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Twitter-moods-as-stock-price-predictors-on-Nasdaq
Twitter-moods-as-stock-price-predictors-on-Nasdaq PublicAn 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
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Analysing-IMDB-reviews-using-GloVe-and-LSTM
Analysing-IMDB-reviews-using-GloVe-and-LSTM PublicUsing the IMDB data found in Keras here a few algorithms built with Keras. The source code is from Francois Chollet's book Deep learning with Python. The aim is to predict whether a review is posit…
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K-means-clustering-on-US-crime-data
K-means-clustering-on-US-crime-data PublicUnsupervised machine learning using U.S. crime data and k-means clustering. Crime categories: murder, assault & rape in all 50 states in 1973.
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Predicting-Nordea-stock-price-using-an-LSTM-neural-network-
Predicting-Nordea-stock-price-using-an-LSTM-neural-network- PublicUsing an 80/20 split in the historical data daily closing prices where predicted using a LSTM network based on data observed in the past 30 days for each prediction
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Multivariate-Regression---King-County-House-Prices
Multivariate-Regression---King-County-House-Prices PublicSupervised Machine Learning Using Regression Analysis
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Predicting-the-Popularity-of-Online-News
Predicting-the-Popularity-of-Online-News PublicBuilding a model which can predict the number of online 'shares' an article will get based on a set of variables attached to it. (Python)
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