NICT_LOGO.JPG KYOTO-U_LOGO.JPG

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
1ORGANIZERJPCzh-ja2015/05/14 17:55:5143039.2239.5239.14--- 0.00 0.00 0.00 0.00SMTNoHierarchical Phrase-based SMT
2ORGANIZERJPCzh-ja2015/05/14 17:58:1443138.3438.5138.22--- 0.00 0.00 0.00 0.00SMTNoPhrase-based SMT
3ORGANIZERJPCzh-ja2015/05/14 18:00:1643239.3939.9039.39--- 0.00 0.00 0.00 0.00SMTNoTree-to-String SMT (2015)
4TOSHIBAJPCzh-ja2015/07/23 14:43:3050441.8241.9041.60--- 0.00 0.00 0.00 0.00SMT and RBMTYesCombination of phrase-based SMT and SPE systems.
5TOSHIBAJPCzh-ja2015/07/28 16:30:4152641.1240.8740.59--- 0.00 0.00 0.00 0.00SMT and RBMTYesRBMT with SPE(Statistical Post Editing) system
6ORGANIZERJPCzh-ja2015/08/14 16:52:0264726.8027.8126.89--- 0.00 0.00 0.00 0.00OtherYesOnline A (2015)
7ORGANIZERJPCzh-ja2015/08/14 16:55:1964812.3312.7212.44--- 0.00 0.00 0.00 0.00OtherYesOnline B (2015)
8TOSHIBAJPCzh-ja2015/08/17 11:53:3466728.0627.4427.56--- 0.00 0.00 0.00 0.00RBMTYesRBMT
9EHRJPCzh-ja2015/08/17 14:05:2067141.0642.2441.15--- 0.00 0.00 0.00 0.00SMT and RBMTYesSystem combination of RBMT with user dictionary plus SPE and phrase based SMT with preordering. Candidate selection by language model score.
10NTTJPCzh-ja2015/08/21 08:07:1873640.6041.1040.63--- 0.00 0.00 0.00 0.00SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing and phrase table smoothing.
11ORGANIZERJPCzh-ja2015/08/25 11:42:0275910.4910.7210.35--- 0.00 0.00 0.00 0.00RBMTNoRBMT A (2015)
12ORGANIZERJPCzh-ja2015/08/25 11:53:50760 7.94 8.07 7.73--- 0.00 0.00 0.00 0.00RBMTNoRBMT B
13Kyoto-UJPCzh-ja2015/08/26 13:10:4478137.8738.6237.71--- 0.00 0.00 0.00 0.00EBMTNoBaseline w/o reranking
14NTTJPCzh-ja2015/08/28 09:53:2481139.7740.0839.88--- 0.00 0.00 0.00 0.00SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing, learning-based pre-ordering, and phrase table smoothing.
15EHRJPCzh-ja2015/08/30 12:42:5282840.3540.1639.92--- 0.00 0.00 0.00 0.00SMT and RBMTYesRBMT with user dictionary plus SPE
16EHRJPCzh-ja2015/08/30 15:22:2583040.7041.4940.79--- 0.00 0.00 0.00 0.00SMTYesPhrase based SMT with preordering
17WASUIPSJPCzh-ja2015/09/01 14:16:1685333.4834.5533.55--- 0.00 0.00 0.00 0.00SMTNoCombining sampling-based alignment and bilingual hierarchical sub-sentential alignment methods.
18Kyoto-UJPCzh-ja2015/09/02 09:25:0486441.3541.9241.16--- 0.00 0.00 0.00 0.00EBMTNoKyotoEBMT system with bilingual RNNLM reranking (only character-base model)
19ORGANIZERJPCzh-ja2016/07/15 11:22:3599839.0739.4538.95---- 0.00 0.00 0.00SMTNoTree-to-String SMT (2016)
20EHRJPCzh-ja2016/07/18 15:25:53100740.9541.2040.51---- 0.00 0.00 0.00SMTYesCombination of word-based PBSMT and character-based PBSMT with DL=6.
21EHRJPCzh-ja2016/07/18 15:33:03100941.0541.0540.52---- 0.00 0.00 0.00SMT and RBMTYesCombination of word-based PBSMT, character-based PBSMT and RBMT+PBSPE with DL=6.
22ORGANIZERJPCzh-ja2016/07/26 11:18:45104026.9927.9127.02---- 0.00 0.00 0.00OtherYesOnline A (2016)
23NICT-2JPCzh-ja2016/08/04 17:34:38107941.0941.2741.24---- 0.00 0.00 0.00SMTNoPhrase-based SMT with Preordering + Domain Adaptation
24NICT-2JPCzh-ja2016/08/05 18:06:47110041.8742.3942.13---- 0.00 0.00 0.00SMTYesPhrase-based SMT with Preordering + Domain Adaptation (JPC and ASPEC) + Google 5-gram LM
25bjtu_nlpJPCzh-ja2016/08/09 18:44:56112839.3439.7239.30---- 0.00 0.00 0.00NMTNoRNN Encoder-Decoder with attention mechanism, single model
26JAPIOJPCzh-ja2016/08/17 11:48:56116158.6659.1958.63---- 0.00 0.00 0.00SMTYesPhrase-based SMT with Preordering + JAPIO corpus including some sentences in testset
27JAPIOJPCzh-ja2016/08/18 14:15:46118043.8744.4743.66---- 0.00 0.00 0.00SMTYesPhrase-based SMT with Preordering + JAPIO corpus
28NTTJPCzh-ja2016/08/19 08:26:18119139.0339.1738.99---- 0.00 0.00 0.00SMTNoBaseline PBMT (Moses)
29JAPIOJPCzh-ja2016/08/19 08:26:57119244.3245.1244.09---- 0.00 0.00 0.00SMTYesPhrase-based SMT with Preordering + JAPIO corpus
