e-ISSN : 0975-4024 p-ISSN : 2319-8613   
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ABSTRACT

ISSN: 0975-4024

Title : Twitter Sentiment Analysis of Movie Reviews using Machine Learning Techniques.
Authors : Akshay Amolik, Niketan Jivane, Mahavir Bhandari, Dr.M.Venkatesan
Keywords : Feature Vector, Machine Learning, Twitter, Sentiment analysis, Unigram.
Issue Date : Dec 2015-Jan 2016
Abstract :
Sentiment analysis is basically concerned with analysis of emotions and opinions from text. We can refer sentiment analysis as opinion mining. Sentiment analysis finds and justifies the sentiment of the person with respect to a given source of content. Social media contain huge amount of the sentiment data in the form of tweets, blogs, and updates on the status, posts, etc. Sentiment analysis of this largely generated data is very useful to express the opinion of the mass. Twitter sentiment analysis is tricky as compared to broad sentiment analysis because of the slang words and misspellings and repeated characters. We know that the maximum length of each tweet in Twitter is 140 characters. So it is very important to identify correct sentiment of each word. In our project we are proposing a highly accurate model of sentiment analysis of tweets with respect to latest reviews of upcoming Bollywood or Hollywood movies. With the help of feature vector and classifiers such as Support vector machine and Naïve Bayes, we are correctly classifying these tweets as positive, negative and neutral to give sentiment of each tweet.
Page(s) : 2038-2044
ISSN : 0975-4024
Source : Vol. 7, No.6