Cross-Document Contextual Coreference Resolution in Knowledge Graphs
- URL: http://arxiv.org/abs/2504.05767v1
- Date: Tue, 08 Apr 2025 07:47:07 GMT
- Title: Cross-Document Contextual Coreference Resolution in Knowledge Graphs
- Authors: Zhang Dong, Mingbang Wang, Songhang deng, Le Dai, Jiyuan Li, Xingzu Liu, Ruilin Nong,
- Abstract summary: This study introduces an innovative method aimed at identifying and resolving references to the same entities that appear across differing texts.<n>Our method employs a dynamic linking mechanism that associates entities in the knowledge graph with their corresponding textual mentions.
- Score: 0.9752323911408618
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Coreference resolution across multiple documents poses a significant challenge in natural language processing, particularly within the domain of knowledge graphs. This study introduces an innovative method aimed at identifying and resolving references to the same entities that appear across differing texts, thus enhancing the coherence and collaboration of information. Our method employs a dynamic linking mechanism that associates entities in the knowledge graph with their corresponding textual mentions. By utilizing contextual embeddings along with graph-based inference strategies, we effectively capture the relationships and interactions among entities, thereby improving the accuracy of coreference resolution. Rigorous evaluations on various benchmark datasets highlight notable advancements in our approach over traditional methodologies. The results showcase how the contextual information derived from knowledge graphs enhances the understanding of complex relationships across documents, leading to better entity linking and information extraction capabilities in applications driven by knowledge. Our technique demonstrates substantial improvements in both precision and recall, underscoring its effectiveness in the area of cross-document coreference resolution.
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