“NLP Status Report 2016-10-31”版本间的差异

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!Date !! People !! Last Week !! This Week
 
!Date !! People !! Last Week !! This Week
 
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| rowspan="6"|2016/10/24
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| rowspan="6"|2016/10/31
 
|Yang Feng ||
 
|Yang Feng ||
 +
*almost finish the coding of rnng with memory network and can transfer to Shiyue today or tomorrow.
 
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||
 +
*start the work of sequence-to-sequence translation.
 
|-
 
|-
 
|Jiyuan Zhang ||
 
|Jiyuan Zhang ||
 +
*attemped to solve the bug that costs which are calculated by running poetry model weren't exactly the same(partially solved)
 +
*coded the memory model,bebugging the model
 
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||
 +
*run and improve memory model
 
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|-
 
|Aodong Li ||  
 
|Aodong Li ||  
第15行: 第20行:
 
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|Andi Zhang ||
 
|Andi Zhang ||
 +
*ran machine translation model
 +
*prepare the Chinese training set
 
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 +
*try to run machine translation model on chinese QA dataset
 
|-
 
|-
 
|Shiyao Li ||
 
|Shiyao Li ||
第24行: 第32行:
 
|Shiyue Zhang ||  
 
|Shiyue Zhang ||  
 
* finished writing the document of rnng and cnn [[http://cslt.riit.tsinghua.edu.cn/mediawiki/images/e/e6/RNNG_Document.pdf rnng doc]]
 
* finished writing the document of rnng and cnn [[http://cslt.riit.tsinghua.edu.cn/mediawiki/images/e/e6/RNNG_Document.pdf rnng doc]]
 +
* tried a simple way to add memory into rnng [[http://cslt.riit.tsinghua.edu.cn/mediawiki/images/2/2f/RNNG%2Bmm%E5%AE%9E%E9%AA%8C%E6%8A%A5%E5%91%8A.pdf RNNG+MM实验报告]]
 
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 +
* try better way to add memory into rnng
 
|-
 
|-
 
|}
 
|}

2016年11月2日 (三) 01:18的最后版本

Date People Last Week This Week
2016/10/31 Yang Feng
  • almost finish the coding of rnng with memory network and can transfer to Shiyue today or tomorrow.
  • start the work of sequence-to-sequence translation.
Jiyuan Zhang
  • attemped to solve the bug that costs which are calculated by running poetry model weren't exactly the same(partially solved)
  • coded the memory model,bebugging the model
  • run and improve memory model
Aodong Li
Andi Zhang
  • ran machine translation model
  • prepare the Chinese training set
  • try to run machine translation model on chinese QA dataset
Shiyao Li
Shiyue Zhang
  • try better way to add memory into rnng