
Microblog, an online-based broadcast medium, is a widely used forum for people to share their thoughts and opinions. Recently, Emotion Recognition (ER) from microblogs is an inspiring research topic in diverse areas. In the machine learning domain, automatic emotion recognition from microblogs is a challenging task, especially, for better outcomes considering diverse content. Emoticon becomes very common in the text of microblogs as it reinforces the meaning of content. This study proposes an emotion recognition scheme considering both the texts and emoticons from microblog data. Emoticons are considered unique expressions of the users' emotions and can be changed by the proper emotional words. The succession of emoticons appearing in the microblog data is preserved and a 1D Convolutional Neural Network (CNN) is employed for emotion classification. The experimental result shows that the proposed emotion recognition scheme outperforms the other existing methods while tested on Twitter data.
9 pages, 3 figures, 5 tables, journal paper
FOS: Computer and information sciences, Computer Science - Machine Learning, Artificial intelligence, Natural language processing, Social Sciences, Experimental and Cognitive Psychology, Pattern recognition (psychology), Computer science, Machine Learning (cs.LG), FOS: Psychology, Social media, World Wide Web, Sentiment Analysis and Opinion Mining, Artificial Intelligence, Emotion Recognition, Computer Science, Physical Sciences, Multi-label Text Classification in Machine Learning, Microblogging, Psychology, Information retrieval, Emotion Recognition and Analysis in Multimodal Data
FOS: Computer and information sciences, Computer Science - Machine Learning, Artificial intelligence, Natural language processing, Social Sciences, Experimental and Cognitive Psychology, Pattern recognition (psychology), Computer science, Machine Learning (cs.LG), FOS: Psychology, Social media, World Wide Web, Sentiment Analysis and Opinion Mining, Artificial Intelligence, Emotion Recognition, Computer Science, Physical Sciences, Multi-label Text Classification in Machine Learning, Microblogging, Psychology, Information retrieval, Emotion Recognition and Analysis in Multimodal Data
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