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Applying Machine Learning Algorithms using R, Python, and RapidMiner

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Machine-Learning

Applying Machine Learning Algorithms using R, Python, and RapidMiner.

Project: Click_Through_Competition

This project involves predicting clicks for on-line advertisements. The training data consists of data for 9 days from October 21, 2014 to October 29, 2014. The criterion used to evaluate the performance is log-loss. We used lasso regression, K-nearest Neighbor Classification, Decision Tree Classification and ensemble method to predict the probability of clicks. Contributors: Lancy Mao, Athena Li (Teammate)

Project: Spam_Filtering

This project involves predicting spam emails. There are two parts: 1: used feature selection, naive bayes model, logistic regression, random forest model, and ensemble method; 2: used regularized models with penalties--lasso and ridge regression. Contributors: Lancy Mao, Athena Li (Teammate), George Easton (Professor)

Project: Kindle_Books_Sales_Ranking

This project involves predicting sales ranking of ebooks on Kindle based on their features. Contributors: Lancy Mao, Athena Li (Teammate)

Exercise: Breast_Cancer_Prediction

This exercise involves predicting breast cancer. Performed a predictive modeling analysis on this same dataset using the decision tree, the k-NN technique and the logistic regression technique. Contributors: Lancy Mao, Vilma Todri (Professor)

Exercise: Customer_Spending_Prediction

This exercise involves predicting customer spending. Used Rapidminer to build numeric prediction models that predict Spending based on the other available customer information. Used linear regression, k-NN, and regression tree techniques. Contributors: Lancy Mao, Vilma Todri (Professor)