English

AgentSelect: Benchmark for Narrative Query-to-Agent Recommendation

Artificial Intelligence 2026-03-05 v1 Information Retrieval

Abstract

LLM agents are rapidly becoming the practical interface for task automation, yet the ecosystem lacks a principled way to choose among an exploding space of deployable configurations. Existing LLM leaderboards and tool/agent benchmarks evaluate components in isolation and remain fragmented across tasks, metrics, and candidate pools, leaving a critical research gap: there is little query-conditioned supervision for learning to recommend end-to-end agent configurations that couple a backbone model with a toolkit. We address this gap with AgentSelect, a benchmark that reframes agent selection as narrative query-to-agent recommendation over capability profiles and systematically converts heterogeneous evaluation artifacts into unified, positive-only interaction data. AgentSelectcomprises 111,179 queries, 107,721 deployable agents, and 251,103 interaction records aggregated from 40+ sources, spanning LLM-only, toolkit-only, and compositional agents. Our analyses reveal a regime shift from dense head reuse to long-tail, near one-off supervision, where popularity-based CF/GNN methods become fragile and content-aware capability matching is essential. We further show that Part~III synthesized compositional interactions are learnable, induce capability-sensitive behavior under controlled counterfactual edits, and improve coverage over realistic compositions; models trained on AgentSelect also transfer to a public agent marketplace (MuleRun), yielding consistent gains on an unseen catalog. Overall, AgentSelect provides the first unified data and evaluation infrastructure for agent recommendation, which establishes a reproducible foundation to study and accelerate the emerging agent ecosystem.

Keywords

Cite

@article{arxiv.2603.03761,
  title  = {AgentSelect: Benchmark for Narrative Query-to-Agent Recommendation},
  author = {Yunxiao Shi and Wujiang Xu and Tingwei Chen and Haoning Shang and Ling Yang and Yunfeng Wan and Zhuo Cao and Xing Zi and Dimitris N. Metaxas and Min Xu},
  journal= {arXiv preprint arXiv:2603.03761},
  year   = {2026}
}

Comments

under review by conference

R2 v1 2026-07-01T11:02:31.753Z