A Two-Stage Framework for Computing Entity Relatedness in Wikipedia

Marco Ponza, P. Ferragina, Soumen Chakrabarti
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引用次数: 21

Abstract

Introducing a new dataset with human judgments of entity relatedness, we present a thorough study of all entity relatedness measures in recent literature based on Wikipedia as the knowledge graph. No clear dominance is seen between measures based on textual similarity and graph proximity. Some of the better measures involve expensive global graph computations. We then propose a new, space-efficient, computationally lightweight, two-stage framework for relatedness computation. In the first stage, a small weighted subgraph is dynamically grown around the two query entities; in the second stage, relatedness is derived based on computations on this subgraph. Our system shows better agreement with human judgment than existing proposals both on the new dataset and on an established one. We also plug our relatedness algorithm into a state-of-the-art entity linker and observe an increase in its accuracy and robustness.
维基百科中计算实体关联的两阶段框架
我们引入了一个新的数据集,对最近文献中基于维基百科作为知识图的所有实体相关性度量进行了深入的研究。在基于文本相似度和图形接近度的测量之间没有明显的优势。一些更好的度量涉及昂贵的全局图计算。然后,我们提出了一种新的、节省空间的、计算轻量级的、两阶段的相关性计算框架。在第一阶段,围绕两个查询实体动态生长一个小的加权子图;在第二阶段,基于该子图的计算推导相关性。无论在新数据集上还是在已建立的数据集上,我们的系统都比现有的建议更符合人类的判断。我们还将我们的关联算法插入到最先进的实体链接器中,并观察到其准确性和鲁棒性的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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