User Tools

Site Tools


lecture_notes

This is an old revision of the document!


  • Week 4-5: Discriminative Models: Statistical Learning theory; Perceptron; Linear Regression; Minimum Classification Error; Support Vector Machines (SVM); Ridge Regression; LASSO; Compressed Sensing
  • Week 7: Bayesian Decision Rule: MAP decision rule; The Bayes Error; Statistical Data Modelling; Generative vs. Discriminative models
  • Week 8: Generative Models and Parameter Estimation : generative models in general; maximum likelihood estimation; Bayesian Learning; Gaussian, logistic regression, Multinomial, Markov chains, GMM.
  • Week 9: Graphical models: Bayesian Networks vs Markov random fields; Conditional independence; Inference in graphical models; belief propagation; variational inference
lecture_notes.1572882804.txt.gz · Last modified: 2019/11/04 15:53 by hj