Enregistré dans:
Détails bibliographiques
Auteurs principaux: Wang, Shaohan, Xu, Benfeng, Zhang, Licheng, Du, Mingxuan, Zhu, Chiwei, Wang, Xiaorui, Mao, Zhendong, Zhang, Yongdong
Format: Preprint
Publié: 2026
Sujets:
Accès en ligne:https://arxiv.org/abs/2602.01590
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866908807460814848
author Wang, Shaohan
Xu, Benfeng
Zhang, Licheng
Du, Mingxuan
Zhu, Chiwei
Wang, Xiaorui
Mao, Zhendong
Zhang, Yongdong
author_facet Wang, Shaohan
Xu, Benfeng
Zhang, Licheng
Du, Mingxuan
Zhu, Chiwei
Wang, Xiaorui
Mao, Zhendong
Zhang, Yongdong
contents Deep Research Agents (DRAs) have demonstrated remarkable capabilities in autonomous information retrieval and report generation, showing great potential to assist humans in complex research tasks. Current evaluation frameworks primarily rely on LLM-generated references or LLM-derived evaluation dimensions. While these approaches offer scalability, they often lack the reliability of expert-verified content and struggle to provide objective, fine-grained assessments of critical dimensions. To bridge this gap, we introduce Wiki Live Challenge (WLC), a live benchmark that leverages the newest Wikipedia Good Articles (GAs) as expert-level references. Wikipedia's strict standards for neutrality, comprehensiveness, and verifiability serve as a great challenge for DRAs, with GAs representing the pinnacle of which. We curate a dataset of 100 recent Good Articles and propose Wiki Eval, a comprehensive evaluation framework comprising a fine-grained evaluation method with 39 criteria for writing quality and rigorous metrics for factual verifiability. Extensive experiments on various DRA systems demonstrate a significant gap between current DRAs and human expert-level Wikipedia articles, validating the effectiveness of WLC in advancing agent research. We release our benchmark at https://github.com/WangShao2000/Wiki_Live_Challenge
format Preprint
id arxiv_https___arxiv_org_abs_2602_01590
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Wiki Live Challenge: Challenging Deep Research Agents with Expert-Level Wikipedia Articles
Wang, Shaohan
Xu, Benfeng
Zhang, Licheng
Du, Mingxuan
Zhu, Chiwei
Wang, Xiaorui
Mao, Zhendong
Zhang, Yongdong
Computation and Language
Deep Research Agents (DRAs) have demonstrated remarkable capabilities in autonomous information retrieval and report generation, showing great potential to assist humans in complex research tasks. Current evaluation frameworks primarily rely on LLM-generated references or LLM-derived evaluation dimensions. While these approaches offer scalability, they often lack the reliability of expert-verified content and struggle to provide objective, fine-grained assessments of critical dimensions. To bridge this gap, we introduce Wiki Live Challenge (WLC), a live benchmark that leverages the newest Wikipedia Good Articles (GAs) as expert-level references. Wikipedia's strict standards for neutrality, comprehensiveness, and verifiability serve as a great challenge for DRAs, with GAs representing the pinnacle of which. We curate a dataset of 100 recent Good Articles and propose Wiki Eval, a comprehensive evaluation framework comprising a fine-grained evaluation method with 39 criteria for writing quality and rigorous metrics for factual verifiability. Extensive experiments on various DRA systems demonstrate a significant gap between current DRAs and human expert-level Wikipedia articles, validating the effectiveness of WLC in advancing agent research. We release our benchmark at https://github.com/WangShao2000/Wiki_Live_Challenge
title Wiki Live Challenge: Challenging Deep Research Agents with Expert-Level Wikipedia Articles
topic Computation and Language
url https://arxiv.org/abs/2602.01590