cs.AI updates on arXiv.org 09月11日
JEL模型:高效实体链接新突破
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本文介绍了一种名为JEL的新型高效端到端多神经网络实体链接模型,该模型在实体链接任务上超越了现有最先进的模型。JEL模型在知识图谱构建和新闻分析等领域具有广泛应用,能够有效提升工作效率。

arXiv:2509.08086v1 Announce Type: cross Abstract: We present JEL, a novel computationally efficient end-to-end multi-neural network based entity linking model, which beats current state-of-art model. Knowledge Graphs have emerged as a compelling abstraction for capturing critical relationships among the entities of interest and integrating data from multiple heterogeneous sources. A core problem in leveraging a knowledge graph is linking its entities to the mentions (e.g., people, company names) that are encountered in textual sources (e.g., news, blogs., etc) correctly, since there are thousands of entities to consider for each mention. This task of linking mentions and entities is referred as Entity Linking (EL). It is a fundamental task in natural language processing and is beneficial in various uses cases, such as building a New Analytics platform. News Analytics, in JPMorgan, is an essential task that benefits multiple groups across the firm. According to a survey conducted by the Innovation Digital team 1 , around 25 teams across the firm are actively looking for news analytics solutions, and more than \$2 million is being spent annually on external vendor costs. Entity linking is critical for bridging unstructured news text with knowledge graphs, enabling users access to vast amounts of curated data in a knowledge graph and dramatically facilitating their daily work.

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实体链接 知识图谱 JEL模型 新闻分析 自然语言处理
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