AbstractSynchronous context-free grammars (SCFGs) can be learned from parallel texts that are annotated with target-side syntax, and can produce translations by building target-side syntactic trees from source strings. Ideally, producing syntactic trees would entail that the translation is grammatically well-formed, but in reality, this is often not the case. Focusing on translation into German, we discuss various ways in which string-to-tree translation models over- or undergeneralise. We show how these problems can be addressed by choosing a suitable parser and modifying its output, by introducing linguistic constraints that enforce morphological agreement and constrain subcategorisation, and by modelling the productive generation of Germ...
We show that phrase structures in Penn Treebank style parses are not optimal for syntaxbased machine...
<p>Recent research has shown clear improvement in translation quality by exploiting linguistic synta...
Though phrase-based SMT has achieved high translation quality, it still lacks of generaliza-tion abi...
AbstractSynchronous context-free grammars (SCFGs) can be learned from parallel texts that are annota...
Statistical MT has made great progress in the last few years, but current translation models are wea...
Syntax-based approaches to statistical MT require syntax-aware methods for acquiring their underlyin...
The more expressive and flexible a base formalism for machine translation is, the less efficient par...
SCFG-based statistical MT models have proven effective for modelling syntactic aspects of translatio...
Phrase-based statistical machine translation (PBSMT) systems represent the dominant approach in MT t...
Statistical machine translation (SMT) should benefit from linguistic information to improve perform...
2011-10-27Machine Translation (MT) is the task of translating a document from a source language (e.g...
Restricting the input or the output of a grammar-induced translation to a given set of trees plays a...
We present a method for improving statistical machine translation performance by using linguisticall...
Machine Translation (MT) for language pairs with long distance dependencies and word reordering, su...
Statistical Machine Translation from English to German is challenging due to the mor-phological rich...
We show that phrase structures in Penn Treebank style parses are not optimal for syntaxbased machine...
<p>Recent research has shown clear improvement in translation quality by exploiting linguistic synta...
Though phrase-based SMT has achieved high translation quality, it still lacks of generaliza-tion abi...
AbstractSynchronous context-free grammars (SCFGs) can be learned from parallel texts that are annota...
Statistical MT has made great progress in the last few years, but current translation models are wea...
Syntax-based approaches to statistical MT require syntax-aware methods for acquiring their underlyin...
The more expressive and flexible a base formalism for machine translation is, the less efficient par...
SCFG-based statistical MT models have proven effective for modelling syntactic aspects of translatio...
Phrase-based statistical machine translation (PBSMT) systems represent the dominant approach in MT t...
Statistical machine translation (SMT) should benefit from linguistic information to improve perform...
2011-10-27Machine Translation (MT) is the task of translating a document from a source language (e.g...
Restricting the input or the output of a grammar-induced translation to a given set of trees plays a...
We present a method for improving statistical machine translation performance by using linguisticall...
Machine Translation (MT) for language pairs with long distance dependencies and word reordering, su...
Statistical Machine Translation from English to German is challenging due to the mor-phological rich...
We show that phrase structures in Penn Treebank style parses are not optimal for syntaxbased machine...
<p>Recent research has shown clear improvement in translation quality by exploiting linguistic synta...
Though phrase-based SMT has achieved high translation quality, it still lacks of generaliza-tion abi...