2013
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The MIT-LL/AFRL IWSLT-2013 MT system
Michaeel Kazi
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Michael Coury
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Elizabeth Salesky
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Jessica Ray
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Wade Shen
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Terry Gleason
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Tim Anderson
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Grant Erdmann
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Lane Schwartz
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Brian Ore
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Raymond Slyh
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Jeremy Gwinnup
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Katherine Young
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Michael Hutt
Proceedings of the 10th International Workshop on Spoken Language Translation: Evaluation Campaign
This paper describes the MIT-LL/AFRL statistical MT system and the improvements that were developed during the IWSLT 2013 evaluation campaign [1]. As part of these efforts, we experimented with a number of extensions to the standard phrase-based model that improve performance on the Russian to English, Chinese to English, Arabic to English, and English to French TED-talk translation task. We also applied our existing ASR system to the TED-talk lecture ASR task. We discuss the architecture of the MIT-LL/AFRL MT system, improvements over our 2012 system, and experiments we ran during the IWSLT-2013 evaluation. Specifically, we focus on 1) cross-entropy filtering of MT training data, and 2) improved optimization techniques, 3) language modeling, and 4) approximation of out-of-vocabulary words.
2012
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The MIT-LL/AFRL IWSLT 2012 MT system
Jennifer Drexler
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Wade Shen
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Tim Anderson
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Raymond Slyh
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Brian Ore
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Eric Hansen
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Terry Gleason
Proceedings of the 9th International Workshop on Spoken Language Translation: Evaluation Campaign
This paper describes the MIT-LL/AFRL statistical MT system and the improvements that were developed during the IWSLT 2012 evaluation campaign. As part of these efforts, we experimented with a number of extensions to the standard phrase-based model that improve performance on the Arabic to English and English to French TED-talk translation task. We also applied our existing ASR system to the TED-talk lecture ASR task, and combined our ASR and MT systems for the TED-talk SLT task. We discuss the architecture of the MIT-LL/AFRL MT system, improvements over our 2011 system, and experiments we ran during the IWSLT-2012 evaluation. Specifically, we focus on 1) cross-domain translation using MAP adaptation, 2) cross-entropy filtering of MT training data, and 3) improved Arabic morphology for MT preprocessing.
2010
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The MIT-LL/AFRL IWSLT-2010 MT system
Wade Shen
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Timothy Anderson
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Raymond Slyh
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A. Ryan Aminzadeh
Proceedings of the 7th International Workshop on Spoken Language Translation: Evaluation Campaign
This paper describes the MIT-LL/AFRL statistical MT system and the improvements that were developed during the IWSLT 2010 evaluation campaign. As part of these efforts, we experimented with a number of extensions to the standard phrase-based model that improve performance on the Arabic and Turkish to English translation tasks. We also participated in the new French to English BTEC and English to French TALK tasks. We discuss the architecture of the MIT-LL/AFRL MT system, improvements over our 2008 system, and experiments we ran during the IWSLT-2010 evaluation. Specifically, we focus on 1) cross-domain translation using MAP adaptation, 2) Turkish morphological processing and translation, 3) improved Arabic morphology for MT preprocessing, and 4) system combination methods for machine translation.