1. Start Here/1. Introduction and Outline.mp446.92MB
1. Start Here/2. How to Succeed in this Course.mp46.41MB
1. Start Here/3. Review of the classification problem.mp42.97MB
1. Start Here/4. Introduction to the E-Commerce Course Project.mp414.79MB
2. Basics What is linear classification What's the relation to neural networks/1. Linear Classification.mp47.55MB
2. Basics What is linear classification What's the relation to neural networks/2. Biological inspiration - the neuron.mp49.39MB
2. Basics What is linear classification What's the relation to neural networks/3. How do we calculate the output of a neuron logistic classifier - Theory.mp415.22MB
2. Basics What is linear classification What's the relation to neural networks/4. How do we calculate the output of a neuron logistic classifier - Code.mp45.82MB
2. Basics What is linear classification What's the relation to neural networks/5. Interpretation of Logistic Regression Output.mp427.89MB
2. Basics What is linear classification What's the relation to neural networks/6. E-Commerce Course Project Pre-Processing the Data.mp411.17MB
2. Basics What is linear classification What's the relation to neural networks/7. E-Commerce Course Project Making Predictions.mp45.7MB
2. Basics What is linear classification What's the relation to neural networks/8. Feedforward Quiz.mp42.27MB
2. Basics What is linear classification What's the relation to neural networks/9. Prediction Section Summary.mp42.22MB
3. Solving for the optimal weights/1. Training Section Introduction.mp42.81MB
3. Solving for the optimal weights/10. E-Commerce Course Project Training the Logistic Model.mp417.06MB
3. Solving for the optimal weights/11. Training Section Summary.mp43.39MB
3. Solving for the optimal weights/2. A closed-form solution to the Bayes classifier.mp49.11MB
3. Solving for the optimal weights/3. What do all these symbols mean X, Y, N, D, L, J, P(Y=1X), etc..mp46.37MB
3. Solving for the optimal weights/4. The cross-entropy error function - Theory.mp44.5MB
3. Solving for the optimal weights/5. The cross-entropy error function - Code.mp49.1MB
3. Solving for the optimal weights/6. Visualizing the linear discriminant Bayes classifier Gaussian clouds.mp45.27MB
3. Solving for the optimal weights/7. Maximizing the likelihood.mp425.22MB
3. Solving for the optimal weights/8. Updating the weights using gradient descent - Theory.mp49.35MB
3. Solving for the optimal weights/9. Updating the weights using gradient descent - Code.mp47.26MB