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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
1NLPHutINDIC21pa-en2021/03/20 00:15:194615---24.35------NMTNoTransformer trained using all languages PMI data. Then fine tuned using all pa-en data.
2ORGANIZERINDIC21pa-en2021/04/08 17:25:184803---23.66------NMTNoBilingual baseline trained on PMI data. Transformer base. LR=10-3
3NICT-5INDIC21pa-en2021/04/21 15:45:235288---34.34------NMTNoPretrain MBART on IndicCorp and FT on bilingual PMI data. Beam search. Model is bilingual.
4SRPOLINDIC21pa-en2021/04/21 19:33:285332---37.61------NMTNoBase transformer on all WAT21 data
5NICT-5INDIC21pa-en2021/04/22 11:53:475363---35.81------NMTNoMBART+MNMT. Beam 4.
6gaurvarINDIC21pa-en2021/04/25 18:11:235534---16.46------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
7gaurvarINDIC21pa-en2021/04/25 18:35:365551---18.61------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
8gaurvarINDIC21pa-en2021/04/25 18:49:165562---17.86------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
9gaurvarINDIC21pa-en2021/04/25 19:02:555572---18.59------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
10sakuraINDIC21pa-en2021/04/30 22:59:335877---40.38------NMTNoFine-tuning of multilingual mBART many2many model with training corpus.
11IIIT-HINDIC21pa-en2021/05/03 18:15:366023---41.24------NMTNoMNMT system (XX-En) trained via exploiting lexical similarity on PMI+CVIT parallel corpus, then improved using back translation on PMI monolingual data followed by fine tuning.
12CFILTINDIC21pa-en2021/05/04 01:17:276059---38.01------NMTNoMultilingual(Many-to-One(XX-En)) NMT model based on Transformer with shared encoder and decoder.
13coastalINDIC21pa-en2021/05/04 01:46:356108---25.44------NMTNoseq2seq model trained on all WAT2021 data
14CFILT-IITBINDIC21pa-en2021/05/04 01:56:116123---29.87------NMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all indic language data converted to same script
15CFILT-IITBINDIC21pa-en2021/05/04 01:59:526129---32.34------NMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all Indo-Aryan languages data converted to same script
16coastalINDIC21pa-en2021/05/04 05:43:286168---35.90------NMTNomT5 trained only on PMI
17sakuraINDIC21pa-en2021/05/04 13:20:336209---41.18------NMTNoPre-training multilingual mBART many2many model with training corpus followed by finetuning on PMI Parallel.
18SRPOLINDIC21pa-en2021/05/04 15:28:096249---46.39------NMTNoEnsemble of many-to-one on all data. Pretrained on BT, finetuned on PMI
19SRPOLINDIC21pa-en2021/05/04 16:33:036275---44.87------NMTNoMany-to-one on all data. Pretrained on BT, finetuned on PMI
20IITP-MTINDIC21pa-en2021/05/04 18:12:256301---38.41------NMTNoMany-to-One model trained on all training data with base Transformer. All indic language data is romanized. Model fine-tuned on BT PMI monolingual corpus.
21mcairtINDIC21pa-en2021/05/04 19:28:116342---38.42------NMTNomultilingual model(many to one) trained on all WAT 2021 data by using base transformer.
22NICT-5INDIC21pa-en2021/06/21 12:05:016479---43.06------NMTNoUsing PMI and PIB data for fine-tuning on am mbart model trained for over 5 epochs.
23NICT-5INDIC21pa-en2021/06/25 11:50:206500---42.44------NMTNoUsing PMI and PIB data for fine-tuning on a mbart model trained for over 5 epochs. MNMT model.