30NTTJPCzh-ja2016/08/19 08:28:00119340.7541.0540.68---- 0.00 0.00 0.00SMTNoPBMT with pre-ordering on dependency structures
31NTTJPCzh-ja2016/08/19 08:53:34119944.9945.8445.02---- 0.00 0.00 0.00NMTNoBaseline NMT with attention over bidirectional LSTMs (by Harvard NMT)
32NTTJPCzh-ja2016/08/19 08:55:20120043.4744.2743.53---- 0.00 0.00 0.00NMTNoNMT with pre-ordering and attention over bidirectional LSTMs (pre-ordering module is the same as the PBMT submission)
33SenseJPCzh-ja2016/08/29 01:06:19128138.9038.5838.65---- 0.00 0.00 0.00SMTNoClustercat-C10-PBMT
34SenseJPCzh-ja2016/08/29 09:55:33128438.7538.3238.38---- 0.00 0.00 0.00SMTNoBaseline-C10-PBMT
35SenseJPCzh-ja2016/08/29 23:08:29129238.7138.3538.38---- 0.00 0.00 0.00SMTNoBaseline-C50-PBMT
36SenseJPCzh-ja2016/08/30 07:37:39129438.7138.5138.54---- 0.00 0.00 0.00SMTNoClustercat-C50-PBMT
37WASUIPSJPCzh-ja2016/10/12 21:04:52132529.3830.8229.66---- 0.00 0.00 0.00SMTNoOur baseline system: train=100,000 tune=1,000 test=2,000 BLEU (our PC): 32.29.
38WASUIPSJPCzh-ja2016/10/12 21:06:36132631.0031.6330.86---- 0.00 0.00 0.00SMTNoOur improved system: train=100,000 tune=1,000 test=2,000 BLEU (our PC): 33.61. Using bilingual term extraction and re-tokenization for Chinese–Japanese.
39JAPIOJPCzh-ja2016/10/27 13:01:42132939.2940.6739.51---- 0.00 0.00 0.00SMTNoPhrase-based SMT with Preordering
40ORGANIZERJPCzh-ja2016/11/16 11:19:58134142.6643.7642.95---- 0.00 0.00 0.00NMTYesOnline A (2016/11/14)
41EHRJPCzh-ja2017/07/19 19:28:31140847.0847.4446.83---- 0.00 0.00 0.00NMTNoSMT reranked NMT (word based, by Moses and OpenNMT)
42EHRJPCzh-ja2017/07/19 19:35:03140945.2745.8745.24---- 0.00 0.00 0.00NMTNoSimple NMT (character based, by OpenNMT)
43EHRJPCzh-ja2017/07/19 20:41:27141446.5247.1746.35---- 0.00 0.00 0.00NMTNoSMT reranked NMT (character based, by Moses and OpenNMT)
44EHRJPCzh-ja2017/07/19 20:45:00141546.0346.4245.95---- 0.00 0.00 0.00NMTNoSimple NMT (word based, by OpenNMT)
45JAPIOJPCzh-ja2017/07/25 12:22:07144750.5251.2550.57---- 0.00 0.00 0.00SMTYesPhrase-based SMT with Preordering + Japio corpus
46JAPIOJPCzh-ja2017/07/25 18:26:52145845.0745.7945.10---- 0.00 0.00 0.00NMTNoOpenNMT(dbrnn)
47u-tkbJPCzh-ja2017/07/26 12:44:18146838.7940.4738.99---- 0.00 0.00 0.00NMTNoNMT with SMT phrase translation (phrase extraction with branching entropy; attention over bidirectional LSTMs; by Harvard NMT)
48JAPIOJPCzh-ja2017/07/26 14:09:22148249.5150.0049.48---- 0.00 0.00 0.00NMTYesOpenNMT(dbrnn) + JPC/Japio corpora + NMT/rule-based posteditor
49JAPIOJPCzh-ja2017/07/26 14:21:18148450.0650.5150.00---- 0.00 0.00 0.00NMTYesCombination of 3 NMT systems (OpenNMT(dbrnn) + JPC/Japio corpora + NMT/rule-based posteditor)
50EHRJPCzh-ja2018/05/04 14:17:39180315.7716.1215.53---- 0.00 0.00 0.00RBMTYesRBMT system for WAT2015's submission
51ORGANIZERJPCzh-ja2018/08/15 18:29:31196346.3246.7346.11----- 0.00 0.00NMTNoNMT with Attention
52USTCJPCzh-ja2018/08/31 17:24:35220648.3749.7848.57----- 0.00 0.00NMTNotensor2tensor, 4 model average, r2l rerank
53EHRJPCzh-ja2018/08/31 18:51:15221048.1048.5147.96----- 0.00 0.00NMTNoSMT reranked NMT
54ryanJPCzh-ja2019/07/25 22:12:26295449.9850.6750.12-------NMTNoBase Transformer
55sarahJPCzh-ja2019/07/26 11:32:28297650.9052.0451.09-------NMTNoTransformer, ensemble of 4 models
56KNU_HyundaiJPCzh-ja2019/07/27 08:29:23315353.5953.9153.47-------NMTYesTransformer(base) + *Used ASPEC corpus* with relative position, bt, multi source, r2l rerank, 5-model ensemble
57goku20JPCzh-ja2020/09/21 11:54:22408749.0750.0449.34-------NMTNomBART pre-training transformer, single model
58goku20JPCzh-ja2020/09/22 00:04:26410548.9849.9249.21-------NMTNomBART pre-training transformer, ensemble of 3 models
59tpt_watJPCzh-ja2021/04/27 01:42:09569049.4250.4649.55-------NMTNoBase Transformer model with shared vocab 8k size
60Bering LabJPCzh-ja2021/05/04 06:53:17617152.9953.5753.03-------NMTYesTransformer Ensemble with additional crawled parallel corpus

