aditeyabaral/lok-sabha-election-twitter-analysis

Twitter Feeds were analysed during the Lok Sabha Elections 2019 to guage the overall popularities of each party and predict the winner based solely on the tweets made by the population. This was made as a part of our Data Science course (UE18CS203) at PES University.

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This project analyzes Twitter feeds to gauge political party popularity and predict election outcomes. It takes in public tweets related to an election and outputs insights into sentiment, mood, and perceived popularity of political parties. Political strategists, campaign managers, or social scientists studying public opinion would find this useful.

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Use this if you need to quickly understand public sentiment and potential election results based on social media conversations.

Not ideal if you require real-time analysis or detailed demographic breakdowns of public opinion beyond what's inferable from Twitter data.

political-campaigns election-forecasting public-opinion social-listening sentiment-analysis
No License Stale 6m No Package No Dependents
Maintenance 0 / 25
Adoption 5 / 25
Maturity 8 / 25
Community 8 / 25

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Last pushed

Dec 16, 2019

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