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AN IN-DEPTH STUDY OF THE SENTIMENT OF IMDB (INTERNET MOVIE DATABASE) MOVIE AND RATINGS

Kanishka Kashyap

26-32

Vol 14, Jul-Dec, 2021

Date of Submission: 2021-07-13 Date of Acceptance: 2021-08-02 Date of Publication: 2021-08-23

Abstract

An area of artificial intelligence known as sentiment analysis focuses on interpreting data to convey human feelings and opinions. This paper focuses on the IMDB movie review sentiment analysis, and Stanford University provided the dataset. We analyse how the viewer articulates their positive or negative opinion. Because, at this time, we don't have an accurate system that can frame the structures in the study of random slang movies, the N-gram method was used. Along with that, we make a selection of standard features and use them for training multiple-label classifiers to tag reviews of movies accurately and further, choosing the most suitable classifier for our domain query by various categories approach comparison. Our process, which makes use of separation techniques, is 83% accurate.

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