MACHINE LEARNING FOR DATA SCIENCE I
Obiettivi formativi
Content (Syllabus outline): Linear models. Linear regression. Linear discriminant analysis. Logistic regression. Gradient descent. Stochastic gradient descent. The machine learning approach. Cost functions. Empirical risk minimization. Maximum likelihood estimation. Model evaluation. Cross-validation. Feature selection. Search-based feature selection. Regularization. Tree-based models. Decision trees. Random forest. Bagging. Gradient tree boosting. Clustering. k-means. Expectation Maximization. Non-linear regression. Basis functions. Splines. Support vector machines. Kernel trick. Neural networks. Perceptron. Activation functions. Backpropagation.
Canale 1
Blaž Zupan
Scheda docente
- Codice insegnamento10610041
- Anno accademico2025/2026
- CorsoArtificial Intelligence – Intelligenza Artificiale
- CurriculumCurriculum unico
- Anno1º anno
- Semestre2º semestre
- SSDING-INF/05
- CFU6