CLAIMar 31

Oblivion: Self-Adaptive Agentic Memory Control through Decay-Driven Activation

arXiv:2604.0013177.6Has Code
AI Analysis

This addresses memory inefficiencies for LLM agents, offering an incremental improvement over existing methods.

The paper tackles the problem of memory interference and latency in memory-augmented LLM agents by introducing Oblivion, a framework that uses decay-driven memory control to adaptively manage memory access and reinforcement, resulting in dynamic adaptation on long-horizon interaction benchmarks.

Human memory adapts through selective forgetting: experiences become less accessible over time but can be reactivated by reinforcement or contextual cues. In contrast, memory-augmented LLM agents rely on "always-on" retrieval and "flat" memory storage, causing high interference and latency as histories grow. We introduce Oblivion, a memory control framework that casts forgetting as decay-driven reductions in accessibility, not explicit deletion. Oblivion decouples memory control into read and write paths. The read path decides when to consult memory, based on agent uncertainty and memory buffer sufficiency, avoiding redundant always-on access. The write path decides what to strengthen, by reinforcing memories contributing to forming the response. Together, this enables hierarchical memory organization that maintains persistent high-level strategies while dynamically loading details as needed. We evaluate on both static and dynamic long-horizon interaction benchmarks. Results show that Oblivion dynamically adapts memory access and reinforcement, balancing learning and forgetting under shifting contexts, highlighting that memory control is essential for effective LLM-agentic reasoning. The source code is available at https://github.com/nec-research/oblivion.

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