Methodogies In Sentiment Analysis

Sentiment analysis uses data mining processes and techniques to extract and capture data for analysis in collection of documents, like blog posts, reviews, news articles and social media feeds like tweets and status updates. It has been gained order to distinguish the subjective opinion of a document or quite popularity in the recent years. Several techniques have been utilized frequently including machine learning approaches and vocabulary oriented semantic algorithms. This article presents an intellectual study of various techniques which are used in the sentiment analysis process.

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