The paper describes a contextual environment using the Self-Organizing Map, which can model a semantic agent (SOMAgent) that learns the correct meaning of a word used in context in order to deal with specific phenomena such as ambiguity, and to generate more precise alignments that can improve the first choice of the Statistical Machine Translation system giving linguistic knowledge
Machine translation is the application of machines to translate text or speech from one natural lang...
We present a method for improving statistical machine translation performance by using linguisticall...
Statistical machine translation is based on the idea to extract information from bilingual corpora, ...
The paper describes the process by which the word alignment task performed within SOMAgent works in ...
This paper presents a method for creating interlingual word-to-word or phrase-to-phrase mappings bet...
In the framework of statistical machine translation (SMT), correspondences between the words in the ...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
We present a method for improving word alignment for statistical syntax-based ma-chine translation t...
In this thesis, we show that reordering Statistical Machine Translation (SMT) output to match its se...
Statistical Machine Translation (SMT) is based on alignment models which learn from bilingual corpor...
The main problems of statistical word alignment lie in the facts that source words can only be align...
The goal of a machine translation (MT) system is to automatically translate a document written in so...
This paper describes how word alignment information makes machine translation more efficient. Follow...
Machine translation is the task of automatically translating a text from one natural language into a...
Machine translation is the application of machines to translate text or speech from one natural lang...
We present a method for improving statistical machine translation performance by using linguisticall...
Statistical machine translation is based on the idea to extract information from bilingual corpora, ...
The paper describes the process by which the word alignment task performed within SOMAgent works in ...
This paper presents a method for creating interlingual word-to-word or phrase-to-phrase mappings bet...
In the framework of statistical machine translation (SMT), correspondences between the words in the ...
2014-07-28The goal of machine translation is to translate from one natural language into another usi...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
We present a method for improving word alignment for statistical syntax-based ma-chine translation t...
In this thesis, we show that reordering Statistical Machine Translation (SMT) output to match its se...
Statistical Machine Translation (SMT) is based on alignment models which learn from bilingual corpor...
The main problems of statistical word alignment lie in the facts that source words can only be align...
The goal of a machine translation (MT) system is to automatically translate a document written in so...
This paper describes how word alignment information makes machine translation more efficient. Follow...
Machine translation is the task of automatically translating a text from one natural language into a...
Machine translation is the application of machines to translate text or speech from one natural lang...
We present a method for improving statistical machine translation performance by using linguisticall...
Statistical machine translation is based on the idea to extract information from bilingual corpora, ...