面向自主AI智能体的新型记忆遗忘技术:平衡相关性与效率 / Novel Memory Forgetting Techniques for Autonomous AI Agents: Balancing Relevance and Efficiency
1️⃣ 一句话总结
这篇论文提出了一种自适应的、有预算的记忆遗忘框架,通过智能地选择性地遗忘不重要的旧记忆,让长期对话AI在保持推理能力的同时,避免因记忆无限增长而导致的性能下降和错误记忆问题。
Long-horizon conversational agents require persistent memory for coherent reasoning, yet uncontrolled accumulation causes temporal decay and false memory propagation. Benchmarks such as LOCOMO and LOCCO report performance degradation from 0.455 to 0.05 across stages, while MultiWOZ shows 78.2% accuracy with 6.8% false memory rate under persistent retention. This work introduces an adaptive budgeted forgetting framework that regulates memory through relevanceguided scoring and bounded optimization. The approach integrates recency, frequency, and semantic alignment to maintain stability under constrained context. Comparative analysis demonstrates improved long-horizon F1 beyond 0.583 baseline levels, higher retention consistency, and reduced false memory behavior without increasing context usage. These findings confirm that structured forgetting preserves reasoning performance while preventing unbounded memory growth in extended conversational settings.
面向自主AI智能体的新型记忆遗忘技术:平衡相关性与效率 / Novel Memory Forgetting Techniques for Autonomous AI Agents: Balancing Relevance and Efficiency
这篇论文提出了一种自适应的、有预算的记忆遗忘框架,通过智能地选择性地遗忘不重要的旧记忆,让长期对话AI在保持推理能力的同时,避免因记忆无限增长而导致的性能下降和错误记忆问题。
源自 arXiv: 2604.02280