Learning Transferable Topology Priors for Multi-Agent LLM Collaboration Across Domains
Taolin Zhang, Zijie Zhou, Jiuheng Wan, Tingyuan Hu, Chengyu Wang, Xiaofeng He, Richang Hong

TL;DR
This paper introduces TopoPrior, a framework that learns reusable topology priors offline to improve multi-agent LLM collaboration efficiency across domains, reducing online search overhead and token consumption.
Contribution
TopoPrior is the first method to learn transferable topology priors offline, enabling efficient multi-domain multi-agent LLM collaboration with reduced online computation.
Findings
Improves heterogeneous topology-evolution backbones across multiple benchmarks.
Reduces online inference token usage significantly.
Maintains compatibility with existing topology-evolution methods.
Abstract
Large language model (LLM)-based multi-agent systems have shown strong potential for complex reasoning by coordinating specialized agents through structured communication. However, existing topology-evolution methods typically construct or optimize a collaboration topology for each query from scratch, leading to substantial online search overhead, high inference-time token consumption, and limited scalability in multi-domain settings. We propose TopoPrior, a framework for learning transferable topology priors for multi-agent LLM collaboration across domains. Rather than repeatedly searching for effective collaboration structures online, TopoPrior learns reusable topology priors from reference collaboration graphs collected offline from multiple domains and uses them to generate query-conditioned initial collaboration graphs for downstream refinement. By shifting part of topology search…
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