SOTAVerified

Machine Translation

Machine translation is the task of translating a sentence in a source language to a different target language.

Approaches for machine translation can range from rule-based to statistical to neural-based. More recently, encoder-decoder attention-based architectures like BERT have attained major improvements in machine translation.

One of the most popular datasets used to benchmark machine translation systems is the WMT family of datasets. Some of the most commonly used evaluation metrics for machine translation systems include BLEU, METEOR, NIST, and others.

( Image credit: Google seq2seq )

Papers

Showing 66016650 of 10752 papers

TitleStatusHype
Proceedings of the AMTA 2018 Workshop on Technologies for MT of Low Resource Languages (LoResMT 2018)0
Evaluating Automatic Speech Recognition in Translation0
Translation Quality Metrics0
Embedding Register-Aware MT into the CAT Workflow0
Termbase Exchange (TBX)0
Proceedings of the AMTA 2018 Workshop on Translation Quality Estimation and Automatic Post-Editing0
Semi-Supervised Neural Machine Translation with Language Models0
Document-Level Information as Side Constraints for Improved Neural Patent Translation0
Beyond Quality, Considerations for an MT solution0
Proceedings of the 13th Conference of the Association for Machine Translation in the Americas (Volume 2: User Papers)0
An Evaluation of Two Vocabulary Reduction Methods for Neural Machine Translation0
Machine translation at Booking.com: what's next?0
Proceedings of the 13th Conference of the Association for Machine Translation in the Americas (Volume 1: Research Papers)0
Lightweight Word-Level Confidence Estimation for Neural Interactive Translation Prediction0
Developing a Neural Machine Translation Service for the 2017-2018 European Union Presidency0
Neural Morphological Tagging of Lemma Sequences for Machine Translation0
Neural Monkey: The Current State and Beyond0
Automatic Post-Editing and Machine Translation Quality Estimation at eBay0
Language Codes0
Tibetan-Chinese Neural Machine Translation based on Syllable Segmentation0
The Sockeye Neural Machine Translation Toolkit at AMTA 20180
Keynote: Use more Machine Translation and Keep Your Customers Happy0
Keynote: Unveiling the Linguistic Weaknesses of Neural MT0
Keynote: Setting up a Machine Translation Program for IARPA0
Keynote: Machine Translation Beyond the Sentence0
Simultaneous Translation using Optimized Segmentation0
A Comparison of Machine Translation Paradigms for Use in Black-Box Fuzzy-Match Repair0
Improving Low Resource Machine Translation using Morphological Glosses (Non-archival Extended Abstract)0
Tutorial: MQM-DQF: A Good Marriage (Translation Quality for the 21st Century)0
The Impact of Advances in Neural and Statistical MT on the Translation Workforce0
A Dataset and Reranking Method for Multimodal MT of User-Generated Image Captions0
SMT versus NMT: Preliminary comparisons for Irish0
A Survey of Machine Translation Work in the Philippines: From 1998 to 20180
Tutorial: Corpora Quality Management for MT - Practices and Roles0
Tutorial: De-mystifying Neural MT0
A Smorgasbord of Features to Combine Phrase-Based and Neural Machine Translation0
Book Review: Bayesian Analysis in Natural Language Processing by Shay Cohen0
Smart Enough to Talk With Us? Foundations and Challenges for Dialogue Capable AI Systems0
XNMT: The eXtensible Neural Machine Translation ToolkitCode1
Joint Training for Neural Machine Translation Models with Monolingual Data0
Analyzing Uncertainty in Neural Machine TranslationCode0
AMUSE: Multilingual Semantic Parsing for Question Answering over Linked DataCode0
Gender Aware Spoken Language Translation Applied to English-Arabic0
Deterministic Non-Autoregressive Neural Sequence Modeling by Iterative RefinementCode0
CytonMT: an Efficient Neural Machine Translation Open-source Toolkit Implemented in C++Code0
Fluency Over Adequacy: A Pilot Study in Measuring User Trust in Imperfect MT0
Universal Neural Machine Translation for Extremely Low Resource Languages0
From Gameplay to Symbolic Reasoning: Learning SAT Solver Heuristics in the Style of Alpha(Go) ZeroCode0
Multimodal Generative Models for Scalable Weakly-Supervised LearningCode1
Examining the Tip of the Iceberg: A Data Set for Idiom TranslationCode0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Transformer Cycle (Rev)BLEU score35.14Unverified
2Noisy back-translationBLEU score35Unverified
3Transformer+Rep(Uni)BLEU score33.89Unverified
4T5-11BBLEU score32.1Unverified
5BiBERTBLEU score31.26Unverified
6Transformer + R-DropBLEU score30.91Unverified
7Bi-SimCutBLEU score30.78Unverified
8BERT-fused NMTBLEU score30.75Unverified
9Data Diversification - TransformerBLEU score30.7Unverified
10SimCutBLEU score30.56Unverified
#ModelMetricClaimedVerifiedStatus
1Transformer+BT (ADMIN init)BLEU score46.4Unverified
2Noisy back-translationBLEU score45.6Unverified
3mRASP+Fine-TuneBLEU score44.3Unverified
4Transformer + R-DropBLEU score43.95Unverified
5Transformer (ADMIN init)BLEU score43.8Unverified
6AdminBLEU score43.8Unverified
7BERT-fused NMTBLEU score43.78Unverified
8MUSE(Paralllel Multi-scale Attention)BLEU score43.5Unverified
9T5BLEU score43.4Unverified
10Local Joint Self-attentionBLEU score43.3Unverified
#ModelMetricClaimedVerifiedStatus
1PiNMTBLEU score40.43Unverified
2BiBERTBLEU score38.61Unverified
3Bi-SimCutBLEU score38.37Unverified
4Cutoff + Relaxed Attention + LMBLEU score37.96Unverified
5DRDABLEU score37.95Unverified
6Transformer + R-Drop + CutoffBLEU score37.9Unverified
7SimCutBLEU score37.81Unverified
8Cutoff+KneeBLEU score37.78Unverified
9CutoffBLEU score37.6Unverified
10CipherDAugBLEU score37.53Unverified
#ModelMetricClaimedVerifiedStatus
1HWTSC-Teacher-SimScore19.97Unverified
2MS-COMET-22Score19.89Unverified
3MS-COMET-QE-22Score19.76Unverified
4KG-BERTScoreScore17.28Unverified
5metricx_xl_DA_2019Score17.17Unverified
6COMET-QEScore16.8Unverified
7COMET-22Score16.31Unverified
8UniTE-srcScore15.68Unverified
9UniTE-refScore15.38Unverified
10metricx_xxl_DA_2019Score15.24Unverified