cs.AI updates on arXiv.org 10月31日 12:03
LINK-KG:构建复杂犯罪网络知识图谱的新框架
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本文提出了一种名为LINK-KG的模块化框架,用于从法律文本中构建复杂犯罪网络的知识图谱。该框架通过整合LLM引导的三阶段核心指派流程和下游知识图谱提取,显著提高了图谱的清晰度和一致性。

arXiv:2510.26486v1 Announce Type: new Abstract: Human smuggling networks are complex and constantly evolving, making them difficult to analyze comprehensively. Legal case documents offer rich factual and procedural insights into these networks but are often long, unstructured, and filled with ambiguous or shifting references, posing significant challenges for automated knowledge graph (KG) construction. Existing methods either overlook coreference resolution or fail to scale beyond short text spans, leading to fragmented graphs and inconsistent entity linking. We propose LINK-KG, a modular framework that integrates a three-stage, LLM-guided coreference resolution pipeline with downstream KG extraction. At the core of our approach is a type-specific Prompt Cache, which consistently tracks and resolves references across document chunks, enabling clean and disambiguated narratives for structured knowledge graph construction from both short and long legal texts. LINK-KG reduces average node duplication by 45.21% and noisy nodes by 32.22% compared to baseline methods, resulting in cleaner and more coherent graph structures. These improvements establish LINK-KG as a strong foundation for analyzing complex criminal networks.

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知识图谱 犯罪网络 法律文本 核心指派 LLM
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