Phrase-based decoding is conceptually simple and straightforward to implement, at the cost of drastically oversimplified reordering models. Syntactically aware models make it possible to capture linguistically relevant relationships in order to improve word order, but they can be more complex to implement and optimise. In this paper, we explore a new middle ground between phrase-based and syntactically informed statistical MT, in the form of a model that supplements conventional, non-hierarchical phrase-based techniques with linguistically informed reordering based on syntactic dependency trees. The key idea is to exploit linguistically-informed hierarchical structures only for those dependencies that cannot be captured within a...
Statistical Machine Translation (SMT) systems rely heavily on the quality of the phrase pairs induce...
Statistical Machine Translation (SMT) systems rely heavily on the quality of the phrase pairs induce...
We present a novel approach to word reordering which successfully integrates syntactic structural kn...
Phrase-based decoding is conceptually simple and straightforward to implement, at the cost of drasti...
Phrase-based decoding is conceptually simple and straightforward to implement, at the cost of drasti...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
We describe an approach to word ordering using modelling techniques from statistical machine transla...
While phrase-based statistical machine trans-lation systems currently deliver state-of-the-art perfo...
Abstract When aligning very different language pairs, the most important needs are the use of struct...
AbstractIn this paper, we present a reordering model based on Maximum Entropy with local and non-loc...
[[abstract]]We introduce a method for learning to reorder source sentences. In our approach, sentenc...
Lexicalized reordering model plays a central role in phrase-based statistical machine translation sy...
We present a translation model based on dependency trees. The model adopts a tree to string approach...
Statistical Machine Translation (SMT) systems rely heavily on the quality of the phrase pairs induce...
Statistical Machine Translation (SMT) systems rely heavily on the quality of the phrase pairs induce...
We present a novel approach to word reordering which successfully integrates syntactic structural kn...
Phrase-based decoding is conceptually simple and straightforward to implement, at the cost of drasti...
Phrase-based decoding is conceptually simple and straightforward to implement, at the cost of drasti...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
In this paper, we start with the existing idea of taking reordering rules automatically derived from...
We describe an approach to word ordering using modelling techniques from statistical machine transla...
While phrase-based statistical machine trans-lation systems currently deliver state-of-the-art perfo...
Abstract When aligning very different language pairs, the most important needs are the use of struct...
AbstractIn this paper, we present a reordering model based on Maximum Entropy with local and non-loc...
[[abstract]]We introduce a method for learning to reorder source sentences. In our approach, sentenc...
Lexicalized reordering model plays a central role in phrase-based statistical machine translation sy...
We present a translation model based on dependency trees. The model adopts a tree to string approach...
Statistical Machine Translation (SMT) systems rely heavily on the quality of the phrase pairs induce...
Statistical Machine Translation (SMT) systems rely heavily on the quality of the phrase pairs induce...
We present a novel approach to word reordering which successfully integrates syntactic structural kn...