An Ontology-Based Sentiment Classification Methodology for Online Consumer Reviews

J. Polpinij, A. Ghose
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引用次数: 63

Abstract

This paper presents a method of ontology-based sentiment classification to classify and analyse online product reviews of consumers. We implement and experiment with a support vector machines text classification approach based on a lexical variable ontology. After testing, it could be demonstrated that the proposed method can provide more effectiveness for sentiment classification based on text content.
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基于本体的在线消费者评论情感分类方法
提出了一种基于本体的情感分类方法,对消费者的在线产品评论进行分类和分析。我们实现并实验了一种基于词法变量本体的支持向量机文本分类方法。经过测试,该方法可以为基于文本内容的情感分类提供更有效的方法。
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