hossshakiba/TweetFeel
A project for sentiment and data analysis on tweets related to Covid-19.
This project helps public health officials, policy makers, or researchers understand public opinion and emotional responses to COVID-19 by analyzing social media conversations. It takes raw tweets related to the pandemic and categorizes them as positive, neutral, or negative. The output provides insights into overall sentiment, common themes, frequently discussed countries, and influential accounts.
No commits in the last 6 months.
Use this if you need to quickly gauge public sentiment about a health crisis or specific event by analyzing large volumes of social media data.
Not ideal if you need real-time sentiment analysis for breaking news or if your target social media platform is not Twitter.
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Last pushed
Feb 15, 2023
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