English

No-Human in the Loop: Agentic Evaluation at Scale for Recommendation

Artificial Intelligence 2025-11-06 v1 Information Retrieval

Abstract

Evaluating large language models (LLMs) as judges is increasingly critical for building scalable and trustworthy evaluation pipelines. We present ScalingEval, a large-scale benchmarking study that systematically compares 36 LLMs, including GPT, Gemini, Claude, and Llama, across multiple product categories using a consensus-driven evaluation protocol. Our multi-agent framework aggregates pattern audits and issue codes into ground-truth labels via scalable majority voting, enabling reproducible comparison of LLM evaluators without human annotation. Applied to large-scale complementary-item recommendation, the benchmark reports four key findings: (i) Anthropic Claude 3.5 Sonnet achieves the highest decision confidence; (ii) Gemini 1.5 Pro offers the best overall performance across categories; (iii) GPT-4o provides the most favorable latency-accuracy-cost tradeoff; and (iv) GPT-OSS 20B leads among open-source models. Category-level analysis shows strong consensus in structured domains (Electronics, Sports) but persistent disagreement in lifestyle categories (Clothing, Food). These results establish ScalingEval as a reproducible benchmark and evaluation protocol for LLMs as judges, with actionable guidance on scaling, reliability, and model family tradeoffs.

Keywords

Cite

@article{arxiv.2511.03051,
  title  = {No-Human in the Loop: Agentic Evaluation at Scale for Recommendation},
  author = {Tao Zhang and Kehui Yao and Luyi Ma and Jiao Chen and Reza Yousefi Maragheh and Kai Zhao and Jianpeng Xu and Evren Korpeoglu and Sushant Kumar and Kannan Achan},
  journal= {arXiv preprint arXiv:2511.03051},
  year   = {2025}
}

Comments

4 page, NeurIPS 2025 Workshop: Evaluating the Evolving LLM Lifecycle

R2 v1 2026-07-01T07:22:07.731Z