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Popular repositories

  1. Email-Spam-Detector-DecTreeClass Email-Spam-Detector-DecTreeClass Public

    Using a decision tree classification model to identify spam emails based on the specific occurrence of certain features and patterns within the email text. The dataset contains over 54 feature vari…

    Jupyter Notebook 3

  2. museEEG museEEG Public

    A repository of cool programs that utilize the 2016 muse eeg headband. Python based.

    Python 2 1

  3. Predicting-Customer-Purchase-LogisticReg Predicting-Customer-Purchase-LogisticReg Public

    Using Logistic regression to determine which consumer demographics to target and their likelihood of purchasing a product based on viewing a social media ad. Achieved an accuracy score of above 92%!

    Jupyter Notebook 1 1

  4. Diagnosing-Urinary-Diseases-NaiveBYS Diagnosing-Urinary-Diseases-NaiveBYS Public

    Using a Gaussian Naive Bayes model to diagnose acute urinary inflammation and acute nephritises. Achieved a level of 90% and 95% diagnosing separately and nearly 100% with diagnosing together.

    Jupyter Notebook 1

  5. Predicting-Online-Purchase-RanForestClass Predicting-Online-Purchase-RanForestClass Public

    Using a random forest classifier to identify whether customers purchase something online based on user activity and clickstream data. The dataset contains over 12000 users and the model accomplishe…

    Jupyter Notebook 1

  6. Facebook-Engaged-User-Prediction-MLR Facebook-Engaged-User-Prediction-MLR Public

    A multiple linear model predicting lifetime engaged users on a cosmetic company's Facebook page. Data extracted from post metrics from over 500 posts in 2014. Achieved an accuracy of nearly 80%!

    Jupyter Notebook