priyansh19 / Suggestion_Mining_Using_Twitter_Data
Sentiment Analysis is the automated process of analyzing text data and sorting it into sentiments positive, negative or neutral. With more than 321 million active users, sending a daily average of 500 million Tweets, Twitter allows businesses to reach a broad audience and connect with customers without intermediaries.
☆9Updated 4 years ago
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