Notice:

Back to top

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
1ORGANIZERJPCzh-ja2015/05/14 17:55:514300.8060580.8020590.804523---0.0000000.0000000.0000000.000000SMTNoHierarchical Phrase-based SMT
2ORGANIZERJPCzh-ja2015/05/14 17:58:144310.7820190.7789210.781456---0.0000000.0000000.0000000.000000SMTNoPhrase-based SMT
3ORGANIZERJPCzh-ja2015/05/14 18:00:164320.8149190.8113500.813595---0.0000000.0000000.0000000.000000SMTNoTree-to-String SMT (2015)
4TOSHIBAJPCzh-ja2015/07/23 14:43:305040.8205680.8135360.817614---0.0000000.0000000.0000000.000000SMT and RBMTYesCombination of phrase-based SMT and SPE systems.
5TOSHIBAJPCzh-ja2015/07/28 16:30:415260.8222680.8142490.818981---0.0000000.0000000.0000000.000000SMT and RBMTYesRBMT with SPE(Statistical Post Editing) system
6ORGANIZERJPCzh-ja2015/08/14 16:52:026470.7122420.7072640.711273---0.0000000.0000000.0000000.000000OtherYesOnline A (2015)
7ORGANIZERJPCzh-ja2015/08/14 16:55:196480.6489960.6412550.648742---0.0000000.0000000.0000000.000000OtherYesOnline B (2015)
8TOSHIBAJPCzh-ja2015/08/17 11:53:346670.7720540.7587560.767076---0.0000000.0000000.0000000.000000RBMTYesRBMT
9EHRJPCzh-ja2015/08/17 14:05:206710.8269870.8219830.825056---0.0000000.0000000.0000000.000000SMT and RBMTYesSystem combination of RBMT with user dictionary plus SPE and phrase based SMT with preordering. Candidate selection by language model score.
10NTTJPCzh-ja2015/08/21 08:07:187360.8234360.8202520.822026---0.0000000.0000000.0000000.000000SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing and phrase table smoothing.
11ORGANIZERJPCzh-ja2015/08/25 11:42:027590.6740600.6640980.667349---0.0000000.0000000.0000000.000000RBMTNoRBMT A (2015)
12ORGANIZERJPCzh-ja2015/08/25 11:53:507600.5962000.5818370.586941---0.0000000.0000000.0000000.000000RBMTNoRBMT B
13Kyoto-UJPCzh-ja2015/08/26 13:10:447810.7997300.7977000.798979---0.0000000.0000000.0000000.000000EBMTNoBaseline w/o reranking
14NTTJPCzh-ja2015/08/28 09:53:248110.8162880.8119110.815543---0.0000000.0000000.0000000.000000SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing, learning-based pre-ordering, and phrase table smoothing.
15EHRJPCzh-ja2015/08/30 12:42:528280.8195160.8129820.816743---0.0000000.0000000.0000000.000000SMT and RBMTYesRBMT with user dictionary plus SPE
16EHRJPCzh-ja2015/08/30 15:22:258300.8242640.8210550.823192---0.0000000.0000000.0000000.000000SMTYesPhrase based SMT with preordering
17WASUIPSJPCzh-ja2015/09/01 14:16:168530.7739850.7710990.772202---0.0000000.0000000.0000000.000000SMTNoCombining sampling-based alignment and bilingual hierarchical sub-sentential alignment methods.
18Kyoto-UJPCzh-ja2015/09/02 09:25:048640.8285430.8241990.827230---0.0000000.0000000.0000000.000000EBMTNoKyotoEBMT system with bilingual RNNLM reranking (only character-base model)
19ORGANIZERJPCzh-ja2016/07/15 11:22:359980.8131350.8098930.811644----0.0000000.0000000.000000SMTNoTree-to-String SMT (2016)
20EHRJPCzh-ja2016/07/18 15:25:5310070.8280400.8245020.826864----0.0000000.0000000.000000SMTYesCombination of word-based PBSMT and character-based PBSMT with DL=6.
21EHRJPCzh-ja2016/07/18 15:33:0310090.8270480.8219400.824852----0.0000000.0000000.000000SMT and RBMTYesCombination of word-based PBSMT, character-based PBSMT and RBMT+PBSPE with DL=6.
22ORGANIZERJPCzh-ja2016/07/26 11:18:4510400.7077390.7027180.706707----0.0000000.0000000.000000OtherYesOnline A (2016)
23NICT-2JPCzh-ja2016/08/04 17:34:3810790.8270090.8226640.825323----0.0000000.0000000.000000SMTNoPhrase-based SMT with Preordering + Domain Adaptation
24NICT-2JPCzh-ja2016/08/05 18:06:4711000.8296400.8267440.828107----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + Domain Adaptation (JPC and ASPEC) + Google 5-gram LM
25bjtu_nlpJPCzh-ja2016/08/09 18:44:5611280.8353140.8305050.833216----0.0000000.0000000.000000NMTNoRNN Encoder-Decoder with attention mechanism, single model
26JAPIOJPCzh-ja2016/08/17 11:48:5611610.8680270.8648930.866692----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + JAPIO corpus including some sentences in testset
27JAPIOJPCzh-ja2016/08/18 14:15:4611800.8335860.8293600.831534----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + JAPIO corpus
28NTTJPCzh-ja2016/08/19 08:26:1811910.8057020.7979910.802998----0.0000000.0000000.000000SMTNoBaseline PBMT (Moses)
29JAPIOJPCzh-ja2016/08/19 08:26:5711920.8349590.8301640.832955----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + JAPIO corpus
