“Schedule”版本间的差异
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checkpoint-100000 translation model | checkpoint-100000 translation model | ||
BLEU: 11.11 | BLEU: 11.11 | ||
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− | source:神大用则竭,形大劳则敝,形神离则死 。 | + | *source:在秦者名错,与张仪争论,於是惠王使错将伐蜀,遂拔,因而守之。 |
− | target:精神过度使用就会衰竭,形体过度劳累就会疲惫,神形分离就会死亡。 | + | *target:在秦国的名叫司马错,曾与张仪发生争论,秦惠王采纳了他的意见,于是司马错率军攻蜀国,攻取后,又让他做了蜀地郡守。 |
− | trans: 精神过度就可衰竭,身体过度劳累就会疲惫,地形也就会死。 | + | *trans:当时秦国的人都很欣赏他的建议,与张仪一起商议,所以吴王派使者率军攻打蜀地,一举攻,接着又下令守城 。 |
+ | *source:神大用则竭,形大劳则敝,形神离则死 。 | ||
+ | *target:精神过度使用就会衰竭,形体过度劳累就会疲惫,神形分离就会死亡。 | ||
+ | *trans: 精神过度就可衰竭,身体过度劳累就会疲惫,地形也就会死。 | ||
+ | *source:今天子接千岁之统,封泰山,而余不得从行,是命也夫,命也夫! | ||
+ | *target:现天子继承汉朝千年一统的大业,在泰山举行封禅典礼而我不能随行,这是命啊,是命啊! | ||
+ | *trans: 现在天子可以继承帝位的成就爵位,爵位至泰山,而我却未能执行先帝的命运。 | ||
− | + | *1.data used Zizhitongjian only(6,000 pairs), we can get BLEU 6 at most. | |
− | + | *2.data used Zizhitongjian only(12,000 pairs), we can get BLEU 7 at most. | |
− | + | *3.data used Shiji and Zizhitongjian(43,0000 pairs), we can get BLEU about 9. | |
− | + | *4.data used Shiji and Zizhitongjian(43,0000 pairs), and split the ancient language text one character by one, we can get BLEU 11.11 at most. | |
− | + | *The main factors now is the data(including pairs of sentence、the quality——cause the modern language text include context information. | |
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− | 1.data used Zizhitongjian only(6,000 pairs), we can get BLEU 6 at most. | + | |
− | 2.data used Zizhitongjian only(12,000 pairs), we can get BLEU 7 at most. | + | |
− | 3.data used Shiji and Zizhitongjian(43,0000 pairs), we can get BLEU about 9. | + | |
− | 4.data used Shiji and Zizhitongjian(43,0000 pairs), and split the ancient language text one character by one, we can get BLEU 11.11 at most. | + | |
− | The main factors now is the data(including pairs of sentence、the quality——cause the modern language text include context information. | + | |
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2017年8月12日 (六) 15:34的版本
目录
NLP Schedule
Members
Current Members
- Yang Feng (冯洋)
- Jiyuan Zhang (张记袁)
- Aodong Li (李傲冬)
- Andi Zhang (张安迪)
- Shiyue Zhang (张诗悦)
- Li Gu (古丽)
- Peilun Xiao (肖培伦)
- Shipan Ren (任师攀)
- Jiayu Guo (郭佳雨)
Former Members
- Chao Xing (邢超) : FreeNeb
- Rong Liu (刘荣) : 优酷
- Xiaoxi Wang (王晓曦) : 图灵机器人
- Xi Ma (马习) : 清华大学研究生
- Tianyi Luo (骆天一) : phd candidate in University of California Santa Cruz
- Qixin Wang (王琪鑫) : MA candidate in University of California
- DongXu Zhang (张东旭): --
- Yiqiao Pan (潘一桥) : MA candidate in University of Sydney
- Shiyao Li (李诗瑶) : BUPT
- Aiting Liu (刘艾婷) : BUPT
Work Progress
Daily Report
Date | Person | start | leave | hours | status | |
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2017/04/02 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/03 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/04 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/05 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/06 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/07 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/08 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/09 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/10 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/11 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/12 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/13 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/14 | Andy Zhang | 9:30 | 18:30 | 8 |
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Peilun Xiao | ||||||
2017/04/15 | Andy Zhang | 9:00 | 15:00 | 6 |
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Peilun Xiao | ||||||
2017/04/18 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/04/19 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/04/20 | Aodong Li | 12:00 | 20:00 | 8 |
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2017/04/21 | Aodong Li | 12:00 | 20:00 | 8 |
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2017/04/24 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/04/25 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/04/26 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/04/27 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/04/28 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/04/30 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/05/01 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/05/02 | Aodong Li | 11:00 | 20:00 | 8 |
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2017/05/06 | Aodong Li | 14:20 | 17:20 | 3 |
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2017/05/07 | Aodong Li | 13:30 | 22:00 | 8 |
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2017/05/08 | Aodong Li | 11:30 | 21:00 | 8 |
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2017/05/09 | Aodong Li | 13:00 | 22:00 | 9 |
small data, 1st and 2nd translator uses the same training data, 2nd translator uses random initialized embedding
BASELINE: 43.87 best result of our model: 42.56 | |
2017/05/10 | Shipan Ren | 9:00 | 20:00 | 11 |
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2017/05/10 | Aodong Li | 13:30 | 22:00 | 8 |
small data, 1st and 2nd translator uses the different training data, counting 22000 and 22017 seperately 2nd translator uses random initialized embedding
BASELINE: 36.67 (36.67 is the model at 4750 updates, but we use model at 3000 updates to prevent the case of overfitting, to generate the 2nd translator's training data, for which the BLEU is 34.96) best result of our model: 29.81 This may suggest that that using either the same training data with 1st translator or different one won't influence 2nd translator's performance, instead, using the same one may be better, at least from results. But I have to give a consideration of a smaller size of training data compared to yesterday's model.
