Ontological Knowledge Inferring Approach based on Term-Clustering and Intra-Cluster Permutations

Muditha Tissera, R. Weerasinghe
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Abstract

Ontological representation of knowledge has the advantage of being easy to reason with, but ontology construction with knowledge facts, automatically acquiring them from open domain text is often challenging. This research introduces a novel approach to infer new ontological knowledge in a fully automated manner. Such ontological knowledge can be utilized in both constructing new ontologies and extending existing ontologies. Basic level triples that can be extracted from open domain text are used as the data source for this study. A simple mechanism has been introduced to convert the triple into an ontological knowledge fact and such ontological knowledge facts are further processed to infer new ontological knowledge. The main focus of this research is to infer new ontological knowledge using an advanced term-clustering mechanism followed by an intra-cluster permutation generation task. Generated permutations are potential to be selected as good ontological knowledge facts. Inferred ontological knowledge was tested with inter-rater agreement method with high reliability and variability. Results demonstrated that, out of 43,103 triples, this method inferred 127,874 ontological knowledge (approximately 3 times) of which 66% were estimated to be effective. Finally, this research contributes a reliable approach which requires a single pass over the corpus of triples to infer a large number of ontological knowledge facts that can be used to construct/extend ontologies.
基于术语聚类和聚类内排列的本体知识推断方法
知识的本体论表示具有易于推理的优点,但利用知识事实构建本体论,并从开放领域文本中自动获取知识事实往往具有挑战性。本研究引入了一种全新的方法,以全自动化的方式推断新的本体知识。这些本体知识既可以用于构建新的本体,也可以用于扩展现有的本体。本研究使用开放域文本中可提取的基本级别三元组作为数据源。引入了一种简单的机制将三元组转换为本体知识事实,并对这些本体知识事实进行进一步处理以推断新的本体知识。本研究的主要重点是使用先进的术语聚类机制和集群内排列生成任务来推断新的本体知识。生成的排列有可能被选为好的本体论知识事实。本体论知识推理测试采用高可靠性、高可变性的评分间一致性方法。结果表明,在43,103个三元组中,该方法推断了127,874个本体知识(约3倍),其中66%估计是有效的。最后,本研究提供了一种可靠的方法,该方法只需要对三元组语料库进行一次传递,就可以推断出大量可用于构建/扩展本体的本体知识事实。
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