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Domain ontology graph model and its application in Chinese text classification

机译:领域本体图模型及其在中文文本分类中的应用

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摘要

This paper proposes an ontology learning method which is used to generate a graphical ontology structure called ontology graph. The ontology graph defines the ontology and knowledge conceptualization model, and the ontology learning process defines the method of semiautomatic learning and generates ontology graphs from Chinese texts of different domains, the so-called domain ontology graph (DOG). Meanwhile, we also define two other ontological operations-document ontology graph generation and ontology graph-based text classification, which can be carried out with the generated DOG. This research focuses on Chinese text data, and furthermore, we conduct two experiments: the DOG generation and ontology graph-based text classification, with Chinese texts as the experimental data. The first experiment generates ten DOGs as the ontology graph instances to represent ten different domains of knowledge. The generated DOGs are then further used for the second experiment to provide performance evaluation. The ontology graph-based approach is able to achieve high text classification accuracy (with 92.3% in f-measure) over other text classification approaches (such as 86.8% in f-measure for tf-idf approach). The better performance in the comparative experiments reveals that the proposed ontology graph knowledge model, the ontology learning and generation process, and the ontological operations are feasible and effective.
机译:本文提出了一种本体学习方法,用于生成称为本体图的图形本体结构。本体图定义了本体和知识概念化模型,本体学习过程定义了半自动学习的方法,并根据不同领域的中文文本生成本体图,即所谓的领域本体图(DOG)。同时,我们还定义了另外两个本体操作:文档本体图生成和基于本体图的文本分类,可以使用生成的DOG来执行。这项研究的重点是中文文本数据,此外,我们进行了两个实验:DOG生成和基于本体图的文本分类,并以中文文本作为实验数据。第一个实验生成十个DOG作为本体图实例,以表示十个不同的知识领域。然后将生成的DOG进一步用于第二个实验,以提供性能评估。与其他文本分类方法(例如,tf-idf方法的f-measure的86.8%)相比,基于本体图的方法能够实现较高的文本分类精度(f-measure的92.3%)。比较实验中较好的性能表明,提出的本体图知识模型,本体学习与生成过程以及本体操作是可行和有效的。

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