datagirlz19/Diaster-Tweets-Classifier
Twitter can be as both a resource for finding urgent information and as a tool for communicating useless information about sales and petty gossip.
This helps emergency responders, humanitarian organizations, or news desks quickly identify genuinely urgent information from Twitter during a crisis. It takes raw Twitter feeds and determines which tweets are actual reports of natural disasters versus irrelevant chatter. The output is a filtered stream of crisis-relevant tweets, useful for those who need to monitor real-time events and respond efficiently.
No commits in the last 6 months.
Use this if you need to quickly filter large volumes of tweets to find authentic, real-time reports about natural disasters and emergencies.
Not ideal if your primary goal is sentiment analysis, trend tracking for non-disaster topics, or general social media monitoring.
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Last pushed
Jun 30, 2022
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