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MOLTO’s goal is to develop tools for web content providers to translate texts between multiple languages in real
time with high quality. Languages are separate modules in the tool and can be varied; prototypes covering a
majority of the EU’s 23 official languages will be built.
GF - Grammatical Framework
The core of a MOLTO translation system is a multilingual GF grammar
where meaning-preserving translations are obtained as composition of
parsing and generation via the abstract syntax, an interlingua. GF is a
framework for interlinguas in which the basic linguistic details of
languages, inflectional morphology and syntactic combination
functions, are provided via the Resource Grammar Library.
MOLTO will further improve grammar engineering in GF by:
❖ Integrated Development Environment to use the RGL and to
manage large projects;
❖ Example-based grammar writing support to bootstrap a grammar
from a set of example translations.
Statistical Machine Translation
MOLTO will develop and evaluate combination approaches to
integrate grammar-based and SMT models in a hybrid, robust MT
system. At least four variants will be studied:
❖ baseline: cascade of independent MT systems;
❖ hard integration: GF partial output is fixed in a regular SMT
decoding;
❖ soft integration I: GF partial output, as phrase pairs, is integrated
as a discriminative probability feature model in a phrase-based
SMT system;
❖ soft integration II: GF partial output, as tree fragment pairs, is
integrated as a discriminative probability model in a syntax-based
SMT system.
OWL Ontologies
MOLTO sees ontologies as a way to formalize interlinguas in specific
domains. Based on this observation, it will carry out research to
develop two-way grammar-ontology interoperability that will bridge
natural language and formal knowledge. The resulting MOLTO
infrastructure will allow knowledge modeling, semantic indexing and
retrieval using natural language. The engine will perform semi-
automatic creation of abstract grammars from ontologies; derive
ontologies from grammars, and retrieve instance level knowledge from/
in natural language by first transforming queries to semantic queries,
and secondly by expressing the resulting knowledge in natural
language.
molto-project.eu
twitter.com/moltoproject
M LTOOnon multa, sed multum
Multilingual On-line Translation
Tools and Resources
delivered by MOLTO
will be distributed also
through
FP7- 247914 at a glance
ICT-2009.2.2 - Language based interaction
Duration: 36 months
Start date: 1 March 2010
End date: 28 February 2013
EU funding: 2.3 Millions €
HowFar : Place -> Question;
Zoo : PlaceKind;
HowFar(Zoo)
Zoo = mkPlace (mkN "zoo" masculine) dative;
HowFar place = mkQS(mkQCl what_distance_IAdv place.name);
À quelle distance est le zoo?
Zoo = mkPlace (mkN "djurpark" "djurparker") "i";
HowFar place = mkQS(mkQCl far_IAdv(mkCl(mkVP place.to)));
Hur långt är det till djurparken?
parse linearize

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MOLTO poster for META Forum, Brussels 2010, Belgium.

  • 1. MOLTO’s goal is to develop tools for web content providers to translate texts between multiple languages in real time with high quality. Languages are separate modules in the tool and can be varied; prototypes covering a majority of the EU’s 23 official languages will be built. GF - Grammatical Framework The core of a MOLTO translation system is a multilingual GF grammar where meaning-preserving translations are obtained as composition of parsing and generation via the abstract syntax, an interlingua. GF is a framework for interlinguas in which the basic linguistic details of languages, inflectional morphology and syntactic combination functions, are provided via the Resource Grammar Library. MOLTO will further improve grammar engineering in GF by: ❖ Integrated Development Environment to use the RGL and to manage large projects; ❖ Example-based grammar writing support to bootstrap a grammar from a set of example translations. Statistical Machine Translation MOLTO will develop and evaluate combination approaches to integrate grammar-based and SMT models in a hybrid, robust MT system. At least four variants will be studied: ❖ baseline: cascade of independent MT systems; ❖ hard integration: GF partial output is fixed in a regular SMT decoding; ❖ soft integration I: GF partial output, as phrase pairs, is integrated as a discriminative probability feature model in a phrase-based SMT system; ❖ soft integration II: GF partial output, as tree fragment pairs, is integrated as a discriminative probability model in a syntax-based SMT system. OWL Ontologies MOLTO sees ontologies as a way to formalize interlinguas in specific domains. Based on this observation, it will carry out research to develop two-way grammar-ontology interoperability that will bridge natural language and formal knowledge. The resulting MOLTO infrastructure will allow knowledge modeling, semantic indexing and retrieval using natural language. The engine will perform semi- automatic creation of abstract grammars from ontologies; derive ontologies from grammars, and retrieve instance level knowledge from/ in natural language by first transforming queries to semantic queries, and secondly by expressing the resulting knowledge in natural language. molto-project.eu twitter.com/moltoproject M LTOOnon multa, sed multum Multilingual On-line Translation Tools and Resources delivered by MOLTO will be distributed also through FP7- 247914 at a glance ICT-2009.2.2 - Language based interaction Duration: 36 months Start date: 1 March 2010 End date: 28 February 2013 EU funding: 2.3 Millions € HowFar : Place -> Question; Zoo : PlaceKind; HowFar(Zoo) Zoo = mkPlace (mkN "zoo" masculine) dative; HowFar place = mkQS(mkQCl what_distance_IAdv place.name); À quelle distance est le zoo? Zoo = mkPlace (mkN "djurpark" "djurparker") "i"; HowFar place = mkQS(mkQCl far_IAdv(mkCl(mkVP place.to))); Hur långt är det till djurparken? parse linearize