lecture_notes
Differences
This shows you the differences between two versions of the page.
Both sides previous revisionPrevious revisionNext revision | Previous revision | ||
lecture_notes [2012/09/04 16:45] – hj | lecture_notes [2012/11/19 16:00] (current) – hj | ||
---|---|---|---|
Line 1: | Line 1: | ||
- | + | ||
* {{: | * {{: | ||
- | * Week 2: Math foundation: probabilities; | + | * {{: |
- | * Week 3: Bayesian decision theory; Discriminative Models: Linear discriminant functions, support vector machine (SVM); (Weekly Reading: [[http:// | + | * {{: |
- | * Week 4: Generative Models; model estimation; maximum likelihood, EM algorithm; multivariate Gaussian, Gaussian mixture model, Multinomial, | + | * {{: |
- | * Week 5: Discriminative Learning; Bayesian Learning; Pattern Verification | + | * {{: |
- | * Week 6: Hidden Markov Model (HMM): HMM vs. Markov chains; HMM concepts; Three algorithms (forward-backward, | + | * {{: |
- | * Week 8: Automatic Speech Recognition (ASR) (I): ASR introduction; | + | * {{: |
- | * Week 9: Automatic Speech Recognition (ASR) (II): Language Modelling (LM); N-gram models: smoothing, learning, perplexity, class-based. | + | * {{: |
- | * Week 10: Automatic Speech Recognition (ASR) (III): Search - why search; Search space in n-gram LM; Viterbi decoding in a large HMM; beam search; tree-based lexicon; dynamic decoding; static decoding; weighted finite state transducer (WFST) | + | * {{: |
lecture_notes.1346777126.txt.gz · Last modified: 2012/09/04 16:45 by hj