30NTTJPCzh-ja2016/08/19 08:28:0011930.8259850.8221250.824840----0.0000000.0000000.000000SMTNoPBMT with pre-ordering on dependency structures
31NTTJPCzh-ja2016/08/19 08:53:3411990.8530040.8518590.852430----0.0000000.0000000.000000NMTNoBaseline NMT with attention over bidirectional LSTMs (by Harvard NMT)
32NTTJPCzh-ja2016/08/19 08:55:2012000.8452710.8431050.844968----0.0000000.0000000.000000NMTNoNMT with pre-ordering and attention over bidirectional LSTMs (pre-ordering module is the same as the PBMT submission)
33SenseJPCzh-ja2016/08/29 01:06:1912810.8031550.7946790.800689----0.0000000.0000000.000000SMTNoClustercat-C10-PBMT
34SenseJPCzh-ja2016/08/29 09:55:3312840.8046730.7954490.801496----0.0000000.0000000.000000SMTNoBaseline-C10-PBMT
35SenseJPCzh-ja2016/08/29 23:08:2912920.8026730.7941270.799531----0.0000000.0000000.000000SMTNoBaseline-C50-PBMT
36SenseJPCzh-ja2016/08/30 07:37:3912940.8043010.7963490.801596----0.0000000.0000000.000000SMTNoClustercat-C50-PBMT
37WASUIPSJPCzh-ja2016/10/12 21:04:5213250.7518470.7484740.750678----0.0000000.0000000.000000SMTNoOur baseline system: train=100,000 tune=1,000 test=2,000 BLEU (our PC): 32.29.
38WASUIPSJPCzh-ja2016/10/12 21:06:3613260.7546260.7518040.753376----0.0000000.0000000.000000SMTNoOur improved system: train=100,000 tune=1,000 test=2,000 BLEU (our PC): 33.61. Using bilingual term extraction and re-tokenization for Chinese–Japanese.
39JAPIOJPCzh-ja2016/10/27 13:01:4213290.8203390.8173520.819850----0.0000000.0000000.000000SMTNoPhrase-based SMT with Preordering
40ORGANIZERJPCzh-ja2016/11/16 11:19:5813410.8458580.8449180.845794----0.0000000.0000000.000000NMTYesOnline A (2016/11/14)
41EHRJPCzh-ja2017/07/19 19:28:3114080.8590700.8563760.858888----0.0000000.0000000.000000NMTNoSMT reranked NMT (word based, by Moses and OpenNMT)
42EHRJPCzh-ja2017/07/19 19:35:0314090.8544470.8526150.853226----0.0000000.0000000.000000NMTNoSimple NMT (character based, by OpenNMT)
43EHRJPCzh-ja2017/07/19 20:41:2714140.8596190.8567840.858353----0.0000000.0000000.000000NMTNoSMT reranked NMT (character based, by Moses and OpenNMT)
44EHRJPCzh-ja2017/07/19 20:45:0014150.8585910.8559170.858511----0.0000000.0000000.000000NMTNoSimple NMT (word based, by OpenNMT)
45JAPIOJPCzh-ja2017/07/25 12:22:0714470.8477930.8437740.846081----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + Japio corpus
46JAPIOJPCzh-ja2017/07/25 18:26:5214580.8598830.8570560.859411----0.0000000.0000000.000000NMTNoOpenNMT(dbrnn)
47u-tkbJPCzh-ja2017/07/26 12:44:1814680.8321440.8336100.831209----0.0000000.0000000.000000NMTNoNMT with SMT phrase translation (phrase extraction with branching entropy; attention over bidirectional LSTMs; by Harvard NMT)
48JAPIOJPCzh-ja2017/07/26 14:09:2214820.8726250.8705370.872038----0.0000000.0000000.000000NMTYesOpenNMT(dbrnn) + JPC/Japio corpora + NMT/rule-based posteditor
49JAPIOJPCzh-ja2017/07/26 14:21:1814840.8753980.8733900.874822----0.0000000.0000000.000000NMTYesCombination of 3 NMT systems (OpenNMT(dbrnn) + JPC/Japio corpora + NMT/rule-based posteditor)
50EHRJPCzh-ja2018/05/04 14:17:3918030.7217150.7100850.716303----0.0000000.0000000.000000RBMTYesRBMT system for WAT2015's submission
51ORGANIZERJPCzh-ja2018/08/15 18:29:3119630.8573180.8550850.856442-----0.0000000.000000NMTNoNMT with Attention
52USTCJPCzh-ja2018/08/31 17:24:3522060.8662320.8642840.865423-----0.0000000.000000NMTNotensor2tensor, 4 model average, r2l rerank
53EHRJPCzh-ja2018/08/31 18:51:1522100.8582590.8556490.858142-----0.0000000.000000NMTNoSMT reranked NMT
54ryanJPCzh-ja2019/07/25 22:12:2629540.8698900.8679190.868936-------NMTNoBase Transformer
55sarahJPCzh-ja2019/07/26 11:32:2829760.8691590.8671330.868496-------NMTNoTransformer, ensemble of 4 models
56KNU_HyundaiJPCzh-ja2019/07/27 08:29:2331530.8802510.8794520.879471-------NMTYesTransformer(base) + *Used ASPEC corpus* with relative position, bt, multi source, r2l rerank, 5-model ensemble
57goku20JPCzh-ja2020/09/21 11:54:2240870.8658520.8637740.865703-------NMTNomBART pre-training transformer, single model
58goku20JPCzh-ja2020/09/22 00:04:2641050.8651110.8632060.864862-------NMTNomBART pre-training transformer, ensemble of 3 models
59tpt_watJPCzh-ja2021/04/27 01:42:0956900.8690340.8676780.868716-------NMTNoBase Transformer model with shared vocab 8k size
60Bering LabJPCzh-ja2021/05/04 06:53:1761710.8837440.8817100.883204-------NMTYesTransformer Ensemble with additional crawled parallel corpus

