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A COMPREHENSIVE REVIEW OF MACHINE LEARNING TOOLS AND TECHNIQUES RELATING TO CUSTOMER PRODUCTS

Ruchika Chakravarti

108-116

Vol 7, Jan-Jun, 2018

Date of Submission: 2018-04-10 Date of Acceptance: 2018-05-16 Date of Publication: 2018-05-24

Abstract

Sentiment analysis is defined as the process of mining of data, view, review or sentence to Predict the emotion of the sentence through natural language processing (NLP) or Machine Learning Techniques. The significance of feeling analysis or review mining is growing daily as information develops. Machines should be dependable and productive in solving and figuring out human emotions and sentiments. Since clients offer their viewpoints and sentiments more transparently than any time in recent memory, feeling investigation is turning into a fundamental instrument to screen and figure out Sentiment. [2] Focuses on audit mining and opinion examination on the Amazon site.

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