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Apertium
Apertium is a free/open-source rule-based machine translation platform. It is free software and released under the terms of the GNU General Public…
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C++
Constraint Grammar
Content management system
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Papers overview
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2019
2019
Apertium-fin-eng–Rule-based Shallow Machine Translation for WMT 2019 Shared Task
Flammie A. Pirinen
Conference on Machine Translation
2019
Corpus ID: 201740458
In this paper we describe a rule-based, bi-directional machine translation system for the Finnish—English language pair. The…
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2018
2018
The apertium bilingual dictionaries on the web of data
J. Gracia
,
Marta Villegas
,
Asunción Gómez-Pérez
,
Núria Bel
Semantic Web
2018
Corpus ID: 7409708
Bilingual electronic dictionaries contain collections of lexical entries in two languages, with explicitly declared translation…
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2015
2015
Content Translation: Computer assisted translation tool for Wikipedia articles
Niklas Laxström
,
Pau Giner
,
Santhosh Thottingal
2015
Corpus ID: 265098143
The quality and quantity of articles in each Wikipedia language varies greatly. Translating from another Wikipedia is a natural…
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2015
2015
Unsupervised training of maximum-entropy models for lexical selection in rule-based machine translation
Francis M. Tyers
,
F. Sánchez-Martínez
,
M. Forcada
European Association for Machine Translation…
2015
Corpus ID: 3216227
This article presents a method of training maximum-entropy models to perform lexical selection in a rule-based machine…
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2015
2015
Enseigner la traduction humaine en s’inspirant de la traduction automatique.
Ilaria Cennamo
2015
Corpus ID: 170584783
Notre projet de recherche concerne l’etude de l’interaction homme-machine (H-M) en situation d’enseignement/apprentissage de la…
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Highly Cited
2011
Highly Cited
2011
Apertium: a free/open-source platform for rule-based machine translation
M. Forcada
,
Mireia Ginestí-Rosell
,
+6 authors
Francis M. Tyers
Machine Translation
2011
Corpus ID: 5698842
Apertium is a free/open-source platform for rule-based machine translation. It is being widely used to build machine translation…
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2010
2010
Automatic Generation of Bilingual Dictionaries Using Intermediary Languages and Comparable Corpora
Pablo Gamallo
,
José Ramom Pichel Campos
Conference on Intelligent Text Processing and…
2010
Corpus ID: 11679443
This paper outlines a strategy to build new bilingual dictionaries from existing resources. The method is based on two main tasks…
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2010
2010
Free/Open-Source Resources in the Apertium Platform for Machine Translation Research and Development
Francis M. Tyers
,
F. Sánchez-Martínez
,
Sergio Ortiz Rojas
,
M. Forcada
Prague Bulletin of Mathematical Linguistics
2010
Corpus ID: 42336773
Free/Open-Source Resources in the Apertium Platform for Machine Translation Research and Development This paper describes the…
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2009
2009
The Apertium machine translation platform: Five years on
M. Forcada
,
Francis M. Tyers
,
Gema Ramírez-Sánchez
FREEOPMT
2009
Corpus ID: 17851135
This paper describes Apertium: a free/open-source machine translation platform (engine, toolbox and data), its history, its…
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Highly Cited
2006
Highly Cited
2006
Automatic induction of bilingual resources from aligned parallel corpora: application to shallow-transfer machine translation
Helena de Medeiros Caseli
,
M. G. V. Nunes
,
M. Forcada
Machine Translation
2006
Corpus ID: 6289229
The availability of machine-readable bilingual linguistic resources is crucial not only for rule-based machine translation but…
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