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by Andreas (Andrzej) Wichert |
1. Introduction
2. Probability theory & Information
3. Linear Algebra & Optimization
4. Linear Regression & Bayesian Linear Regression
5. Perceptron & Logistic Regression
6. Learning theory, Bias-Variance
8. k Nearest Neighbour & Locally Weighted Regression
10. Deep Learning
11. Convolutional Neural Networks
13. Autoencoders
16. PCA, ICA
17. Decision Trees
18. Ensemble Methods
23. Applications
24. Conclusion