次奖励机制,提高问答质量。

arXiv:2509.23040v1 Announce Type: cross Abstract: Large language models face challenges in long-context question answering, where key evidence of a query may be dispersed across millions of tokens. Existing works equip large language models with a memory corpus that is dynamically updated during a single-pass document scan, also known as the "memorize while reading" methods. While this approach scales efficiently, it suffers from irreversible forward-only processing, information loss through overwriting, and sparse reinforcement learning signals. To tackle these challenges, we present ReMemR1, a memory-augmented agent with callback-enhanced memory that allows selective retrieval from the entire memory history and allows non-linear reasoning and revisiting of early evidence. To further strengthen training, we propose Reinforcement Learning with Multi-Level Rewards (RLMLR), which combines final-answer rewards with dense, step-level signals that guide effective memory use. Together, these contributions mitigate information degradation, improve supervision, and support multi-hop memory utilizing. Experiments on long-document QA show significant gains over existing memory-based approaches, which validates ReMemR1 as an effective solution for long-context reasoning agents.

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长文本问答 记忆增强 多层次奖励机制 信息退化 监督不足
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