首页> 外文会议>International Conference on Rough Sets and Current Trends in Computing(RSCTC 2006); 20061106-08; Kobe(JP) >Enhancing a Biological Concept Ontology to Fuzzy Relational Ontology with Relations Mined from Text
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Enhancing a Biological Concept Ontology to Fuzzy Relational Ontology with Relations Mined from Text

机译:从文本中挖掘关系,将生物概念本体论增强为模糊关系本体论

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In this paper we investigate the problem of enriching an existing biological concept ontology into a fuzzy relational ontology structure using generic biological relations and their strengths mined from tagged biological text documents. Though biological relations in a text are defined between a pair of entities, the entities are usually tagged by their concept names in a tagged corpus. Since the tags themselves are related taxonomically, as given in the ontology, the mined relations have to be properly characterized before entering them into the ontology. We have proposed a mechanism to generalize each relation to be defined at the most appropriate level of specificity, before it can be added to the ontology. Since the mined relations have varying degrees of associations with various biological concepts, an appropriate fuzzy membership generation mechanism is proposed to fuzzify the strengths of the relations. Extensive experimentation has been conducted over the entire GENIA corpus and the results of enhancing the GENIA ontology are presented in the paper.
机译:在本文中,我们研究了使用通用生物关系及其从加标签的生物文本文档中提取的优势,将现有的生物概念本体丰富到模糊关系本体结构中的问题。尽管文本中的生物学关系是在一对实体之间定义的,但是通常在标记的语料库中通过其概念名称来标记这些实体。由于标签本身在分类学上是相关的,如在本体中给出的那样,因此在将它们输入到本体中之前,必须对挖掘的关系进行适当的表征。我们提出了一种机制,可以在将其添加到本体之前,以最合适的特异性级别概括要定义的每个关系。由于挖掘的关系与各种生物学概念的关联程度不同,因此提出了一种适当的模糊隶属度生成机制来模糊关系的强度。已经对整个GENIA语料库进行了广泛的实验,并在本文中介绍了增强GENIA本体的结果。

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