“2013-05-24”版本间的差异

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|without sticky: WER  || 7.55  ||7.60 ||  7.62 ||  7.66 ||  7.72 ||  7.87 || 9.46 || 53.23
 
|without sticky: WER  || 7.55  ||7.60 ||  7.62 ||  7.66 ||  7.72 ||  7.87 || 9.46 || 53.23
 
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|with    sticky: WER  || 7.55  ||7.57 ||  7.60 ||  7.60 ||  7.63 ||  7.64 || 8.35 ||  
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|with    sticky: WER  || 7.55  ||7.57 ||  7.60 ||  7.60 ||  7.63 ||  7.64 || 8.35 || 9.51 
 
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The conclusion is that with the L2 retrain, the DNN performance is largely called back. Waiting for the results with  extremely sparse networks.
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The conclusion is that with the L2 retrain, the DNN performance is largely called back. The extremely sparse case (th0.3) with sticky training seems quite amazing.
  
 
* fixed-point DNN forwarding
 
* fixed-point DNN forwarding

2013年6月1日 (六) 14:07的版本

Data sharing

  • LM count files still undelivered!

DNN progress

Experiments

  • sparse DNN: sticky training (retrain the nnet while keeping the sparsness)

zero small values(test set: 1900):

threshold 0 0.01 0.03 0.05 0.08 0.1 0.2 0.3
shrinkage% 0.0 4.3 12.7 20.9 32.5 39.5 66.4 81.6
without sticky: WER 7.55 7.60 7.62 7.66 7.72 7.87 9.46 53.23
with sticky: WER 7.55 7.57 7.60 7.60 7.63 7.64 8.35 9.51

The conclusion is that with the L2 retrain, the DNN performance is largely called back. The extremely sparse case (th0.3) with sticky training seems quite amazing.

  • fixed-point DNN forwarding

According to the fixed-point FST and NN, and the results of the sparse NN, we are working on fast NN decoder which is suitable for embedded device. The work is just started.

Tencent exps

本周1000小时实验已结束,实验性能如下:

old baseline new baseline DNN
1900 8.4 6.8 4.3
2044 22.4 15.7 12.7
online1 35.6 32.7 25.8
online2 29.6 27.3 22.1
map 24.5 15.8 13.4
notepad 16 8.1 5.6
general 36 25.1 19.3
speedup 26.8 14 -

接下来计划:

  • 6000小时模型训练,dnn模型相关其他技术(序列化dt,alignment,pretrain)

GPU & CPU merge

  1. on progress.


Kaldi/HTK merge

  • HTK2Kaldi: hold.
  • Kaldi2HTK: hold and second priority

The above work is probably not very necessary since Tencent will fully migrate to the hybrid DNN approach, and therefore HTK will be never used.

Embedded progress

  • Status:
check the reference, and change the compiling options
the large-scale AM training based on the Tencent 400h data is done.
the random output problem is fixed.
Test Set #utt PS default Tencent
cw 993 8.01(RT: 0.07) 7.61(RT: 0.40)
hfc 986 6.69(RT: 0.07) 5.48(RT: 0.40)
zz 984 12.73(RT: 0.07) 5.91(RT: 0.40)


  • To be done
  1. large scale parallel training.
  2. NN based engine(dynamic and static).