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Reinforcement_Learning-Python
Reinforcement_Learning-Python PublicWe use python software and NumPy library to implement the Q-learning method , train an Agent to solve a Reinforcement Learning Problem
Jupyter Notebook
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Neural_Networks
Neural_Networks PublicFit four different neural networks: (a) Two distinct single hidden layer neural networks. (b) Two distinct neural networks with two hidden layers. Compare the accuracy of these four Neural network…
R
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Support_Vector_Machines-vs-Discriminant_Analysis
Support_Vector_Machines-vs-Discriminant_Analysis PublicComparing Classification Methods. We will code some Discriminant Analysis Methods and compare them to Support Vector Machines (SVMs).
R
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Gradient_Boosting-vs-SuperLearner
Gradient_Boosting-vs-SuperLearner PublicImplementing Gradient Boosting & SuperLearner in R and compare the classification accuracy of the two methods.
R 1
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Random_Forest
Random_Forest PublicTuning Random Forests, comparing their classification accuracy to Regression Trees.
R
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LASSO-vs-LeastAngleRegression
LASSO-vs-LeastAngleRegression PublicCode of the least angle regression solution path by hand for an example( p=5). Then we compute the solution path for a dataset and compare it with the LASSO path.
R
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