MAMar 13

Collaborative Multi-Agent Optimization for Personalized Memory System

arXiv:2603.1263197.4
AI Analysis

This work addresses the challenge of enhancing global performance in personalized memory systems for LLM users, representing an incremental improvement through joint optimization of existing agents.

The paper tackles the problem of optimizing multi-agent memory systems for personalized LLMs by addressing the lack of cross-agent collaboration, proposing a collaborative reinforcement learning framework that jointly optimizes local agents, resulting in improved performance over leading memory systems.

Memory systems are crucial to personalized LLMs by mitigating the context window limitation in capturing long-term user-LLM conversations. Typically, such systems leverage multiple agents to handle multi-granular memory construction and personalized memory retrieval tasks. To optimize the system, existing methods focus on specializing agents on their local tasks independently via prompt engineering or fine-tuning. However, they overlook cross-agent collaboration, where independent optimization on local agents hardly guarantees the global system performance. To address this issue, we propose a Collaborative Reinforcement Learning Framework for Multi-Agent Memory Systems (CoMAM), jointly optimizing local agents to facilitate collaboration. Specifically, we regularize agents' execution as a sequential Markov decision process (MDP) to embed inter-agent dependencies into the state transition, yielding both local task rewards (e.g., information coverage for memory construction) and global rewards (i.e., query-answer accuracy). Then, we quantify each agent's contribution via group-level ranking consistency between local and global rewards, treating them as adaptive weights to assign global credit and integrate local-global rewards. Each agent is optimized by these integrated rewards, aligning local improvements with the global performance. Experiments show CoMAM outperforms leading memory systems, validating the efficacy of our proposed collaborative reinforcement learning for joint optimization.

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