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Lecture 1: Introduction to Machine Learning
01:15:20
Lecture 1: Introduction to Machine Learning
01:15:20
Lecture 2: Linear Regression and Gradient Descent
01:15:20
Lecture 3: Locally Weighted Logistic Regression
01:15:20
Lecture 4: Perceptron and Generalized Linear Models
01:15:20
Lecture 5: Gaussian Discriminant Analysis and Naive Bayes
01:15:20
Lecture 6: Support Vector Machines
01:15:20
Lecture 7: Kernels
01:15:20
Lecture 8: Data Splits, Models, and Cross-Validation
01:15:20
Lecture 9: Approximation of Estimation Error and Empirical Risk Minimization
01:15:20
Lecture 10: Decision Trees and Ensemble Methods
01:15:20
Lecture 11: Introduction to Neural Networks
01:15:20
Lecture 12: Backpropagation and Improving Neural Networks
01:15:20
Lecture 13: Debugging Machine Learning Models and Error Analysis
01:15:20
Lecture 14: Expectation Maximization Algorithms
01:15:20
Lecture 15: EM Algorithm and Factor Analysis
01:15:20
Lecture 16: Independent Component Analysis and Reinforcement Learning
01:15:20
Lecture 17: Markov Decision Processes, Value Iteration, and Policy Iteration
01:15:20
Lecture 18: Continuous State MDP Model Simulation
01:15:20
Lecture 19: Reward Models and Linear Dynamical Systems
01:15:20
Lecture 20: Debugging and Diagnostics in Reinforcement Learning
01:15:20
Final Exam - Machine Learning: Stanford CS229 Autumn 2018
Machine Learning: Stanford CS229 Autumn 2018
Learn about reward models and their integration with linear dynamical systems.
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