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Unsupervised Sentiment-Bearing Feature Selection for Document-Level Sentiment Classification
2013
IEICE transactions on information and systems
Text sentiment classification aims to automatically classify subjective documents into different sentiment-oriented categories (e.g. positive/negative). Given the high dimensionality of features describing documents, how to effectively select the most useful ones, referred to as sentiment-bearing features, with a lack of sentiment class labels is crucial for improving the classification performance. This paper proposes an unsupervised sentiment-bearing feature selection method (USFS), which
doi:10.1587/transinf.e96.d.2805
fatcat:reiopvmiw5hoxhbgeg7waaa6zi