Data-Science-Community-SRM/Forecasting-US-Elections
Extraction of tweets and Perform sentiment analysis on the presidential candidature of Donald Trump, Joe Biden and Kanye West in the upcoming elections in US in November, 2020.
Combines Twitter API and GetOldTweets library to overcome temporal extraction limits, then applies NLTK-based preprocessing (regex-based emoji/URL/username removal, tokenization, stemming) and VADER sentiment analysis to classify tweets into positive/negative/neutral categories. Results include geospatial visualizations mapping sentiment by location and time-series analysis tracking hourly/daily tweet volume and source platform distribution.
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Nov 04, 2020
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