wmoc / ml_uwr

Materials for my Machine Learning course at University of Wroclaw

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

ml_uwr

Materials for my Machine Learning course taught at the University of Wroclaw.

Learning materials

Topic Learning materials
Lecture 1 Introduction to ML slides, Murphy Ch. 1
Lecture 2 Prob. review slides notebook 1 2, Murphy Ch. 2
Lecture 3 Decision Trees TUM course CS229, Murphy Ch. 16
Lecture 4 Random Forests Breiman paper Breiman's tutorial, Murphy Ch. 5 & 16
Lecture 5 Adaboost notebook notebook Murphy Ch. 16 xgboost slides
Lecture 6 Linear and Logistic Regression notebook 1 2 CS229
Lecture 7 More on Regression, Regularization, Lasso notes notebook
Lecture 8 Discrimantive vs Generative classifiers notebook naive bayes cs229 notes Murphy Ch. 4
Lecture 9 SVM #1 cs229 notes tutorial
Lecture 10 SVM #2, Review of Sup. Learning slides
Lecture 11 kMeans notebook CS229 kMeans CS229 EM1 CS229 EM2
Lecture 12 PCA notebook CS229
Lecture 13 ICA + NMF notebook ICA notebook NMF CS229
Lecture 14 Intro to PGMs and HMMs Bishop Ch. 8 & 13
Lecture 15 Company presentations

About

Materials for my Machine Learning course at University of Wroclaw


Languages

Language:Jupyter Notebook 100.0%