Sinovoice-2014-12-10
来自cslt Wiki
DNN training
Environment setting
- Another 3 3T disks are ready for RADI-0.
- Another GPU machine was purchased.
Corpora
- Scripts for confidence generation is ready for auto transcription
- 300h telephone speech data (Sinovoice recording) were done
- Adaptation data ready
470 hour 8k training
- 300h incremental training (IT) done
Model |
CE |
MPE1 |
MPE2 |
MPE3 |
MPE4
|
4k states |
23.27/22.85 |
21.35/18.87 |
21.18/18.76 |
21.07/18.54 |
20.93/18.32
|
8k states |
22.16/22.22 |
20.55/18.03 |
20.36/17.94 |
20.32/17.78 |
20.29/17.80
|
8k states + IT |
- |
20.04/17.38 |
20.01/17.32 |
20.07/17.44 |
19.94/17.65
|
6000 hour 16k training
- Ran CE DNN to iteration 5 (8400 states, 80000 pdf)
- Testing results go down to 13% WER.
Model |
WER |
RT
|
small LM, it 4, -5/-9 |
15.80 |
-
|
large LM, it 4, -5/-9 |
15.30 |
-
|
large LM, it 4, -6/-9 |
15.36 |
-
|
large LM, it 4, -7/-9 |
15.25 |
-
|
large LM, it 5, -5/-9 |
14.17 |
-
|
large LM, it 5, -5/-10 |
13.77 |
-
|
Adaptation
DNN Decoder
- Comparison between CLG and HCLG decoder
-