Multi-class Emotion AI by reconstructing linguistic context of words

  • Authors

    • K Sripath Roy
    • Farhaan Ahmed Shaik
    • K Uday Kiran
    • M Naga Teja
    • Subhani Kurra
    2018-04-18
    https://doi.org/10.14419/ijet.v7i2.20.11763
  • Emotion AI, Machine learning, Sentiment analysis, TF-IDF, Word2vec.
  • In today’s technological world, Social networking websites like Twitter, Instagram, Facebook, Tumblr, etc. play a very significant role. Emotion AI is about dealing, recognizing and analyzing sentiments or opinions conveyed in a person’s text. In particular Emotion is most frequently called Sentiment analysis. It helps us to understand the people’s point of view. A vast amount of sentiment rich data is produced by Social networking websites in the form of posts, tweets, statuses, blogs etc. Some users post reviews of certain products in social media which influences customers to buy the product. Companies can use such review data analyze it and improve the product. Sentiment analysis of Twitter is troublesome correlated to other social networking websites because of the existence of a lot of short words, misspellings and slang words applying emotion analysis to such data is more challenging. We have classified the sentiment into 5 categories. Machine learning strategies are preferred mostly for analyzing emotion AI. We have used neural network model word2vec with TF-IDF approach to predict the sentiment of the tweet.

     

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  • How to Cite

    Sripath Roy, K., Ahmed Shaik, F., Uday Kiran, K., Naga Teja, M., & Kurra, S. (2018). Multi-class Emotion AI by reconstructing linguistic context of words. International Journal of Engineering & Technology, 7(2.20), 97-100. https://doi.org/10.14419/ijet.v7i2.20.11763