The task of automatic machine translation (MT) is the focus of a huge variety of active research efforts, both because of the intrinsic utility of this difficult task, and the theoretical and linguistic insights that arise from modeling relationships between natural languages. However, MT systems that leverage syntactic information are only recently becoming practical, and in a typical system of this sort, syntactic information is generated by monolingual parsers; the task of explicitly modeling syntactic relationships between target and source languages is yet to be fully explored.This thesis investigates the problem of finding syntactic parse trees of target and/or source sentences that are more appropriate for use in a syntactic MT syste...
We introduce a word alignment framework that facilitates the incorporation of syntax encoded in bili...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
The article describes a method that enhances translation performance of language pairs with a less u...
Training a state-of-the-art syntax-based statistical machine translation (MT) system to translate fr...
Syntactic machine translation systems extract rules from bilingual, word-aligned, syntacti-cally par...
Tree-based approaches to alignment model translation as a sequence of probabilistic operations tra...
We introduce a word alignment framework that facilitates the incorporation of syntax en-coded in bil...
Tree-based approaches to alignment model translation as a sequence of probabilistic op-erations tran...
Syntax-based approaches to statistical MT require syntax-aware methods for acquiring their underlyin...
Abstract. We propose a lexicalized syntactic reordering framework for cross-language word aligning a...
In machine translation, the alignment of corpora has evolved into a mature research area, aimed at p...
This article presents a probabilistic sub-tree alignment model and its application to tree-to-tree m...
In the framework of statistical machine translation (SMT), correspondences between the words in the ...
We describe a transformation-based learning method for learning a sequence of mono-lingual tree tran...
We present a method for improving word alignment for statistical syntax-based ma-chine translation t...
We introduce a word alignment framework that facilitates the incorporation of syntax encoded in bili...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
The article describes a method that enhances translation performance of language pairs with a less u...
Training a state-of-the-art syntax-based statistical machine translation (MT) system to translate fr...
Syntactic machine translation systems extract rules from bilingual, word-aligned, syntacti-cally par...
Tree-based approaches to alignment model translation as a sequence of probabilistic operations tra...
We introduce a word alignment framework that facilitates the incorporation of syntax en-coded in bil...
Tree-based approaches to alignment model translation as a sequence of probabilistic op-erations tran...
Syntax-based approaches to statistical MT require syntax-aware methods for acquiring their underlyin...
Abstract. We propose a lexicalized syntactic reordering framework for cross-language word aligning a...
In machine translation, the alignment of corpora has evolved into a mature research area, aimed at p...
This article presents a probabilistic sub-tree alignment model and its application to tree-to-tree m...
In the framework of statistical machine translation (SMT), correspondences between the words in the ...
We describe a transformation-based learning method for learning a sequence of mono-lingual tree tran...
We present a method for improving word alignment for statistical syntax-based ma-chine translation t...
We introduce a word alignment framework that facilitates the incorporation of syntax encoded in bili...
UnrestrictedAll state of the art statistical machine translation systems and many example-based mach...
The article describes a method that enhances translation performance of language pairs with a less u...