cs.AI updates on arXiv.org 10月01日
KGQAGen:提升知识图谱问答基准质量
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本文通过审计16个流行的知识图谱问答数据集,发现其质量存在问题。为解决这些问题,提出了KGQAGen框架,通过结构化知识接地、LLM引导生成和符号验证来生成可验证的问答实例,并构建了KGQAGen-10k基准,以评估KG-RAG模型。

arXiv:2505.23495v1 Announce Type: cross Abstract: Knowledge Graph Question Answering (KGQA) systems rely on high-quality benchmarks to evaluate complex multi-hop reasoning. However, despite their widespread use, popular datasets such as WebQSP and CWQ suffer from critical quality issues, including inaccurate or incomplete ground-truth annotations, poorly constructed questions that are ambiguous, trivial, or unanswerable, and outdated or inconsistent knowledge. Through a manual audit of 16 popular KGQA datasets, including WebQSP and CWQ, we find that the average factual correctness rate is only 57 %. To address these issues, we introduce KGQAGen, an LLM-in-the-loop framework that systematically resolves these pitfalls. KGQAGen combines structured knowledge grounding, LLM-guided generation, and symbolic verification to produce challenging and verifiable QA instances. Using KGQAGen, we construct KGQAGen-10k, a ten-thousand scale benchmark grounded in Wikidata, and evaluate a diverse set of KG-RAG models. Experimental results demonstrate that even state-of-the-art systems struggle on this benchmark, highlighting its ability to expose limitations of existing models. Our findings advocate for more rigorous benchmark construction and position KGQAGen as a scalable framework for advancing KGQA evaluation.

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知识图谱问答 数据集质量 KGQAGen框架 基准评估 KG-RAG模型
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