“14-10-19 Dongxu Zhang”版本间的差异

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Accomplished this week
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=== Accomplished this week ===
 
=== Accomplished this week ===
* 1. Train LSTM-Rnn LM with 200MB corpus(vocabulary 10k, classes 100). when using 2 kernels, it takes aroung 200min per epoch.
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* Train LSTM-Rnn LM with 200MB corpus(vocabulary 10k, classes 100). when using 2 kernels, it takes aroung 200min per epoch.
* 2. Train 5-gram LM using Baiduzhidao_corpus(~30GB after preprocess) with new lexicon. There is a mistake when counted possiblity after merge.
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* Train 5-gram LM using Baiduzhidao_corpus(~30GB after preprocess) with new lexicon. There is a mistake when counted possiblity after merge.
* 3. An idea occured to me which may improve word2vec with much more semantic information. But there is huge computation complexity problem that bothers me, which I wish we can discuss.
+
* An idea occured to me which may improve word2vec with much more semantic information. But there is huge computation complexity problem that bothers me, which I wish we can discuss.
* 4. Read paper "Learning Long-Term Dependencies with Gradient Descent is Difficult". Still in progress.
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* Read paper "Learning Long-Term Dependencies with Gradient Descent is Difficult". Still in progress.
  
 
=== Next week ===
 
=== Next week ===

2014年10月19日 (日) 12:43的版本

Accomplished this week

  • Train LSTM-Rnn LM with 200MB corpus(vocabulary 10k, classes 100). when using 2 kernels, it takes aroung 200min per epoch.
  • Train 5-gram LM using Baiduzhidao_corpus(~30GB after preprocess) with new lexicon. There is a mistake when counted possiblity after merge.
  • An idea occured to me which may improve word2vec with much more semantic information. But there is huge computation complexity problem that bothers me, which I wish we can discuss.
  • Read paper "Learning Long-Term Dependencies with Gradient Descent is Difficult". Still in progress.

Next week

  • 1. Test LSTM-Rnn LM.
  • 2. Finished building lexion.
  • 3. Understand the paper.
  • 4. May have time to achieve my baseline idea on text8.