This paper focuses on the inference of structural transfer rules for shallow-transfer machine translation (MT). Transfer rules are generated from alignment templates, like those used in statistical MT, that have been extracted from parallel corpora and extended with a set of restrictions that control their application. The experiments conducted using the open-source MT platform Apertium show that there is a clear improvement in translation quality as compared to word-for-word translation (when no transfer rules are used), and that the resulting translation quality is very close to the one obtained using hand-coded transfer rules. The method we present is entirely unsupervised and benefits from information in the rest of modules of the MT sy...
Draft Version Although Machine Translation (MT) has advanced recently for language pairs with large ...
This paper describes the system jointly de-veloped by members of the Departament de Llenguatges i Si...
This paper describes the system jointly de-veloped by members of the Departament de Llenguatges i Si...
This paper focuses on the infer-ence of structural transfer rules for shallow-transfer machine trans...
This paper focuses on the inference of structural transfer rules for shallow-transfer machine transl...
This paper focuses on the inference of structural transfer rules for shallow-transfer machine transl...
This paper describes a method for the automatic inference of structural transfer rules to be used in...
This paper describes a method for the automatic inference of structural transfer rules to be used in...
Statistical and rule-based methods are complementary approaches to machine translation (MT) that hav...
When building rule-based machine translation systems, a considerable human effort is needed to code ...
The transfer-based approach to machine translation (MT) captures structural transfers between the so...
This paper presents ruLearn, an open-source toolkit for the automatic inference of rules for shallow...
Statistical and rule-based methods are complementary approaches to machine translation (MT) that hav...
This paper presents ruLearn, an open-source toolkit for the automatic inference of rules for shallow...
In this paper, we present an open-source toolkit to enrich a phrase-based statistical machine transl...
Draft Version Although Machine Translation (MT) has advanced recently for language pairs with large ...
This paper describes the system jointly de-veloped by members of the Departament de Llenguatges i Si...
This paper describes the system jointly de-veloped by members of the Departament de Llenguatges i Si...
This paper focuses on the infer-ence of structural transfer rules for shallow-transfer machine trans...
This paper focuses on the inference of structural transfer rules for shallow-transfer machine transl...
This paper focuses on the inference of structural transfer rules for shallow-transfer machine transl...
This paper describes a method for the automatic inference of structural transfer rules to be used in...
This paper describes a method for the automatic inference of structural transfer rules to be used in...
Statistical and rule-based methods are complementary approaches to machine translation (MT) that hav...
When building rule-based machine translation systems, a considerable human effort is needed to code ...
The transfer-based approach to machine translation (MT) captures structural transfers between the so...
This paper presents ruLearn, an open-source toolkit for the automatic inference of rules for shallow...
Statistical and rule-based methods are complementary approaches to machine translation (MT) that hav...
This paper presents ruLearn, an open-source toolkit for the automatic inference of rules for shallow...
In this paper, we present an open-source toolkit to enrich a phrase-based statistical machine transl...
Draft Version Although Machine Translation (MT) has advanced recently for language pairs with large ...
This paper describes the system jointly de-veloped by members of the Departament de Llenguatges i Si...
This paper describes the system jointly de-veloped by members of the Departament de Llenguatges i Si...