SENTIMENT ANALYSIS OF SARCASTIC SENTENCES OF TWITTER DATA
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Abstract
Sentiment analysis is a method to determine the ones opinion, sentiment over any product, organizations andevents in order to identify what a person really want to say about that particular thing. Sarcasm is a different form of communication which expresses any ones anger, joy or neutral response over any social event, product feature or organization. Sarcasm is very tough to identify because its literal meaning is totally different from its intended meaning.
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