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WIKIGENBENCH: Exploring Full-length Wikipedia Generation under Real-World Scenario

Computation and Language 2024-12-18 v2

Abstract

It presents significant challenges to generate comprehensive and accurate Wikipedia articles for newly emerging events under a real-world scenario. Existing attempts fall short either by focusing only on short snippets or by using metrics that are insufficient to evaluate real-world scenarios. In this paper, we construct WIKIGENBENCH, a new benchmark consisting of 1,320 entries, designed to align with real-world scenarios in both generation and evaluation. For generation, we explore a real-world scenario where structured, full-length Wikipedia articles with citations are generated for new events using input documents from web sources. For evaluation, we integrate systematic metrics and LLM-based metrics to assess the verifiability, organization, and other aspects aligned with real-world scenarios. Based on this benchmark, we conduct extensive experiments using various models within three commonly used frameworks: direct RAG, hierarchical structure-based RAG, and RAG with a fine-tuned generation model. Experimental results show that hierarchical-based methods can generate more comprehensive content, while fine-tuned methods achieve better verifiability. However, even the best methods still show a significant gap compared to existing Wikipedia content, indicating that further research is necessary.

Keywords

Cite

@article{arxiv.2402.18264,
  title  = {WIKIGENBENCH: Exploring Full-length Wikipedia Generation under Real-World Scenario},
  author = {Jiebin Zhang and Eugene J. Yu and Qinyu Chen and Chenhao Xiong and Dawei Zhu and Han Qian and Mingbo Song and Weimin Xiong and Xiaoguang Li and Qun Liu and Sujian Li},
  journal= {arXiv preprint arXiv:2402.18264},
  year   = {2024}
}

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COLING 2025 Camera Ready

R2 v1 2026-06-28T15:03:09.546Z