martinpella/twitter-airlines
Sentiment Analysis on tweets from US airlines customers
This helps customer service managers or market researchers understand public sentiment towards major US airlines. It takes raw tweets from airline customers and categorizes them by sentiment (positive, negative, neutral), providing a quick overview of how customers feel. This is perfect for anyone monitoring brand reputation or customer feedback for airlines.
No commits in the last 6 months.
Use this if you need to quickly gauge customer sentiment from Twitter data specifically for major US airlines.
Not ideal if you need to analyze sentiment for businesses other than US airlines or require highly nuanced emotional analysis beyond basic positive/negative/neutral.
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Last pushed
Apr 09, 2018
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