Towards Multi-Agent Reasoning Systems for Collaborative Expertise Delegation: An Exploratory Design Study
Towards Multi-Agent Reasoning Systems for Collaborative Expertise Delegation: An Exploratory Design Study
Designing effective collaboration structure for multi-agent LLM systems to enhance collective reasoning is crucial yet remains under-explored. In this paper, we systematically investigate how collaborative reasoning performance is affected by three key design dimensions: (1) Expertise-Domain Alignment, (2) Collaboration Paradigm (structured workflow vs. diversity-driven integration), and (3) System Scale. Our findings reveal that expertise alignment benefits are highly domain-contingent, proving most effective for contextual reasoning tasks. Furthermore, collaboration focused on integrating diverse knowledge consistently outperforms rigid task decomposition. Finally, we empirically explore the impact of scaling the multi-agent system with expertise specialization and study the computational trade off, highlighting the need for more efficient communication protocol design. This work provides concrete guidelines for configuring specialized multi-agent system and identifies critical architectural trade-offs and bottlenecks for scalable multi-agent reasoning. The code will be made available upon acceptance.
Baixuan Xu、Chunyang Li、Weiqi Wang、Wei Fan、Tianshi Zheng、Haochen Shi、Tao Fan、Yangqiu Song、Qiang Yang
计算技术、计算机技术
Baixuan Xu,Chunyang Li,Weiqi Wang,Wei Fan,Tianshi Zheng,Haochen Shi,Tao Fan,Yangqiu Song,Qiang Yang.Towards Multi-Agent Reasoning Systems for Collaborative Expertise Delegation: An Exploratory Design Study[EB/OL].(2025-05-12)[2025-06-04].https://arxiv.org/abs/2505.07313.点此复制
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