Review Paper On Sentiment Analysis Technique By Different Machine Learning Approach
DOI:
https://doi.org/10.26438/ijcse/v7i11.125129Keywords:
Introduction, Sentiment analysis techniques, Literature review, Comparative analysis, ConclusionAbstract
The growing popularity of social media, E-commerce, blogs and any social field created a new platform where anyone can discuss and exchange his/her views, ideas , suggestions and experiences about any product or services in market. This state of affairs open a new area of research called Opinion Mining and Sentiment Analysis. Opinion Mining and Sentiment Analysis is an extension of Data Mining that extracts and analyzes the unstructured data automatically. In this review paper our aim is to present the details study over Opinion Mining and Sentiment Analysis, its different techniques , methods etc.
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