Corpus-based approaches to Machine Translation (MT) dominate the MT research field today, with Example-Based MT (EBMT) and Statistical MT (SMT) representing two different frameworks within the data-driven paradigm. EBMT has always made use of both phrasal and lexical correspondences to produce high-quality translations. Early SMT models, on the other hand, were based on word-level correpsondences, but with the advent of more sophisticated phrase-based approaches, the line between EBMT and SMT has become increasingly blurred. In this thesis we carry out a number of translation experiments comparing the performance of the state-of-the-art marker-based EBMT system of Gough and Way (2004a, 2004b), Way and Gough (2005) and Gough (2005) against ...
One key to the success of EBMT is the removal of the boundaries limiting the potential of translatio...
Statistical Machine Translation (SMT) and Neural Machine Translation (NMT) are the state-of-the-art ...
Machine translation can be considered a highly interdisciplinary and multidisciplinary field because...
(Way & Gough, 2005) demonstrate that their Marker-based EBMT system is ca-pable of outperforming...
(Way and Gough, 2005) provide an indepth comparison of their Example-Based Machine Translation (EBMT...
(Way & Gough, 2005) demonstrate that their Marker-based EBMT system is capable of outperforming a wo...
Corpus-based approaches to Machine Translation (MT) dominate the MT research field today, with Examp...
In this paper, we examine a number of different phrase segmentation approaches for Machine Translati...
The first research on integrating controlled language data in an Example-Based Machine Translation (...
This article presents a hybrid architecture which combines rule-based machine translation (RBMT) wit...
In the past few decades machine translation research has made major progress. A researcher now has a...
The present article investigates the fusion of different language models to improve transla-tion acc...
This article addresses the development of statistical models for phrase-based machine translation (M...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
This article presents the results of the research project ProjecTA, which attempts to bring machine ...
One key to the success of EBMT is the removal of the boundaries limiting the potential of translatio...
Statistical Machine Translation (SMT) and Neural Machine Translation (NMT) are the state-of-the-art ...
Machine translation can be considered a highly interdisciplinary and multidisciplinary field because...
(Way & Gough, 2005) demonstrate that their Marker-based EBMT system is ca-pable of outperforming...
(Way and Gough, 2005) provide an indepth comparison of their Example-Based Machine Translation (EBMT...
(Way & Gough, 2005) demonstrate that their Marker-based EBMT system is capable of outperforming a wo...
Corpus-based approaches to Machine Translation (MT) dominate the MT research field today, with Examp...
In this paper, we examine a number of different phrase segmentation approaches for Machine Translati...
The first research on integrating controlled language data in an Example-Based Machine Translation (...
This article presents a hybrid architecture which combines rule-based machine translation (RBMT) wit...
In the past few decades machine translation research has made major progress. A researcher now has a...
The present article investigates the fusion of different language models to improve transla-tion acc...
This article addresses the development of statistical models for phrase-based machine translation (M...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
This article presents the results of the research project ProjecTA, which attempts to bring machine ...
One key to the success of EBMT is the removal of the boundaries limiting the potential of translatio...
Statistical Machine Translation (SMT) and Neural Machine Translation (NMT) are the state-of-the-art ...
Machine translation can be considered a highly interdisciplinary and multidisciplinary field because...