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A Novel Deep Learning-based Sentiment Analysis Method Enhanced with Emojis in Microblog Social Networks

Xianyong Li, Jiabo Zhang, Yajun Du, Jian Zhu, Yongquan Fan, Xiaoliang Chen

2022Enterprise Information Systems57 citationsDOI

Abstract

To exactly classify sentiments of microblog reviews with emojis in microblog social networks, this paper first proposes an emoji vectorisation method to achieve emoji vectors. Then, an emoji-text integrated bidirectional LSTM (ET-BiLSTM) model for sentiment analysis is proposed. In this model, review text-based sentence representations are extracted by a bidirectional LSTM network. Emoji-based auxiliary representations are obtained by a new attention mechanism. The two representations are further integrated into final review representation vectors. Finally, experimental results indicate that the proposed ET-BiLSTM model improves the performance of sentiment classification evaluated by macro-P, macro-R and macro-F1 scores in microblog social networks.

Topics & Concepts

EmojiMicrobloggingSocial mediaMacroComputer scienceSentiment analysisArtificial intelligenceNatural language processingSentenceRepresentation (politics)Social network (sociolinguistics)Machine learningWorld Wide WebPoliticsLawProgramming languagePolitical scienceSentiment Analysis and Opinion MiningSpam and Phishing DetectionComplex Network Analysis Techniques
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