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WAT

The Workshop on Asian Translation
Evaluation Results

[EVALUATION RESULTS TOP] | [BLEU] | [RIBES] | [AMFM] | [HUMAN (WAT2022)] | [HUMAN (WAT2021)] | [HUMAN (WAT2020)] | [HUMAN (WAT2019)] | [HUMAN (WAT2018)] | [HUMAN (WAT2017)] | [HUMAN (WAT2016)] | [HUMAN (WAT2015)] | [HUMAN (WAT2014)] | [EVALUATION RESULTS USAGE POLICY]

BLEU


# Team Task Date/Time DataID BLEU
Method
Other
Resources
System
Description
juman kytea mecab moses-
tokenizer
stanford-
segmenter-
ctb
stanford-
segmenter-
pku
indic-
tokenizer
unuse myseg kmseg
1ORGANIZERINDIC20te-en2020/09/02 16:45:063637---15.44------NMTNoBaseline MLNMT XX to En model using PIB and Filtered PMI data. Transformer big model. Default settings.
2ODIANLPINDIC20te-en2020/09/17 21:52:393826---14.94------NMTNoTransformer Big with Relative position representations + xx-en model + PMI Data
3cvitINDIC20te-en2020/09/18 00:20:463841---10.05------NMTYes
4cvitINDIC20te-en2020/09/18 00:41:423852---10.66------NMTYes
5NICT-5INDIC20te-en2020/09/18 21:05:213997---10.08------NMTNoXX to XX transformer model trained on officially provided PMI and PKB data. Corpora were size balanced.
6NICT-5INDIC20te-en2020/09/18 21:28:124010---11.81------NMTNoXX to XX transformer model trained on officially provided PMI and PKB data. Corpora were size unbalanced.
7HW-TSCINDIC20te-en2020/09/19 11:50:394045---19.03------NMTNotransformer deep(pre LN),xx2en,PMI data and filtered PBI data (fasttext domain adaptation)+ sentencepiece + 2 model ensemble
8cvitINDIC20te-en2020/09/19 19:58:134066---12.87------NMTNoTransformer Multi-lingual baseline model. Encoder pre-training then fine-tuned on English-Telugu Parallel corpora

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RIBES


# Team Task Date/Time DataID RIBES
Method
Other
Resources
System
Description
juman kytea mecab moses-
tokenizer
stanford-
segmenter-
ctb
stanford-
segmenter-
pku
indic-
tokenizer
unuse myseg kmseg
1ORGANIZERINDIC20te-en2020/09/02 16:45:063637---0.567677------NMTNoBaseline MLNMT XX to En model using PIB and Filtered PMI data. Transformer big model. Default settings.
2ODIANLPINDIC20te-en2020/09/17 21:52:393826---0.549044------NMTNoTransformer Big with Relative position representations + xx-en model + PMI Data
3cvitINDIC20te-en2020/09/18 00:20:463841---0.659477------NMTYes
4cvitINDIC20te-en2020/09/18 00:41:423852---0.669592------NMTYes
5NICT-5INDIC20te-en2020/09/18 21:05:213997---0.543046------NMTNoXX to XX transformer model trained on officially provided PMI and PKB data. Corpora were size balanced.
6NICT-5INDIC20te-en2020/09/18 21:28:124010---0.616649------NMTNoXX to XX transformer model trained on officially provided PMI and PKB data. Corpora were size unbalanced.
7HW-TSCINDIC20te-en2020/09/19 11:50:394045---0.687880------NMTNotransformer deep(pre LN),xx2en,PMI data and filtered PBI data (fasttext domain adaptation)+ sentencepiece + 2 model ensemble
8cvitINDIC20te-en2020/09/19 19:58:134066---0.696401------NMTNoTransformer Multi-lingual baseline model. Encoder pre-training then fine-tuned on English-Telugu Parallel corpora

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AMFM


# Team Task Date/Time DataID AMFM
Method
Other
Resources
System
Description
unuse unuse unuse unuse unuse unuse unuse unuse unuse unuse
1ORGANIZERINDIC20te-en2020/09/02 16:45:063637---0.000000------NMTNoBaseline MLNMT XX to En model using PIB and Filtered PMI data. Transformer big model. Default settings.
2ODIANLPINDIC20te-en2020/09/17 21:52:393826---0.000000------NMTNoTransformer Big with Relative position representations + xx-en model + PMI Data
3cvitINDIC20te-en2020/09/18 00:20:463841---0.000000------NMTYes
4cvitINDIC20te-en2020/09/18 00:41:423852---0.000000------NMTYes
5NICT-5INDIC20te-en2020/09/18 21:05:213997---0.000000------NMTNoXX to XX transformer model trained on officially provided PMI and PKB data. Corpora were size balanced.
6NICT-5INDIC20te-en2020/09/18 21:28:124010---0.000000------NMTNoXX to XX transformer model trained on officially provided PMI and PKB data. Corpora were size unbalanced.
7HW-TSCINDIC20te-en2020/09/19 11:50:394045---0.000000------NMTNotransformer deep(pre LN),xx2en,PMI data and filtered PBI data (fasttext domain adaptation)+ sentencepiece + 2 model ensemble
8cvitINDIC20te-en2020/09/19 19:58:134066---0.000000------NMTNoTransformer Multi-lingual baseline model. Encoder pre-training then fine-tuned on English-Telugu Parallel corpora

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HUMAN (WAT2022)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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HUMAN (WAT2021)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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HUMAN (WAT2020)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description
1ODIANLPINDIC20te-en2020/09/17 21:52:393826UnderwayNMTNoTransformer Big with Relative position representations + xx-en model + PMI Data
2cvitINDIC20te-en2020/09/18 00:20:463841UnderwayNMTYes
3NICT-5INDIC20te-en2020/09/18 21:28:124010UnderwayNMTNoXX to XX transformer model trained on officially provided PMI and PKB data. Corpora were size unbalanced.
4HW-TSCINDIC20te-en2020/09/19 11:50:394045UnderwayNMTNotransformer deep(pre LN),xx2en,PMI data and filtered PBI data (fasttext domain adaptation)+ sentencepiece + 2 model ensemble

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HUMAN (WAT2019)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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HUMAN (WAT2018)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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HUMAN (WAT2017)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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HUMAN (WAT2016)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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HUMAN (WAT2015)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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HUMAN (WAT2014)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description

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EVALUATION RESULTS USAGE POLICY

When you use the WAT evaluation results for any purpose such as:
- writing technical papers,
- making presentations about your system,
- advertising your MT system to the customers,
you can use the information about translation directions, scores (including both automatic and human evaluations) and ranks of your system among others. You can also use the scores of the other systems, but you MUST anonymize the other system's names. In addition, you can show the links (URLs) to the WAT evaluation result pages.

NICT (National Institute of Information and Communications Technology)
Kyoto University
Last Modified: 2018-08-02