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2017/05/11 | Shipan Ren | 10:00 | 19:30 | 9.5 |
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2017/05/11 | Aodong Li | 13:00 | 21:00 | 8 |
small data, 1st and 2nd translator uses the same training data, 2nd translator uses constant untrainable embedding imported from 1st translator's decoder
BASELINE: 43.87 best result of our model: 43.48 Experiments show that this kind of series or cascade model will definitely impair the final perfor- mance due to information loss as the information flows through the network from end to end. Decoder's smaller vocabulary size compared to encoder's demonstrate this (9000+ -> 6000+). The intention of this experiment is looking for a map to solve meaning shift using 2nd translator, but result of whether the map is learned or not is obscured by the smaller vocab size phenomenon.
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2017/05/12 | Aodong Li | 13:00 | 21:00 | 8 |
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2017/05/13 | Shipan Ren | 10:00 | 19:00 | 9 |
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2017/05/14 | Aodong Li | 10:00 | 20:00 | 9 |
small data, 2nd translator uses as training data the concat(Chinese, machine translated English), 2nd translator uses random initialized embedding
BASELINE: 43.87 best result of our model: 43.53
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2017/05/15 | Shipan Ren | 9:30 | 19:00 | 9.5 |
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2017/05/17 | Shipan Ren | 9:30 | 19:30 | 10 |
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Aodong Li | 13:30 | 24:00 | 9 |
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2017/05/18 | Shipan Ren | 10:00 | 19:00 | 9 |
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Aodong Li | 12:30 | 21:00 | 8 |
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2017/05/19 | Aodong Li | 12:30 | 20:30 | 8 |
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2017/05/21 | Aodong Li | 10:30 | 18:30 | 8 |
hidden_size = 700 (500 in prior) emb_size = 510 (310 in prior) small data, 2nd translator uses as training data the concat(Chinese, machine translated English), 2nd translator uses random initialized embedding
BASELINE: 43.87 best result of our model: 45.21 But only one checkpoint outperforms the baseline, the other results are commonly under 43.1
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2017/05/22 | Aodong Li | 14:00 | 22:00 | 8 |
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2017/05/23 | Aodong Li | 13:00 | 21:30 | 8 |
hidden_size = 700 emb_size = 510 learning_rate = 0.0005 (0.001 in prior) small data, 2nd translator uses as training data the concat(Chinese, machine translated English), 2nd translator uses random initialized embedding
BASELINE: 43.87 best result of our model: 42.19 Overfitting? In overall, the 2nd translator performs worse than baseline
hidden_size = 500 emb_size = 310 learning_rate = 0.001 small data, double-decoder model with joint loss which means the final loss = 1st decoder's loss + 2nd decoder's loss
BASELINE: 43.87 best result of our model: 39.04 The 1st decoder's output is generally better than 2nd decoder's output. The reason may be that the second decoder only learns from the first decoder's hidden states because their states are almost the same.
The reason why double-decoder without joint loss generalizes very bad is that the gap between force teaching mechanism (training process) and beam search mechanism (decoding process) propagates and expands the error to the output end, which destroys the model when decoding.
