Sentiment Analysis of Digital India using Lexicon Approach

The sentiment analysis technique is come into view as a very useful medium to scrutinize the reviews and opinion of peoples. In current modern era peoples are showing their reviews with the help of social media. Digital India is most current topic for the discussion in India. It is novel idea and feasible solution of our daily routine in this rapid economic growth. The Indian Prime Minister has taken some feasible steps for Digital India. It is required to know the view and opinion of people on this Digital India scheme. In this paper, we propose a framework for analyzing the sentiments of peoples of Global India. Data is collected from the YouTube, select various videos and extract the comments that are given on those videos to analyze the sentiments. We select Lexicon approach to implement sentiment analysis with a help of The R language. This technique works on the basis of presumption of total polarity. Just instruct the Lexis with the help of group and collection of words. We also present Word Cloud of user comments.

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