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Projects from UTDallas STAT6340

Experiment 1 - Visualization of KNN decision boundary for small data set.

Experiment 2 - KNN applied to the cifar data set.

Experiment 1 - Multiple linear regression and model variable selection applied to wine data set.

Experiment 2 - Comparison of LDA and QDA methods applied to admission data. Visualization of decision boundaries.

Experiment 3 - Classification probability cutoff selection via ROC curve and score of LDA and QDA, applied to diabetes data set.

Experiment 1 - Logistic Regression and model variable selection applied to diabetes data set.

Experiment 2 - Logistic Regression, LDA, QDA and KNN comparison via LOOCV estimated error.

Experiment 3 - Bootstrap parameter estimation for agreement of methods measuring oxygen saturation levels.

Experiment 1 - Best-Subset, Forward and Backward stepwise selection, Ridge Regression and LASSO applied to the wine data set.

Experiment 2 - Best-Subset, Forward and Backward stepwise selection, Ridge Regression and LASSO applied to the diabetes data set.

Note: Best parameters for Ridge Regression and LASSO obtained via LOOCV on 1 and 10-fold CV on 2, number of predictors selected obtained via best adjusted R^2 on 1 and AIC on 2.

Experiment 1 - Principal Components Analysis of the Hitters data set.

Experiment 2 - Cluster Analysis via Complete Linkage and Kmeans of Hitters.

Experiment 3 - Linear Regression, PCR and PLS to predict the log(salary) of Hitters. Comparison via LOOCV estimated error.

Experiment 1 - Comparison of DT, Bagging, Random Forest and Boosting applied to the Hitters data set.

Experiment 2 - Comparison of SVC and SVM with radial and polynomial kernel.

Experiment 1 - Comparison of different number of layers and sizes, including L2 regularization and dropout for the MNIST data set.

Experiment 2 - Comparison of different number of layers and sizes, including L2 regularization and dropout for the Boston Housing Price data set.