Try to train double-decoder model without joint loss but with beam search on 1st decoder. | |
2017/05/24 | Aodong Li | 13:00 | 21:30 | 8 |
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2017/05/24 | Shipan Ren | 10:00 | 20:00 | 10 |
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2017/05/25 | Shipan Ren | 9:30 | 18:30 | 9 |
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Aodong Li | 13:00 | 22:00 | 9 |
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2017/05/27 | Shipan Ren | 9:30 | 18:30 | 9 |
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2017/05/28 | Aodong Li | 15:00 | 22:00 | 7 |
hidden_size = 500 emb_size = 310 learning_rate = 0.001 small data, 2nd translator uses as training data both Chinese and machine translated English Chinese and English use different encoders and different attention final_attn = attn_1 + attn_2 2nd translator uses random initialized embedding
BASELINE: 43.87 when decoding: final_attn = attn_1 + attn_2 best result of our model: 43.50 final_attn = 2/3attn_1 + 4/3attn_2 best result of our model: 41.22 final_attn = 4/3attn_1 + 2/3attn_2 best result of our model: 43.58 | |
2017/05/30 | Aodong Li | 15:00 | 21:00 | 6 |
hidden_size = 500 emb_size = 310 learning_rate = 0.001 small data, 2nd translator uses as training data both Chinese and machine translated English Chinese and English use different encoders and different attention final_attn = 2/3attn_1 + 4/3attn_2 2nd translator uses random initialized embedding
BASELINE: 43.87 best result of our model: 42.36
final_attn = 2/3attn_1 + 4/3attn_2 2nd translator uses constant initialized embedding
BASELINE: 43.87 best result of our model: 45.32
final_attn = attn_1 + attn_2 2nd translator uses constant initialized embedding
BASELINE: 43.87 best result of our model: 45.41 and it seems more stable | |
2017/05/31 | Shipan Ren | 10:00 | 19:30 | 9.5 |
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Aodong Li | 12:00 | 20:30 | 8.5 |
final_attn = 4/3attn_1 + 2/3attn_2 2nd translator uses constant initialized embedding
BASELINE: 43.87 best result of our model: 45.79
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2017/06/01 | Aodong Li | 13:00 | 24:00 | 11 |
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2017/06/02 | Aodong Li | 13:00 | 22:00 | 9 |
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2017/06/03 | Aodong Li | 13:00 | 21:00 | 8 |
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2017/06/05 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/06 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/07 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/08 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/09 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/12 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/13 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/14 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/15 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/16 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/19 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/20 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/21 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/22 | Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/23 | Shipan Ren | 10:00 | 21:00 | 11 |
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Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/26 | Shipan Ren | 10:00 | 21:00 | 11 |
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Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/27 | Shipan Ren | 10:00 | 20:00 | 10 |
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Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/28 | Shipan Ren | 10:00 | 19:00 | 9 |
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Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/29 | Shipan Ren | 10:00 | 20:00 | 10 |
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Aodong Li | 10:00 | 19:00 | 8 |
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2017/06/30 | Shipan Ren | 10:00 | 24:00 | 14 |
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Aodong Li | 10:00 | 19:00 | 8 |
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2017/07/03 | Shipan Ren | 9:00 | 21:00 | 12 |
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2017/07/04 | Shipan Ren | 9:00 | 21:00 | 12 |
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2017/07/05 | Shipan Ren | 9:00 | 21:00 | 12 |
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2017/07/06 | Shipan Ren | 9:00 | 21:00 | 12 |
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2017/07/07 | Shipan Ren | 9:00 | 21:00 | 12 |
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2017/07/08 | Shipan Ren | 9:00 | 21:00 | 12 |
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2017/07/18 | Jiayu Guo | 8:30 | 22:00 | 14 |
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2017/07/19 | Jiayu Guo | 9:00 | 22:00 | 13 |
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2017/07/20 | Jiayu Guo | 9:00 | 22:00 | 13 |
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2017/07/21 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/07/24 | Jiayu Guo | 9:00 | 22:00 | 13 |
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2017/07/25 | Jiayu Guo | 9:00 | 23:00 | 14 |
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2017/07/26 | Jiayu Guo | 10:00 | 24:00 | 14 |
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2017/07/27 | Jiayu Guo | 10:00 | 24:00 | 14 |
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2017/07/28 | Jiayu Guo | 9:00 | 24:00 | 15 |
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2017/07/31 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/08/1 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/08/2 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/08/3 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/08/4 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/08/7 | Jiayu Guo | 9:00 | 22:00 | 13 |
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2017/08/8 | Jiayu Guo | 10:00 | 21:00 | 11 |
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2017/08/9 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/08/10 | Jiayu Guo | 9:00 | 23:00 | 13 |
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2017/08/11 | Jiayu Guo | 10:00 | 23:00 | 13 |
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2017/08/12 | Jiayu Guo | 11:00 | 23:30 | 12 |
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2017/08/13 | Jiayu Guo | 11:00 | 23:30 | 12 |
checkpoint-100000 translation model BLEU: 11.11
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Date | Yang Feng | Jiyuan Zhang |
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