应用RDF本体改进文本分类

Wang Xiaoyue, Bai Rujiang
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引用次数: 6

摘要

目前的分类方法是基于“词袋”(BOW)表示,它只考虑了词在文档中的频率,而忽略了关键词之间的重要语义关系。在本文中,我们提出了一个使用本体和自然语言处理技术来索引文本的系统。传统的BOW矩阵被“概念袋”(BOC)所取代。为此,我们开发了将关键字映射到相应本体概念的全自动方法。支持向量机是一种成功的机器学习技术。实验结果表明,该方法显著提高了文本分类性能
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Applying RDF Ontologies to Improve Text Classification
Current classification methods are based on the “Bag of Words” (BOW) representation, which only accounts for term frequency in the documents, and ignores important semantic relationships between key terms. In this paper, we proposed a system that uses ontologies and Natural Language Processing techniques to index texts. Traditional BOW matrix is replaced by “Bag of Concepts” (BOC). For this purpose, we developed fully automated methods for mapping keywords to their corresponding ontology concepts. Support Vector Machine a successful machine learning technique is used for classification. Experimental results shows that our proposed method dose improve text classification performance significantly
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