north0n-FI / Twitter-moods-as-stock-price-predictors-on-Nasdaq
An attempt to predict next day's stock price movements using sentiments in tweets with cashtags. Six different ML algorithms were deployed (LogReg, KNN, SVM etc.). Main libraries used: Pandas & Numpy
☆23Updated 5 years ago
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