Notice:

Back to top

AMFM


# Team Task Date/Time DataID AMFM
Method
Other
Resources
System
Description
unuse unuse unuse unuse unuse unuse unuse unuse unuse unuse
1ORGANIZERJPCzh-ja2016/07/15 11:22:359980.7285200.7285200.728520----0.0000000.0000000.000000SMTNoTree-to-String SMT (2016)
2EHRJPCzh-ja2016/07/18 15:25:5310070.7450800.7450800.745080----0.0000000.0000000.000000SMTYesCombination of word-based PBSMT and character-based PBSMT with DL=6.
3EHRJPCzh-ja2016/07/18 15:33:0310090.7350100.7350100.735010----0.0000000.0000000.000000SMT and RBMTYesCombination of word-based PBSMT, character-based PBSMT and RBMT+PBSPE with DL=6.
4ORGANIZERJPCzh-ja2016/07/26 11:18:4510400.6937200.6937200.693720----0.0000000.0000000.000000OtherYesOnline A (2016)
5NICT-2JPCzh-ja2016/08/04 17:34:3810790.7330200.7330200.733020----0.0000000.0000000.000000SMTNoPhrase-based SMT with Preordering + Domain Adaptation
6NICT-2JPCzh-ja2016/08/05 18:06:4711000.7398900.7398900.739890----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + Domain Adaptation (JPC and ASPEC) + Google 5-gram LM
7bjtu_nlpJPCzh-ja2016/08/09 18:44:5611280.7214600.7214600.721460----0.0000000.0000000.000000NMTNoRNN Encoder-Decoder with attention mechanism, single model
8JAPIOJPCzh-ja2016/08/17 11:48:5611610.8080900.8080900.808090----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + JAPIO corpus including some sentences in testset
9JAPIOJPCzh-ja2016/08/18 14:15:4611800.7483300.7483300.748330----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + JAPIO corpus
10NTTJPCzh-ja2016/08/19 08:26:1811910.7202600.7202600.720260----0.0000000.0000000.000000SMTNoBaseline PBMT (Moses)
11JAPIOJPCzh-ja2016/08/19 08:26:5711920.7512000.7512000.751200----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + JAPIO corpus
12NTTJPCzh-ja2016/08/19 08:28:0011930.7301900.7301900.730190----0.0000000.0000000.000000SMTNoPBMT with pre-ordering on dependency structures
13NTTJPCzh-ja2016/08/19 08:53:3411990.7522000.7522000.752200----0.0000000.0000000.000000NMTNoBaseline NMT with attention over bidirectional LSTMs (by Harvard NMT)
14NTTJPCzh-ja2016/08/19 08:55:2012000.7492700.7492700.749270----0.0000000.0000000.000000NMTNoNMT with pre-ordering and attention over bidirectional LSTMs (pre-ordering module is the same as the PBMT submission)
15SenseJPCzh-ja2016/08/29 01:06:1912810.7185900.7185900.718590----0.0000000.0000000.000000SMTNoClustercat-C10-PBMT
16SenseJPCzh-ja2016/08/29 09:55:3312840.7154500.7154500.715450----0.0000000.0000000.000000SMTNoBaseline-C10-PBMT
17SenseJPCzh-ja2016/08/29 23:08:2912920.7193300.7193300.719330----0.0000000.0000000.000000SMTNoBaseline-C50-PBMT
18SenseJPCzh-ja2016/08/30 07:37:3912940.7152900.7152900.715290----0.0000000.0000000.000000SMTNoClustercat-C50-PBMT
19WASUIPSJPCzh-ja2016/10/12 21:04:5213250.6791100.6791100.679110----0.0000000.0000000.000000SMTNoOur baseline system: train=100,000 tune=1,000 test=2,000 BLEU (our PC): 32.29.
20WASUIPSJPCzh-ja2016/10/12 21:06:3613260.6860300.6860300.686030----0.0000000.0000000.000000SMTNoOur improved system: train=100,000 tune=1,000 test=2,000 BLEU (our PC): 33.61. Using bilingual term extraction and re-tokenization for Chinese–Japanese.