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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
1NLPHutINDIC21pa-en2021/03/20 00:15:194615---0.766047------NMTNoTransformer trained using all languages PMI data. Then fine tuned using all pa-en data.
2ORGANIZERINDIC21pa-en2021/04/08 17:25:184803---0.749459------NMTNoBilingual baseline trained on PMI data. Transformer base. LR=10-3
3NICT-5INDIC21pa-en2021/04/21 15:45:235288---0.816975------NMTNoPretrain MBART on IndicCorp and FT on bilingual PMI data. Beam search. Model is bilingual.
4SRPOLINDIC21pa-en2021/04/21 19:33:285332---0.833454------NMTNoBase transformer on all WAT21 data
5NICT-5INDIC21pa-en2021/04/22 11:53:475363---0.827528------NMTNoMBART+MNMT. Beam 4.
6gaurvarINDIC21pa-en2021/04/25 18:11:235534---0.679540------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
7gaurvarINDIC21pa-en2021/04/25 18:35:365551---0.703876------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
8gaurvarINDIC21pa-en2021/04/25 18:49:165562---0.734748------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
9gaurvarINDIC21pa-en2021/04/25 19:02:555572---0.730487------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
10sakuraINDIC21pa-en2021/04/30 22:59:335877---0.844351------NMTNoFine-tuning of multilingual mBART many2many model with training corpus.
11IIIT-HINDIC21pa-en2021/05/03 18:15:366023---0.837608------NMTNoMNMT system (XX-En) trained via exploiting lexical similarity on PMI+CVIT parallel corpus, then improved using back translation on PMI monolingual data followed by fine tuning.
12CFILTINDIC21pa-en2021/05/04 01:17:276059---0.818396------NMTNoMultilingual(Many-to-One(XX-En)) NMT model based on Transformer with shared encoder and decoder.
13coastalINDIC21pa-en2021/05/04 01:46:356108---0.791210------NMTNoseq2seq model trained on all WAT2021 data
14CFILT-IITBINDIC21pa-en2021/05/04 01:56:116123---0.795413------NMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all indic language data converted to same script
15CFILT-IITBINDIC21pa-en2021/05/04 01:59:526129---0.805722------NMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all Indo-Aryan languages data converted to same script
16coastalINDIC21pa-en2021/05/04 05:43:286168---0.835327------NMTNomT5 trained only on PMI
17sakuraINDIC21pa-en2021/05/04 13:20:336209---0.849499------NMTNoPre-training multilingual mBART many2many model with training corpus followed by finetuning on PMI Parallel.
18SRPOLINDIC21pa-en2021/05/04 15:28:096249---0.865765------NMTNoEnsemble of many-to-one on all data. Pretrained on BT, finetuned on PMI
19SRPOLINDIC21pa-en2021/05/04 16:33:036275---0.861389------NMTNoMany-to-one on all data. Pretrained on BT, finetuned on PMI
20IITP-MTINDIC21pa-en2021/05/04 18:12:256301---0.839598------NMTNoMany-to-One model trained on all training data with base Transformer. All indic language data is romanized. Model fine-tuned on BT PMI monolingual corpus.
21mcairtINDIC21pa-en2021/05/04 19:28:116342---0.840360------NMTNomultilingual model(many to one) trained on all WAT 2021 data by using base transformer.
22NICT-5INDIC21pa-en2021/06/21 12:05:016479---0.842755------NMTNoUsing PMI and PIB data for fine-tuning on am mbart model trained for over 5 epochs.
23NICT-5INDIC21pa-en2021/06/25 11:50:206500---0.845966------NMTNoUsing PMI and PIB data for fine-tuning on a mbart model trained for over 5 epochs. MNMT model.

