MALGMay 25

ATOM: Instantiating Budget-Controllable Multi-Agent Collaboration via Nucleus-Electron Hierarchy

arXiv:2605.2617873.9
Predicted impact top 23% in MA · last 90 daysOriginality Highly original
AI Analysis

For LLM-based multi-agent systems, ATOM addresses the stability-extensibility trade-off and budget misalignment, enabling efficient and adaptive collaboration.

ATOM introduces a budget-controllable multi-agent collaboration framework using a nucleus-electron hierarchy, achieving state-of-the-art performance with up to 30% token efficiency improvement across six benchmarks.

Large Language Model (LLM)-based multi-agent systems rely on optimized collaboration topologies to balance performance and communication costs. However, current methods struggle with the inherent stability-extensibility trade-off and often misalign computational budgets with query difficulty. We propose \textsc{ATOM}, an adaptive framework that generates budget-controllable collaboration graphs via a novel task-driven reinforcement learning paradigm. Inspired by atomic structures, \textsc{ATOM} employs a nucleus-electron hierarchy: it maintains a stable, offline-learned collaboration backbone (the nucleus) while dynamically activating query-conditioned agents (electrons) during inference. Crucially, a complexity-aware budgeting strategy aligns resource consumption with task demands by estimating query difficulty to strictly regulate electron instantiation. Extensive experiments across six diverse benchmarks demonstrate that \textsc{ATOM} achieves state-of-the-art performance while improving token efficiency by up to $30\%$ compared to strong baselines.

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