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Ontology enrichment with causation relations

机译:具有因果关系的本体丰富

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Ontology learning is considered a potential approach that can help to reduce the bottleneck of knowledge acquisition. However it suffers from a lack of standards to define concepts, besides the lack of fully automatic knowledge acquisition methods. In performing this learning process, the discovery of non-taxonomic relationships has been identified as being the most difficult. This study is then an attempt to create an enhanced framework for discovering and classifying ontological relationships by using a machine learning strategy. We take into consideration the context of the input text in performing the classification of the semantic relations, in particular, causation relations. The proposed framework extracts initial semantic patterns for causation relation from the input samples, then filters these patterns using two novel algorithms, namely, the “Purpose Based Word Sense Disambiguation” which helps in determining the causation senses for input pair of words and the “Graph Based Semantics” which determines the existence of the causation relations in the sentence and to extract their cause-effect parts. The results show a good performance and the implemented framework cut off many steps of the usual process to produce the final results.
机译:本体学习被认为是一种潜在的方法,可以帮助减少知识获取的瓶颈。然而,除了缺乏全自动的知识获取方法之外,它还缺乏定义概念的标准。在执行此学习过程中,发现非分类关系是最困难的。然后,本研究试图通过使用机器学习策略来创建用于发现和分类本体关系的增强框架。在执行语义关系(尤其是因果关系)的分类时,我们会考虑输入文本的上下文。提出的框架从输入样本中提取因果关系的初始语义模式,然后使用两种新颖的算法过滤这些模式,即“基于目的的词义消歧”,它有助于确定输入词对的因果关系,而“图” “基于语义”,它确定句子中因果关系的存在并提取其因果关系部分。结果显示出良好的性能,并且已实施的框架切断了通常过程的许多步骤,以产生最终结果。

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