Learning to Recommend Multi-Agent Subgraphs from Calling Trees
Xinyuan Song, Liang Zhao

TL;DR
This paper introduces a novel framework for recommending agents and subgraphs in multi-agent systems by leveraging historical calling trees, addressing the limitations of traditional recommender systems in structured, sequential, and interaction-dependent contexts.
Contribution
It formulates agent recommendation as a constrained decision problem and develops a framework that combines retrieval and utility optimization based on calling trees.
Findings
Developed a unified calling-tree benchmark from multiple datasets.
Proposed a constrained recommendation framework for MAS.
Validated the approach on heterogeneous multi-agent corpora.
Abstract
Multi-agent systems (MAS) increasingly solve complex tasks by orchestrating agents and tools selected from rapidly growing marketplaces. As these marketplaces expand, many candidates become functionally overlapping, making selection not just a retrieval problem: beyond filtering relevant agents, an orchestrator must choose options that are reliable, compatible with the current execution context, and able to cooperate with other selected agents. Existing recommender systems -- largely built for item-level ranking from flat user-item logs -- do not directly address the structured, sequential, and interaction-dependent nature of agent orchestration. We address this gap by \textbf{formulating agent recommendation in MAS as a constrained decision problem} and introducing a generic \textbf{constrained recommendation framework} that first uses retrieval to build a compact candidate set…
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Taxonomy
TopicsRecommender Systems and Techniques · Mobile Crowdsensing and Crowdsourcing · Explainable Artificial Intelligence (XAI)
