With thousands of languages in the world, and the increasing speed and quantity of information being distributed across the world, automatic translation between languages by computers, Machine Translation (MT), has become an increasingly important area of research. State-of-the-art MT systems rely not upon hand-crafted translation rules written by human experts, but rather on learned statistical models that translate a source language to a target language. These models are typically generated from large, parallel corpora containing copies of text in both the source and target languages. The co-occurrence of words across languages in parallel corpora allows the creation of translation rules that specify the probability of translating words o...
Statistical machine translation systems are usually trained on large amounts of bilingual text and o...
Current machine translation (MT) systems are still not perfect. In practice, the output from these s...
Machine translation offers the challenge of automatically translating a text from one natural langu...
Previously, statistical machine translation (SMT) models have been estimated from parallel corpora, ...
Traditionally, statistical machine translation systems have relied on parallel bi-lingual data to tr...
In the past few decades machine translation research has made major progress. A researcher now has a...
Data-driven machine translation paradigms—which use machine learning to create translation models th...
Previously, statistical machine translation (SMT) models have been estimated from parallel corpora, ...
Translation models used for statistical machine translation are compiled from parallel corpora that ...
Abstract The overwhelming majority of the languages in the world are spoken by less than 50 million ...
none1noFor almost two decades now, mainstream corpus-based research in descriptive translation studi...
Machine translation (MT), as a high level application of natural language pro-cessing (NLP), is a po...
In this paper, we present a new hybridization approach consisting of enriching the phrase table of a...
This article presents the results of the research project ProjecTA, which attempts to bring machine ...
In recent years, significant improvements have been achieved in statistical machine translation (MT)...
Statistical machine translation systems are usually trained on large amounts of bilingual text and o...
Current machine translation (MT) systems are still not perfect. In practice, the output from these s...
Machine translation offers the challenge of automatically translating a text from one natural langu...
Previously, statistical machine translation (SMT) models have been estimated from parallel corpora, ...
Traditionally, statistical machine translation systems have relied on parallel bi-lingual data to tr...
In the past few decades machine translation research has made major progress. A researcher now has a...
Data-driven machine translation paradigms—which use machine learning to create translation models th...
Previously, statistical machine translation (SMT) models have been estimated from parallel corpora, ...
Translation models used for statistical machine translation are compiled from parallel corpora that ...
Abstract The overwhelming majority of the languages in the world are spoken by less than 50 million ...
none1noFor almost two decades now, mainstream corpus-based research in descriptive translation studi...
Machine translation (MT), as a high level application of natural language pro-cessing (NLP), is a po...
In this paper, we present a new hybridization approach consisting of enriching the phrase table of a...
This article presents the results of the research project ProjecTA, which attempts to bring machine ...
In recent years, significant improvements have been achieved in statistical machine translation (MT)...
Statistical machine translation systems are usually trained on large amounts of bilingual text and o...
Current machine translation (MT) systems are still not perfect. In practice, the output from these s...
Machine translation offers the challenge of automatically translating a text from one natural langu...