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SENTIMENT ANALYSIS: DEVELOPING A MODEL BASED ON TWEET IDENTIFICATION BASED ON SENTIMENT IDENTIFICATION TO ENHANCE ANALYSIS BASED ON WORDS/PHRASES

Karan Sablok

1-13

Vol. 8, Jul-Dec, 2018

Date of Submission: 2018-05-23 Date of Acceptance: 2018-07-01 Date of Publication: 2018-07-06

Abstract

Twitter could be a small blogging web site, wherever users will post messages in terribly short text referred to as Tweets. Tweets contain user opinion associate degreed sentiment towards an object or person. This sentiment data is incredibly helpful in numerous aspects for business and governments. during this paper, we tend to gift a way that performs the task of tweet sentiment identification employing a corpus of pre-annotated tweets. we tend to gift a sentiment grading operate that uses previous data to classify (binary classification) and weight numerous sentiment bearing words/phrases in tweets. victimization this grading operate we tend to succeed classification accuracy of eighty-seven on Stanford Dataset and half of 1 mile on Mejaj dataset. victimization supervised machine learning approach, we tend to succeed classification accuracy of half of 1 mile on Stanford dataset.

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