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Add a LSTM-CRF model at Conlll2003 Dataset #122
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| Codecov Report
 @@            Coverage Diff            @@
##           master    #122      +/-   ##
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- Coverage   70.31%   70.2%   -0.12%     
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  Files          82      82              
  Lines        5407    5407              
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- Hits         3802    3796       -6     
- Misses       1605    1611       +6
 Continue to review full report at Codecov. 
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| Great! | 
Update README
| OK, I have updated my commit just now, thanks for your careful review. | 
| i think the data as well as the training code may not necessary in reproduction | 
| 
 Thanks for your comments @xuyige , the followings are my replies and proposals: Reply
 ProposalBased on the design of how tf&pytorch loaded the mnist dataset(by network), I think the fastNLP may consider the data downloading APIs for some widely acknowledged NLP datasets, eg, SQUAD. | 
| 
 i am so regret to point out that the char-aware-nlm were borrowed from other projects. | 
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should be working, codes seem to be fine
but things still don't add up
I am currently working on this one
| 
 Thanks for your review~ | 
| Yes, we don't have load_data function. You may use an old version. | 

Description
Add the LSTM-CRF model for Conll2003 dataset at reproduction dir based on fastNLP lib, inspired by the paper https://arxiv.org/pdf/1508.01991.pdf
Main reason
Provide a new demo for how fastNLP can facilitate the development of the deep learning model. FYI:
https://github.com/hazelnutsgz/fastNLP/tree/hazelnutsgz-crf-lstm/reproduction/LSTM-CRF
Checklist 检查下面各项是否完成
Please feel free to remove inapplicable items for your PR.
Changes
Mention:
@yhcc @xpqiu @FengZiYjun @2017alan