从DBpedia本体到Wikipedia文本的关系实例化匹配:框架与韩文融合

YoungGyun Hahm, Youngsik Kim, Yousung Won, Jongsung Woo, Jiwoo Seo, Jiseong Kim, Seong-Bae Park, D. Hwang, Key-Sun Choi
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引用次数: 9

摘要

目前,从非结构化数据中构建知识库的研究正在进行中。这个过程需要一个本体,它包含足够的属性来覆盖知识元素的各种属性。作为一个庞大的百科全书,维基百科是一个典型的非结构化的知识语料库。DBpedia是基于DBpedia本体而构建的结构化知识库,DBpedia本体是为了很好地表示维基百科中的知识而创建的。然而,DBpedia本体是一个wikipedia - infobox驱动的本体。这意味着,虽然它适合表示维基百科的基本知识,但它并不能涵盖维基百科文本中的所有知识。为了克服这个问题,表示语义或词的关系的资源(如WordNet和frameet)被认为是有用的。在本文中,我们确定DBpedia本体是否足以覆盖维基百科中足够数量的自然语言书面知识。我们主要以韩文维基百科为研究对象,采用DBpedia本体和FrameNet框架两种方法计算韩文维基百科的覆盖率。为此,我们从维基百科文本中提取具有可提取知识的句子,并通过词性标注提取自然语言谓词。我们生成了DBpedia本体属性和框架索引的韩文词典,并使用这些词典度量了DBpedia本体和框架的韩文维基百科覆盖率。根据我们的测量,FrameNet框架覆盖了73.85%的韩语维基百科句子,这是维基百科文本的足够部分。最后简要指出了DBpedia和FrameNet的局限性,并根据实验结果提出了构建知识库的展望。
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Toward matching the relation instantiation from DBpedia ontology to Wikipedia text: fusing FrameNet to Korean
Nowadays, there are many ongoing researches to construct knowledge bases from unstructured data. This process requires an ontology that includes enough properties to cover the various attributes of knowledge elements. As a huge encyclopedia, Wikipedia is a typical unstructured corpora of knowledge. DBpedia, a structured knowledge base constructed from Wikipedia, is based on DBpedia ontology which was created to represent knowledge in Wikipedia well. However, DBpedia ontology is a Wikipedia-Infobox-driven ontology. This means that although it is suitable to represent essential knowledge of Wikipedia, it does not cover all of the knowledge in Wikipedia text. In overcoming this problem, resources representing semantics or relations of words such as WordNet and FrameNet are considered useful. In this paper we determined whether DBpedia ontology is enough to cover a sufficient amount of natural language written knowledge in Wikipedia. We mainly focused on the Korean Wikipedia, and calculated the Korean Wikipedia coverage rate with two methods, by the DBpedia ontology and by FrameNet frames. To do this, we extracted sentences with extractable knowledge from Wikipedia text, and also extracted natural language predicates by Part-Of-Speech tagging. We generated Korean lexicons for DBpedia ontology properties and frame indexes, and used these lexicons to measure the Korean Wikipedia coverage ratio of the DBpedia ontology and frames. By our measurements, FrameNet frames cover 73.85% of the Korean Wikipedia sentences, which is a sufficient portion of Wikipedia text. We finally show the limitations of DBpedia and FrameNet briefly, and propose the outlook of constructing knowledge bases based on the experiment results.
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