MemReader: From Passive to Active Extraction for Long-Term Agent Memory
Jingyi Kang, Chunyu Li, Ding Chen, Bo Tang, Feiyu Xiong, Zhiyu Li

TL;DR
MemReader introduces active and passive extraction methods for long-term agent memory, improving accuracy, consistency, and reasoning capabilities in memory management for autonomous systems.
Contribution
The paper presents MemReader, a novel active extraction model using GRPO, and demonstrates its effectiveness over existing baselines in various memory-related tasks.
Findings
MemReader-4B outperforms existing baselines in memory extraction tasks.
Active extraction with reasoning improves memory quality and reduces noise.
State-of-the-art performance achieved in knowledge updating and temporal reasoning.
Abstract
Long-term memory is fundamental for personalized and autonomous agents, yet populating it remains a bottleneck. Existing systems treat memory extraction as a one-shot, passive transcription from context to structured entries, which struggles with noisy dialogue, missing references, and cross-turn dependencies, leading to memory pollution, low-value writes, and inconsistency. In this paper, we introduce the MemReader family for active long-term memory extraction in agent systems: MemReader-0.6B, a compact and cost-efficient passive extractor distilled for accurate and schema-consistent structured outputs, and MemReader-4B, an active extractor optimized with Group Relative Policy Optimization (GRPO) to make memory writing decisions. Under a ReAct-style paradigm, MemReader-4B explicitly evaluates information value, reference ambiguity, and completeness before acting, and can selectively…
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