匹配HTML表到DBpedia

Dominique Ritze, O. Lehmberg, Christian Bizer
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引用次数: 160

摘要

在Web上可以找到数百万个包含结构化数据的HTML表。由于覆盖范围广,这些表对于填补缺失值和扩展跨领域知识库(如DBpedia、YAGO或Google knowledge Graph)可能非常有用。作为能够将表数据用于知识库扩展的先决条件,HTML表需要与知识库匹配,这意味着需要找到表行/列与知识库的实体/模式元素之间的对应关系。本文提出了用于度量和比较HTML表与知识库匹配系统性能的T2D金标准。T2D由webdataccommons Web Tables语料库和DBpedia知识库之间的8700个模式级和26100个实体级通信组成。与HTML表与知识库匹配的相关工作相比,Web Tables语料库(1.47亿个表)、知识库以及黄金标准都是公开可用的。然后使用金标准来评估T2K匹配的性能,T2K匹配是一种结合模式和实例匹配的迭代匹配方法。T2K Match是为针对大型跨领域知识库匹配大量小而窄的HTML表的用例而设计的。使用T2D金标准的评估表明,T2K Match发现表到类对应的精度为94%,行到实体对应的精度为90%,列到属性对应的精度为77%。
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Matching HTML Tables to DBpedia
Millions of HTML tables containing structured data can be found on the Web. With their wide coverage, these tables are potentially very useful for filling missing values and extending cross-domain knowledge bases such as DBpedia, YAGO, or the Google Knowledge Graph. As a prerequisite for being able to use table data for knowledge base extension, the HTML tables need to be matched with the knowledge base, meaning that correspondences between table rows/columns and entities/schema elements of the knowledge base need to be found. This paper presents the T2D gold standard for measuring and comparing the performance of HTML table to knowledge base matching systems. T2D consists of 8 700 schema-level and 26 100 entity-level correspondences between the WebDataCommons Web Tables Corpus and the DBpedia knowledge base. In contrast related work on HTML table to knowledge base matching, the Web Tables Corpus (147 million tables), the knowledge base, as well as the gold standard are publicly available. The gold standard is used afterward to evaluate the performance of T2K Match, an iterative matching method which combines schema and instance matching. T2K Match is designed for the use case of matching large quantities of mostly small and narrow HTML tables against large cross-domain knowledge bases. The evaluation using the T2D gold standard shows that T2K Match discovers table-to-class correspondences with a precision of 94%, row-to-entity correspondences with a precision of 90%, and column-to-property correspondences with a precision of 77%.
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