Data selection has proven its merit for improving Neural Machine Translation (NMT), when applied to authentic data. But the benefit of using synthetic data in NMT training, produced by the popular back-translation technique, raises the question if data selection could also be useful for synthetic data? In this work we use Infrequent n-gram Recovery (INR) and Feature Decay Algorithms (FDA), two transductive data selection methods to obtain subsets of sentences from synthetic data. These methods ensure that selected sentences share n-grams with the test set so the NMT model can be adapted to translate it. Performing data selection on back-translated data creates new challenges as the source-side may contain noise originated by the model used i...
Machine translation (MT) has benefited from using synthetic training data originating from translati...
Data selection is a process used in selecting a subset of parallel data for the training of machine...
A prerequisite for training corpus-based machine translation (MT) systems – either Statistical MT (S...
Data selection has proven its merit for improving Neural Machine Translation (NMT), when applied to ...
Data selection techniques applied to neural machine translation (NMT) aim to increase the performanc...
Neural Machine Translation (NMT) has achieved promising results comparable with Phrase-Based Statist...
Neural Machine Translation (NMT) systems require a lot of data to be competitive. For this reason, d...
Machine Translation models are trained to translate a variety of documents from one language into an...
Neural Machine Translation (NMT) systems require a lot of data to be competitive. For this reason, d...
Neural Machine Translation has achieved state-of-the-art performance for several language pairs usin...
Data selection is a process used in selecting a subset of parallel data for the training of machine ...
Data selection is an effective approach to domain adaptation in statistical ma-chine translation. Th...
A prerequisite for training corpus-based machine translation (MT) systems – either Statistical MT (S...
In this work, we study different ways of improving Machine Translation models by using the subset of...
Machine translation (MT) has benefited from using synthetic training data originating from translati...
Data selection is a process used in selecting a subset of parallel data for the training of machine...
A prerequisite for training corpus-based machine translation (MT) systems – either Statistical MT (S...
Data selection has proven its merit for improving Neural Machine Translation (NMT), when applied to ...
Data selection techniques applied to neural machine translation (NMT) aim to increase the performanc...
Neural Machine Translation (NMT) has achieved promising results comparable with Phrase-Based Statist...
Neural Machine Translation (NMT) systems require a lot of data to be competitive. For this reason, d...
Machine Translation models are trained to translate a variety of documents from one language into an...
Neural Machine Translation (NMT) systems require a lot of data to be competitive. For this reason, d...
Neural Machine Translation has achieved state-of-the-art performance for several language pairs usin...
Data selection is a process used in selecting a subset of parallel data for the training of machine ...
Data selection is an effective approach to domain adaptation in statistical ma-chine translation. Th...
A prerequisite for training corpus-based machine translation (MT) systems – either Statistical MT (S...
In this work, we study different ways of improving Machine Translation models by using the subset of...
Machine translation (MT) has benefited from using synthetic training data originating from translati...
Data selection is a process used in selecting a subset of parallel data for the training of machine...
A prerequisite for training corpus-based machine translation (MT) systems – either Statistical MT (S...