lecture_notes
This is an old revision of the document!
- Week 2 (updated): Math foundation: probabilities; Bayes theorem; statistics; Entropy; mutual information; decision tree; optimization (Weekly Reading: W2) (A useful online manual on Matrix Calculus)
- Week 5: Discriminative Learning; Bayesian Learning; Pattern Verification
- Week 6: Hidden Markov Model (HMM): HMM vs. Markov chains; HMM concepts; Three algorithms (forward-backward, Viterbi decoding, Baum-Welch learning) (Weekly Reading: W6)
- Week 8: Automatic Speech Recognition (ASR) (I): ASR introduction; ASR as an example of pattern classification; Acoustic modeling: parameter tying (decision tree based state tying);
lecture_notes.1330567045.txt.gz · Last modified: 2012/03/01 01:57 by hj