“2014-03-28”版本间的差异
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2014年3月28日 (五) 02:13的版本
目录
Resoruce Building
- Current text resource has been re-arranged and listed
Leftover questions
- Asymmetric window: Great improvement on training set(WER 34% to 24%), however the improvement is lost on test. Overfitting?
- Multi GPU training: Error encountered
- Multilanguage training
- Investigating LOUDS FST.
- CLG embedded decoder plus online compiler.
- DNN-GMM co-training
AM development
Sparse DNN
- GA-based block sparsity
- 88% element-sparsity: 25.09
- 80% block-sparsity: 25.5
Noise training
- More experiments with no-noise
- More experiments with additional noise types
AMR compression re-training
- 1700h MPE adaptation
- iter1:
amr: %WER 13.40 [ 6398 / 47753, 252 ins, 829 del, 5317 sub ] wav: %WER 11.19 [ 5343 / 47753, 178 ins, 710 del, 4455 sub ]
- iter2:
amr: %WER 13.31 [ 6358 / 47753, 255 ins, 798 del, 5305 sub ] wav: %WER 11.33 [ 5409 / 47753, 180 ins, 732 del, 4497 sub ]
GFbank
- gfbank on Tentent 100h
Word to Vector
- LDA baseline (sogou 1700*9 training set)
- Memory usage more than 20G
- Word-vector classification on going
- Model based on category wordvector clustering
LM development
NN LM
- Character-based NNLM (6700 chars, 7gram), 500M data training done.
- boundary-involved char NNLM training done
- Investigate MS RNN LM training
Pronunciation scoring
- 8k model delivered
- MLP-based scoring completed
QA
FST-based matching
- Char FST
- Prepare FST-based QA patent
Speech QA
- Class LM QA
- Now find that with smaller weight to the class FST, better performance is obtained
- Now it is very difficult to retrieve the words that can not be found by the original FST
- Test negative weights