21JAPIOJPCzh-ja2016/10/27 13:01:4213290.7333000.7333000.733300----0.0000000.0000000.000000SMTNoPhrase-based SMT with Preordering
22ORGANIZERJPCzh-ja2016/11/16 11:19:5813410.7472400.7472400.747240----0.0000000.0000000.000000NMTYesOnline A (2016/11/14)
23EHRJPCzh-ja2017/07/19 19:28:3114080.7563500.7563500.756350----0.0000000.0000000.000000NMTNoSMT reranked NMT (word based, by Moses and OpenNMT)
24EHRJPCzh-ja2017/07/19 19:35:0314090.7571300.7571300.757130----0.0000000.0000000.000000NMTNoSimple NMT (character based, by OpenNMT)
25EHRJPCzh-ja2017/07/19 20:41:2714140.7613700.7613700.761370----0.0000000.0000000.000000NMTNoSMT reranked NMT (character based, by Moses and OpenNMT)
26EHRJPCzh-ja2017/07/19 20:45:0014150.7559000.7559000.755900----0.0000000.0000000.000000NMTNoSimple NMT (word based, by OpenNMT)
27JAPIOJPCzh-ja2017/07/25 12:22:0714470.7746600.7746600.774660----0.0000000.0000000.000000SMTYesPhrase-based SMT with Preordering + Japio corpus
28JAPIOJPCzh-ja2017/07/25 18:26:5214580.7549700.7549700.754970----0.0000000.0000000.000000NMTNoOpenNMT(dbrnn)
29u-tkbJPCzh-ja2017/07/26 12:44:1814680.7295800.7295800.729580----0.0000000.0000000.000000NMTNoNMT with SMT phrase translation (phrase extraction with branching entropy; attention over bidirectional LSTMs; by Harvard NMT)
30JAPIOJPCzh-ja2017/07/26 14:09:2214820.7774600.7774600.777460----0.0000000.0000000.000000NMTYesOpenNMT(dbrnn) + JPC/Japio corpora + NMT/rule-based posteditor
31JAPIOJPCzh-ja2017/07/26 14:21:1814840.7794200.7794200.779420----0.0000000.0000000.000000NMTYesCombination of 3 NMT systems (OpenNMT(dbrnn) + JPC/Japio corpora + NMT/rule-based posteditor)
32EHRJPCzh-ja2018/05/04 14:17:3918030.6233000.6233000.623300----0.0000000.0000000.000000RBMTYesRBMT system for WAT2015's submission
33ORGANIZERJPCzh-ja2018/08/15 18:29:3119630.7618200.7618200.761820-----0.0000000.000000NMTNoNMT with Attention
34USTCJPCzh-ja2018/08/31 17:24:3522060.7713100.7713100.771310-----0.0000000.000000NMTNotensor2tensor, 4 model average, r2l rerank
35EHRJPCzh-ja2018/08/31 18:51:1522100.7646700.7646700.764670-----0.0000000.000000NMTNoSMT reranked NMT
36ryanJPCzh-ja2019/07/25 22:12:2629540.0000000.0000000.000000-------NMTNoBase Transformer
37sarahJPCzh-ja2019/07/26 11:32:2829760.0000000.0000000.000000-------NMTNoTransformer, ensemble of 4 models
38KNU_HyundaiJPCzh-ja2019/07/27 08:29:2331530.0000000.0000000.000000-------NMTYesTransformer(base) + *Used ASPEC corpus* with relative position, bt, multi source, r2l rerank, 5-model ensemble
39goku20JPCzh-ja2020/09/21 11:54:2240870.0000000.0000000.000000-------NMTNomBART pre-training transformer, single model
40goku20JPCzh-ja2020/09/22 00:04:2641050.0000000.0000000.000000-------NMTNomBART pre-training transformer, ensemble of 3 models
41tpt_watJPCzh-ja2021/04/27 01:42:0956900.8869180.8869180.886918-------NMTNoBase Transformer model with shared vocab 8k size
42Bering LabJPCzh-ja2021/05/04 06:53:1761710.8964050.8964050.896405-------NMTYesTransformer Ensemble with additional crawled parallel corpus
