Multi-Agent Transactive Memory
Researchers propose Multi-Agent Transactive Memory (MATM), a framework enabling decentralized LLM agents to share and retrieve trajectories—recorded problem-solving paths—from a shared repository. Experiments in interactive environments demonstrate that agents retrieving stored trajectories improve task performance and efficiency without requiring coordination or joint training.