“2013-11-15”版本间的差异

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QA LM
第58行: 第58行:
  
 
{| class="wikitable"
 
{| class="wikitable"
!! Data ! lexicon ! size ! size2 ! PPL ! PPL2
+
! Data !! lexicon !! size !! size2 !! PPL !! PPL2
||Q (10G)|15w  |1.5G |800M| 301.64  | 317.19
+
|Q (10G)||15w  ||1.5G ||800M|| 301.64  || 317.19
 
|-
 
|-
||QA(100G):11w |4.5G |1G  | 287.134 | 315.695
+
|QA(100G):11w ||4.5G ||1G  || 287.134 || 315.695
 
|-
 
|-
||QA(100G):8w8 |4.5G |1G  | 559.029 | 626.146
+
|QA(100G):8w8 ||4.5G ||1G  || 559.029 || 626.146
 
|-
 
|-
 
|}
 
|}

2013年11月18日 (一) 06:34的版本

Data sharing

  • LM count files still undelivered!

AM development

Sparse DNN

  • Optimal Brain Damage(OBD).
  1. Basic OBD done, with the ICASSP paper submitted.
  2. Online OBD running
  • Try 3 configurations: batch size=256, 13000 (10 prunings), whole data.
  • The current results show that the the performance follows the order: Acc(whole data) > Acc(256) > Acc(13000).
  • Investigate some in-the-middle update, e.g., update twice for each iteration.


Noisy training

  • Simulated Annealing training.
  • Rejected with small noises.
  • Using just the clean speech, it still rejected. This a bit strange.
  • Noise concentrated training
  • Using pure noise (no silence, narrow SNR band). Most of the results are expected.
  • Need to check the case with car-noise 20/25 db training and white noise 20 db test.
  • Noise-adding modification
  • Need to re-implement the noise-adding. Make it before the fbank computation.

Tencent exps

N/A


LM development

NN LM=

  1. Results show better performance with NN rescoring.
                  2044      map    notetp3   record1900  general  online1  online2 speedup
scal=  0.5	28.69	34.52	20.56	   14.53	 45.52	41.3	34.48	33.53
scal = 0.6	28.3	34.28	20.67	   14.05	 45.34	40.73	33.81	32.71
scal = 0.7	27.84	33.81	20.18	   13.74	 45.13	40.29	33.17	31.86
scal = 0.8	27.58	33.87	19.16	   13.53	 44.92	  40	32.82	31.74
scal = 0.9	27.86	33.92	19.05	   13.41	 44.9	39.65	32.5	31.89
scal = 0.95	27.79	34.07	19.05	   13.56	 44.83	39.76	32.41	31.68
scal = 0.96	27.9	34.1	18.83	   13.53	 44.83	39.79	32.43	31.68
scal = 0.97	27.94	34.15	18.83	   13.47	 44.82	39.78	32.44	31.89
scal = 0.99	28.02	34.2	19	   13.49	 44.86	39.82	32.47	32.01

QA LM

The QA model training done. Test on the Sogou Q text.

Data lexicon size size2 PPL PPL2 Q (10G) 15w 1.5G 800M 301.64 317.19
QA(100G):11w 4.5G 1G 287.134 315.695
QA(100G):8w8 4.5G 1G 559.029 626.146