Emoji-Based Sentiment Analysis Using Attention Networks

Author:

Lou Yinxia1,Zhang Yue2ORCID,Li Fei3,Qian Tao4,Ji Donghong1

Affiliation:

1. Wuhan University, China

2. Westlake University, China

3. University of Massachusetts Lowell, USA

4. Hubei University of Science and Technology, China

Abstract

Emojis are frequently used to express moods, emotions, and feelings in social media. There has been much research on emojis and sentiments. However, existing methods mainly face two limitations. First, they treat emojis as binary indicator features and rely on handcrafted features for emoji-based sentiment analysis. Second, they consider the sentiment of emojis and texts separately, not fully exploring the impact of emojis on the sentiment polarity of texts. In this article, we investigate a sentiment analysis model based on bidirectional long short-term memory, and the model has two advantages compared with the existing work. First, it does not need feature engineering. Second, it utilizes the attention approach to model the impact of emojis on text. An evaluation on 10,042 manually labeled Sina Weibo showed that our model achieves much better performance compared with several strong baselines. To facilitate the related research, our corpus will be publicly available at https://github.com/yx100/emoji.

Funder

National Social Science

National Natural Science Foundation

Science and Technology

Natural Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

Reference50 articles.

1. Emojis-Based Sentiment Classification of Arabic Microblogs Using Deep Recurrent Neural Networks

2. Interpretable Emoji Prediction via Label-Wise Attention LSTMs

3. Naomi S. Baron. 2009. The myth of impoverished signal: Dispelling the spoken language fallacy for emoticons in online communication. In Electronic Emotion: The Mediation of Emotion via Information and Communication Technologies. Peter Lang 107–135. Naomi S. Baron. 2009. The myth of impoverished signal: Dispelling the spoken language fallacy for emoticons in online communication. In Electronic Emotion: The Mediation of Emotion via Information and Communication Technologies. Peter Lang 107–135.

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