Course: Machine Learning
- Simple regression
- Polynomial regression and the influence of noise
- Model selection
- Regularized regression
- L1-regularization and L2-regularization
- Features of different scales
- Multicollinearity
- Linear regression as a classifier
- Multi-class classification
- Logistic regression
- Logistic regression analysis
- Regularized logistic regression
- Logistic regression with mapping function
- Support Vector Machine (SVM) classifier
- Non-linear SVM
- Optimization of SVM hyperparameters
- Impact of feature standardization in SVM
- The k-nearest neighbor algorithm
- Influence of the hyperparameter k
- Non-essential features
- Maximum likelihood estimation
- Maximum posterior probability estimation
- Analysis of the Iris data set
- Probabilistic graphical models -- Bayesian networks
- Explaining effect
- The k-means algorithm
- Gaussian mixture model
- Grouping evaluation
Contributors names and contact info
Author | GitHub | |
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Enio Krizman | @kr1zzo | [email protected] |
Academic title | Lecturer |
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Prof. Dr. Sc. | Jan Šnajder |