KNN classifier based approach for multi-class sentiment analysis of twitter data

  title={KNN classifier based approach for multi-class sentiment analysis of twitter data},
  author={Soudamini Hota and S Pathak},
  journal={International Journal of Engineering \& Technology},
  • Soudamini Hota, S. Pathak
  • Published 18 October 2017
  • Computer Science
  • International Journal of Engineering & Technology
‘Sentiment’ literally means ‘Emotions’. Sentiment analysis, synonymous to opinion mining, is a type of data mining that refers to the analy-sis of data obtained from microblogging sites, social media updates, online news reports, user reviews etc., in order to study the sentiments of the people towards an event, organization, product, brand, person etc. In this work, sentiment classification is done into multiple classes. The proposed methodology based on KNN classification algorithm shows an… 
Sentiment analysis, also called the Opinion Mining is a type of Natural Language Processing (NLP) in which the people’s opinions, sentiments, emotions, attitudes etc., are extracted from the text
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