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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
1NLPHutINDIC21pa-en2021/03/20 00:15:194615---0.717322------NMTNoTransformer trained using all languages PMI data. Then fine tuned using all pa-en data.
2ORGANIZERINDIC21pa-en2021/04/08 17:25:184803---0.701483------NMTNoBilingual baseline trained on PMI data. Transformer base. LR=10-3
3NICT-5INDIC21pa-en2021/04/21 15:45:235288---0.792541------NMTNoPretrain MBART on IndicCorp and FT on bilingual PMI data. Beam search. Model is bilingual.
4SRPOLINDIC21pa-en2021/04/21 19:33:285332---0.815069------NMTNoBase transformer on all WAT21 data
5NICT-5INDIC21pa-en2021/04/22 11:53:475363---0.800753------NMTNoMBART+MNMT. Beam 4.
6gaurvarINDIC21pa-en2021/04/25 18:11:235534---0.686625------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
7gaurvarINDIC21pa-en2021/04/25 18:35:365551---0.693631------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
8gaurvarINDIC21pa-en2021/04/25 18:49:165562---0.692458------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
9gaurvarINDIC21pa-en2021/04/25 19:02:555572---0.694658------NMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
10sakuraINDIC21pa-en2021/04/30 22:59:335877---0.823464------NMTNoFine-tuning of multilingual mBART many2many model with training corpus.
11IIIT-HINDIC21pa-en2021/05/03 18:15:366023---0.811169------NMTNoMNMT system (XX-En) trained via exploiting lexical similarity on PMI+CVIT parallel corpus, then improved using back translation on PMI monolingual data followed by fine tuning.
12CFILTINDIC21pa-en2021/05/04 01:17:276059---0.804561------NMTNoMultilingual(Many-to-One(XX-En)) NMT model based on Transformer with shared encoder and decoder.
13coastalINDIC21pa-en2021/05/04 01:46:356108---0.779252------NMTNoseq2seq model trained on all WAT2021 data
14CFILT-IITBINDIC21pa-en2021/05/04 01:56:116123---0.772655------NMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all indic language data converted to same script
15CFILT-IITBINDIC21pa-en2021/05/04 01:59:526129---0.782112------NMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all Indo-Aryan languages data converted to same script
16coastalINDIC21pa-en2021/05/04 05:43:286168---0.814440------NMTNomT5 trained only on PMI
17sakuraINDIC21pa-en2021/05/04 13:20:336209---0.823371------NMTNoPre-training multilingual mBART many2many model with training corpus followed by finetuning on PMI Parallel.
18SRPOLINDIC21pa-en2021/05/04 15:28:096249---0.841641------NMTNoEnsemble of many-to-one on all data. Pretrained on BT, finetuned on PMI
19SRPOLINDIC21pa-en2021/05/04 16:33:036275---0.836440------NMTNoMany-to-one on all data. Pretrained on BT, finetuned on PMI
20IITP-MTINDIC21pa-en2021/05/04 18:12:256301---0.815989------NMTNoMany-to-One model trained on all training data with base Transformer. All indic language data is romanized. Model fine-tuned on BT PMI monolingual corpus.
21mcairtINDIC21pa-en2021/05/04 19:28:116342---0.818332------NMTNomultilingual model(many to one) trained on all WAT 2021 data by using base transformer.
22NICT-5INDIC21pa-en2021/06/21 12:05:016479---0.000000------NMTNoUsing PMI and PIB data for fine-tuning on am mbart model trained for over 5 epochs.
23NICT-5INDIC21pa-en2021/06/25 11:50:206500---0.000000------NMTNoUsing PMI and PIB data for fine-tuning on a mbart model trained for over 5 epochs. MNMT model.

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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
1NLPHutINDIC21pa-en2021/03/20 00:15:194615UnderwayNMTNoTransformer trained using all languages PMI data. Then fine tuned using all pa-en data.
2NICT-5INDIC21pa-en2021/04/21 15:45:235288UnderwayNMTNoPretrain MBART on IndicCorp and FT on bilingual PMI data. Beam search. Model is bilingual.
3NICT-5INDIC21pa-en2021/04/22 11:53:475363UnderwayNMTNoMBART+MNMT. Beam 4.
4gaurvarINDIC21pa-en2021/04/25 18:35:365551UnderwayNMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
5gaurvarINDIC21pa-en2021/04/25 19:02:555572UnderwayNMTNoMulti Task Multi Lingual T5 trained for Multiple Indic Languages
6sakuraINDIC21pa-en2021/04/30 22:59:335877UnderwayNMTNoFine-tuning of multilingual mBART many2many model with training corpus.
7IIIT-HINDIC21pa-en2021/05/03 18:15:366023UnderwayNMTNoMNMT system (XX-En) trained via exploiting lexical similarity on PMI+CVIT parallel corpus, then improved using back translation on PMI monolingual data followed by fine tuning.
8CFILTINDIC21pa-en2021/05/04 01:17:276059UnderwayNMTNoMultilingual(Many-to-One(XX-En)) NMT model based on Transformer with shared encoder and decoder.
9CFILT-IITBINDIC21pa-en2021/05/04 01:56:116123UnderwayNMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all indic language data converted to same script
10CFILT-IITBINDIC21pa-en2021/05/04 01:59:526129UnderwayNMTNoMultilingual NMT (Many to One): Transformer based model with shared encoder-decoder and shared BPE vocabulary trained using all Indo-Aryan languages data converted to same script
11coastalINDIC21pa-en2021/05/04 05:43:286168UnderwayNMTNomT5 trained only on PMI
12SRPOLINDIC21pa-en2021/05/04 15:28:096249UnderwayNMTNoEnsemble of many-to-one on all data. Pretrained on BT, finetuned on PMI
13SRPOLINDIC21pa-en2021/05/04 16:33:036275UnderwayNMTNoMany-to-one on all data. Pretrained on BT, finetuned on PMI
14IITP-MTINDIC21pa-en2021/05/04 18:12:256301UnderwayNMTNoMany-to-One model trained on all training data with base Transformer. All indic language data is romanized. Model fine-tuned on BT PMI monolingual corpus.
15mcairtINDIC21pa-en2021/05/04 19:28:116342UnderwayNMTNomultilingual model(many to one) trained on all WAT 2021 data by using base transformer.

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HUMAN (WAT2020)


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

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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