43ORGANIZERJPCzh-ja2015/05/14 17:55:514300.7293700.7293700.7293700.0000000.0000000.0000000.0000000.0000000.0000000.000000SMTNoHierarchical Phrase-based SMT
44ORGANIZERJPCzh-ja2015/05/14 17:58:144310.7231100.7231100.7231100.0000000.0000000.0000000.0000000.0000000.0000000.000000SMTNoPhrase-based SMT
45ORGANIZERJPCzh-ja2015/05/14 18:00:164320.7259200.7259200.7259200.0000000.0000000.0000000.0000000.0000000.0000000.000000SMTNoTree-to-String SMT (2015)
46TOSHIBAJPCzh-ja2015/07/23 14:43:305040.7401800.7401800.7401800.0000000.0000000.0000000.0000000.0000000.0000000.000000SMT and RBMTYesCombination of phrase-based SMT and SPE systems.
47TOSHIBAJPCzh-ja2015/07/28 16:30:415260.7419900.7419900.7419900.0000000.0000000.0000000.0000000.0000000.0000000.000000SMT and RBMTYesRBMT with SPE(Statistical Post Editing) system
48ORGANIZERJPCzh-ja2015/08/14 16:52:026470.6938400.6938400.6938400.0000000.0000000.0000000.0000000.0000000.0000000.000000OtherYesOnline A (2015)
49ORGANIZERJPCzh-ja2015/08/14 16:55:196480.5883800.5883800.5883800.0000000.0000000.0000000.0000000.0000000.0000000.000000OtherYesOnline B (2015)
50TOSHIBAJPCzh-ja2015/08/17 11:53:346670.6687800.6687800.6687800.0000000.0000000.0000000.0000000.0000000.0000000.000000RBMTYesRBMT
51EHRJPCzh-ja2015/08/17 14:05:206710.7214000.7214000.7214000.0000000.0000000.0000000.0000000.0000000.0000000.000000SMT and RBMTYesSystem combination of RBMT with user dictionary plus SPE and phrase based SMT with preordering. Candidate selection by language model score.
52NTTJPCzh-ja2015/08/21 08:07:187360.7324500.7324500.7324500.0000000.0000000.0000000.0000000.0000000.0000000.000000SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing and phrase table smoothing.
53ORGANIZERJPCzh-ja2015/08/25 11:42:027590.5571300.5571300.5571300.0000000.0000000.0000000.0000000.0000000.0000000.000000RBMTNoRBMT A (2015)
54ORGANIZERJPCzh-ja2015/08/25 11:53:507600.5021000.5021000.5021000.0000000.0000000.0000000.0000000.0000000.0000000.000000RBMTNoRBMT B
55Kyoto-UJPCzh-ja2015/08/26 13:10:447810.7314200.7314200.7314200.0000000.0000000.0000000.0000000.0000000.0000000.000000EBMTNoBaseline w/o reranking
56NTTJPCzh-ja2015/08/28 09:53:248110.7232000.7232000.7232000.0000000.0000000.0000000.0000000.0000000.0000000.000000SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing, learning-based pre-ordering, and phrase table smoothing.
57EHRJPCzh-ja2015/08/30 12:42:528280.7018800.7018800.7018800.0000000.0000000.0000000.0000000.0000000.0000000.000000SMT and RBMTYesRBMT with user dictionary plus SPE
58EHRJPCzh-ja2015/08/30 15:22:258300.7065500.7065500.7065500.0000000.0000000.0000000.0000000.0000000.0000000.000000SMTYesPhrase based SMT with preordering
59WASUIPSJPCzh-ja2015/09/01 14:16:168530.7097000.7097000.7097000.0000000.0000000.0000000.0000000.0000000.0000000.000000SMTNoCombining sampling-based alignment and bilingual hierarchical sub-sentential alignment methods.
60Kyoto-UJPCzh-ja2015/09/02 09:25:048640.7441900.7441900.7441900.0000000.0000000.0000000.0000000.0000000.0000000.000000EBMTNoKyotoEBMT system with bilingual RNNLM reranking (only character-base model)

