SYMPHONY: Synergistic Multi-agent Planning with Heterogeneous Language Model Assembly
–Neural Information Processing Systems
Recent advancements have increasingly focused on leveraging large language models (LLMs) to construct autonomous agents for complex problem-solving tasks. However, existing approaches predominantly employ a single-agent framework to generate search branches and estimate rewards during Monte Carlo Tree Search (MCTS) planning. This single-agent paradigm inherently limits exploration capabilities, often resulting in insufficient diversity among generated branches and suboptimal planning performance.
Neural Information Processing Systems
Jun-27-2026, 02:15:46 GMT
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