CLFeb 2

InfMem: Learning System-2 Memory Control for Long-Context Agent

arXiv:2602.02704v13 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of synthesizing sparse evidence in long-context agents for tasks like QA, representing a strong specific gain rather than a foundational advance.

The paper tackled the problem of reasoning over ultra-long documents by proposing InfMem, a control-centric agent that improves accuracy by up to 11.84 points and reduces inference time by up to 5.1 times compared to baseline methods.

Reasoning over ultra-long documents requires synthesizing sparse evidence scattered across distant segments under strict memory constraints. While streaming agents enable scalable processing, their passive memory update strategy often fails to preserve low-salience bridging evidence required for multi-hop reasoning. We propose InfMem, a control-centric agent that instantiates System-2-style control via a PreThink-Retrieve-Write protocol. InfMem actively monitors evidence sufficiency, performs targeted in-document retrieval, and applies evidence-aware joint compression to update a bounded memory. To ensure reliable control, we introduce a practical SFT-to-RL training recipe that aligns retrieval, writing, and stopping decisions with end-task correctness. On ultra-long QA benchmarks from 32k to 1M tokens, InfMem consistently outperforms MemAgent across backbones. Specifically, InfMem improves average absolute accuracy by +10.17, +11.84, and +8.23 points on Qwen3-1.7B, Qwen3-4B, and Qwen2.5-7B, respectively, while reducing inference time by $3.9\times$ on average (up to $5.1\times$) via adaptive early stopping.

Foundations

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