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Inducting Concept Hierarchies from Text Based on FCA

机译:基于FCA的文本归纳概念层次

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Clustering Concept Hierarchies is the most important and basic procedure among the tasks of Ontology Construction to organize the knowledge. This paper proposes a method for concept hierarchies induction based on FCA from a list of concepts. In our method, the feature space is specified to be the attributes of the concept. Thus the feature extraction can be turned into the extraction of attribute values. Secondly, we construct a small Ontology to train a model which helps to evaluate the features. The distance between two concepts is computed based on both the weight of the attributes and the weight of the attributes values. Experiments are done to compute the F-value of the clustering methods, typical FCA method and our method to show its usage.
机译:聚类概念层次结构是本体构建任务中组织知识的最重要,最基本的过程。本文从概念列表中提出了一种基于FCA的概念层次归纳方法。在我们的方法中,特征空间被指定为概念的属性。因此,特征提取可以转变为属性值的提取。其次,我们构建一个小的本体来训练一个模型,该模型有助于评估功能。基于属性的权重和属性值的权重两者来计算两个概念之间的距离。进行了实验以计算聚类方法,典型FCA方法和我们的方法的F值,以显示其用法。

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