The accurate classification of subjective and objective sentences is important in the preparation for micro-blog sentiment analysis. Since a single feature type cannot provide enough subjective information for classification, we propose a Support vector machine (SVM)-based classification model for Chinese micro-blogs using multiple features. We extracted the subjective features from the Part of speech (POS) and the dependency relationship between words, and constructed a 3-POS subjective pattern set and a dependency template set. We fused these two types of features and used an SVM-based model to classify Chinese micro-blog text. The experimental results showed that the performance of the classification model improved remarkably when using multiple features.
CITATION STYLE
Zhang, Y., Zhang, Y., Jiang, Y., & Huang, G. (2017). Multi-feature-based subjective-sentence classification method for Chinese micro-blogs. Chinese Journal of Electronics, 26(6), 1111–1117. https://doi.org/10.1049/cje.2017.09.006
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