SentiT: A Semi Real Time System for Interpreting Sentiment in Twitter

D. Kishore, K. Dheeraj
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Abstract

SentiT is an opinion analysis application for Twitter. Based on the keyword searched, SentiT collects tweets having to do with it , separates and labels them into the different polarity classes neutral, negative and positive , simultaneously we also categorize them into emotions which are anger, disgust, fear, joy, sadness, surprise .Our main objective is to prepare a system that takes real time data from the twitter and come to a conclusion about the opinion on particular product/keyword
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SentiT:一个半实时的Twitter情感解释系统
SentiT是Twitter上的一款观点分析应用程序。根据搜索的关键字,SentiT收集与之相关的推文,将它们分为不同的极性类中性,消极和积极,同时我们也将它们分类为愤怒,厌恶,恐惧,喜悦,悲伤,惊讶。我们的主要目标是准备一个系统,从推特上获取实时数据,并得出关于特定产品/关键字的意见结论
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