In data-driven Machine Translation approaches, like Example-Based Machine Translation (EBMT) (Brown, 2000) and Statistical Machine Translation (Vogel et al., 2003), the quality of the translations produced depends on the amount of training data available. While more data is always useful, a large training corpus can slow down a machine translation system. We would like to selectively sample the huge corpus to obtain a sub-corpus of most informative sentence pairs that would lead to good quality translations. Reducing the amount of training data also enables one to easily port an MT system onto small devices that have less memory and storage capacity. In this paper, we propose using Active Learning strategies to sample the most informative ...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
Proceedings of the 17th Nordic Conference of Computational Linguistics NODALIDA 2009. Editors: Kri...
Corpus based approaches to automatic translation such as Example Based and Statistical Machine Trans...
Traditional active learning (AL) methods for machine translation (MT) rely on heuristics. However, t...
This paper investigates active learning to improve statistical machine translation (SMT) for low-res...
Statistical machine translation (SMT) mod-els need large bilingual corpora for train-ing, which are ...
Statistical Machine Translation (SMT) models learn how to translate by examining a bilingual paralle...
Translation needs have greatly increased during the last years. In many situations, text to be tran...
Interactive-predictive translation is a collaborative iterative process, where human translators pro...
In recent years, corpus based approaches to machine translation have become predominant, with Statis...
Machine translation is the application of machines to translate text or speech from one natural lang...
Parallel corpus is an indispensable resource for translation model training in statistical machine t...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
Proceedings of the 17th Nordic Conference of Computational Linguistics NODALIDA 2009. Editors: Kri...
Corpus based approaches to automatic translation such as Example Based and Statistical Machine Trans...
Traditional active learning (AL) methods for machine translation (MT) rely on heuristics. However, t...
This paper investigates active learning to improve statistical machine translation (SMT) for low-res...
Statistical machine translation (SMT) mod-els need large bilingual corpora for train-ing, which are ...
Statistical Machine Translation (SMT) models learn how to translate by examining a bilingual paralle...
Translation needs have greatly increased during the last years. In many situations, text to be tran...
Interactive-predictive translation is a collaborative iterative process, where human translators pro...
In recent years, corpus based approaches to machine translation have become predominant, with Statis...
Machine translation is the application of machines to translate text or speech from one natural lang...
Parallel corpus is an indispensable resource for translation model training in statistical machine t...
We present an extensive experimental study of Phrase-based Statistical Machine Translation, from the...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...
We present an extensive experimental study of a Statistical Machine Translation system, Moses (Koehn...