Notice:

Back to top

HUMAN (WAT2022)


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

Notice:
Back to top

HUMAN (WAT2021)


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

Notice:
Back to top

HUMAN (WAT2020)


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

Notice:
Back to top

HUMAN (WAT2019)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description
1sarahJPCzh-ja2019/07/26 11:32:282976UnderwayNMTNoTransformer, ensemble of 4 models
2KNU_HyundaiJPCzh-ja2019/07/27 08:29:233153UnderwayNMTYesTransformer(base) + *Used ASPEC corpus* with relative position, bt, multi source, r2l rerank, 5-model ensemble

Notice:
Back to top

HUMAN (WAT2018)


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

Notice:
Back to top

HUMAN (WAT2017)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description
1JAPIOJPCzh-ja2017/07/26 14:21:18148480.250NMTYesCombination of 3 NMT systems (OpenNMT(dbrnn) + JPC/Japio corpora + NMT/rule-based posteditor)
2EHRJPCzh-ja2017/07/19 20:41:27141469.750NMTNoSMT reranked NMT (character based, by Moses and OpenNMT)
3EHRJPCzh-ja2017/07/19 19:28:31140868.250NMTNoSMT reranked NMT (word based, by Moses and OpenNMT)
4JAPIOJPCzh-ja2017/07/25 12:22:07144760.500SMTYesPhrase-based SMT with Preordering + Japio corpus
5u-tkbJPCzh-ja2017/07/26 12:44:18146855.500NMTNoNMT with SMT phrase translation (phrase extraction with branching entropy; attention over bidirectional LSTMs; by Harvard NMT)

Notice:
Back to top

HUMAN (WAT2016)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description
1ORGANIZERJPCzh-ja2016/11/16 11:19:58134154.250NMTYesOnline A (2016/11/14)
2NTTJPCzh-ja2016/08/19 08:55:20120046.500NMTNoNMT with pre-ordering and attention over bidirectional LSTMs (pre-ordering module is the same as the PBMT submission)
3JAPIOJPCzh-ja2016/08/19 08:26:57119246.250SMTYesPhrase-based SMT with Preordering + JAPIO corpus
4JAPIOJPCzh-ja2016/08/18 14:15:46118043.500SMTYesPhrase-based SMT with Preordering + JAPIO corpus
5NICT-2JPCzh-ja2016/08/05 18:06:47110043.250SMTYesPhrase-based SMT with Preordering + Domain Adaptation (JPC and ASPEC) + Google 5-gram LM
6NTTJPCzh-ja2016/08/19 08:28:00119339.250SMTNoPBMT with pre-ordering on dependency structures
7EHRJPCzh-ja2016/07/18 15:25:53100739.000SMTYesCombination of word-based PBSMT and character-based PBSMT with DL=6.
8NICT-2JPCzh-ja2016/08/04 17:34:38107936.750SMTNoPhrase-based SMT with Preordering + Domain Adaptation
9EHRJPCzh-ja2016/07/18 15:33:03100935.500SMT and RBMTYesCombination of word-based PBSMT, character-based PBSMT and RBMT+PBSPE with DL=6.
10bjtu_nlpJPCzh-ja2016/08/09 18:44:56112832.250NMTNoRNN Encoder-Decoder with attention mechanism, single model
11ORGANIZERJPCzh-ja2016/07/26 11:18:451040-19.750OtherYesOnline A (2016)

Notice:
Back to top

HUMAN (WAT2015)


# Team Task Date/Time DataID HUMAN
Method
Other
Resources
System
Description
1Kyoto-UJPCzh-ja2015/09/02 09:25:0486427.500EBMTNoKyotoEBMT system with bilingual RNNLM reranking (only character-base model)
2TOSHIBAJPCzh-ja2015/07/28 16:30:4152624.250SMT and RBMTYesRBMT with SPE(Statistical Post Editing) system
3EHRJPCzh-ja2015/08/17 14:05:2067122.000SMT and RBMTYesSystem combination of RBMT with user dictionary plus SPE and phrase based SMT with preordering. Candidate selection by language model score.
4ORGANIZERJPCzh-ja2015/05/14 18:00:1643220.750SMTNoTree-to-String SMT (2015)
5NTTJPCzh-ja2015/08/21 08:07:1873616.250SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing and phrase table smoothing.
6TOSHIBAJPCzh-ja2015/07/23 14:43:3050414.500SMT and RBMTYesCombination of phrase-based SMT and SPE systems.
7Kyoto-UJPCzh-ja2015/08/26 13:10:4478114.500EBMTNoBaseline w/o reranking
8EHRJPCzh-ja2015/08/30 12:42:528288.250SMT and RBMTYesRBMT with user dictionary plus SPE
9NTTJPCzh-ja2015/08/28 09:53:248118.000SMTNoA pre-ordering-based PBMT with patent-tuned dependency parsing, learning-based pre-ordering, and phrase table smoothing.
10ORGANIZERJPCzh-ja2015/08/14 16:52:02647-7.000OtherYesOnline A (2015)
11WASUIPSJPCzh-ja2015/09/01 14:16:16853-12.000SMTNoCombining sampling-based alignment and bilingual hierarchical sub-sentential alignment methods.
12ORGANIZERJPCzh-ja2015/08/25 11:42:02759-39.250RBMTNoRBMT A (2015)

Notice:
Back to top

HUMAN (WAT2014)


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

Notice:
Back to top

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