Independence between sentences is an assumption deeply entrenched in the models and algorithms used for statistical machine translation (SMT), particularly in the popular dynamic programming beam search decoding algorithm. This restriction is an obstacle to research on more sophisticated discourse-level models for SMT. We propose a stochastic local search decoding method for phrase-based SMT, which permits free document-wide dependencies in the models. We explore the stability and the search parameters of this method and demonstrate that it can be successfully used to optimise a document-level semantic language model
The combinatorial space of translation derivations in phrase-based statistical ma-chine translation ...
Defining the reordering search space is a crucial issue in phrase-based SMT between distant language...
In this paper, we present a novel training method for a localized phrase-based predic-tion model for...
This thesis addresses the technical and linguistic aspects of discourse-level processing in phrase-b...
In this paper we focus on the incremental decoding for a statistical phrase-based ma-chine translati...
Statistical machine translation, the task of translating text from one natural language into another...
The BLEU scores and translation fluency for the current state-of-the-art SMT systems based on IBM mo...
© 2014 Association for Computational Linguistics. The combinatorial space of translation derivations...
Search is a central component of any statistical ma-chine translation system. We describe the search...
An efficient decoding algorithm is a cru-cial element of any statistical machine translation system....
Simple and Efficient Model Filtering in Statistical Machine Translation Data availability and distri...
We present an approach to feature weight optimization for document-level decoding. This is an essent...
Statistical Machine Translation (SMT) is an evolving field where many techniques in Syntactic Patter...
Abstract Data availability and distributed computing techniques have allowed statistical machine tra...
In this paper we investigate the technique of extending the Moses Statistical Machine Translation (S...
The combinatorial space of translation derivations in phrase-based statistical ma-chine translation ...
Defining the reordering search space is a crucial issue in phrase-based SMT between distant language...
In this paper, we present a novel training method for a localized phrase-based predic-tion model for...
This thesis addresses the technical and linguistic aspects of discourse-level processing in phrase-b...
In this paper we focus on the incremental decoding for a statistical phrase-based ma-chine translati...
Statistical machine translation, the task of translating text from one natural language into another...
The BLEU scores and translation fluency for the current state-of-the-art SMT systems based on IBM mo...
© 2014 Association for Computational Linguistics. The combinatorial space of translation derivations...
Search is a central component of any statistical ma-chine translation system. We describe the search...
An efficient decoding algorithm is a cru-cial element of any statistical machine translation system....
Simple and Efficient Model Filtering in Statistical Machine Translation Data availability and distri...
We present an approach to feature weight optimization for document-level decoding. This is an essent...
Statistical Machine Translation (SMT) is an evolving field where many techniques in Syntactic Patter...
Abstract Data availability and distributed computing techniques have allowed statistical machine tra...
In this paper we investigate the technique of extending the Moses Statistical Machine Translation (S...
The combinatorial space of translation derivations in phrase-based statistical ma-chine translation ...
Defining the reordering search space is a crucial issue in phrase-based SMT between distant language...
In this paper, we present a novel training method for a localized phrase-based predic-tion model for...