This paper presents the University of Cambridge submission to WMT16. Motivated by the complementary nature of syntactical machine translation and neural machine translation (NMT), we exploit the synergies of Hiero and NMT in different combination schemes. Starting out with a simple neural lattice rescoring approach, we show that the Hiero lattices are often too narrow for NMT ensembles. Therefore, instead of a hard restriction of the NMT search space to the lattice, we propose to loosely couple NMT and Hiero by composition with a modified version of the edit distance transducer. The loose combination outperforms lattice rescoring, especially when using multiple NMT systems in an ensemble
An attentional mechanism has lately been used to improve neural machine transla-tion (NMT) by select...
Lexically constrained neural machine translation (NMT), which leverages pre-specified translation to...
Sharing source and target side vocabularies and word embeddings has been a popular practice in neura...
This paper presents the University of Cambridge submission to WMT16. Motivated by the complementary ...
We investigate the use of hierarchical phrase-based SMT lattices in end-to-end neural machine transl...
We present a novel scheme to combine neural machine translation (NMT) with traditional statistical m...
Though early successes of Statistical Machine Translation (SMT) systems are attributed in part to th...
This thesis develops a robust inventory of large-scale lattice rescoring methods that improve the qu...
Ensembling is a well-known technique in neural machine translation (NMT) to improve system performan...
The University of Cambridge submission to the WMT18 news translation task focuses on the combination...
Constrained translation has improved statistical machine translation (SMT) by combining it with tran...
Humans benefit from communication but suffer from language barriers. Machine translation (MT) aims t...
The recent advances introduced by neural machine translation (NMT) are rapidly expanding the applica...
The last few years have witnessed a surge in the interest of a new machine translation paradigm: neu...
We investigate adaptive ensemble weighting for Neural Machine Translation, addressing the case of im...
An attentional mechanism has lately been used to improve neural machine transla-tion (NMT) by select...
Lexically constrained neural machine translation (NMT), which leverages pre-specified translation to...
Sharing source and target side vocabularies and word embeddings has been a popular practice in neura...
This paper presents the University of Cambridge submission to WMT16. Motivated by the complementary ...
We investigate the use of hierarchical phrase-based SMT lattices in end-to-end neural machine transl...
We present a novel scheme to combine neural machine translation (NMT) with traditional statistical m...
Though early successes of Statistical Machine Translation (SMT) systems are attributed in part to th...
This thesis develops a robust inventory of large-scale lattice rescoring methods that improve the qu...
Ensembling is a well-known technique in neural machine translation (NMT) to improve system performan...
The University of Cambridge submission to the WMT18 news translation task focuses on the combination...
Constrained translation has improved statistical machine translation (SMT) by combining it with tran...
Humans benefit from communication but suffer from language barriers. Machine translation (MT) aims t...
The recent advances introduced by neural machine translation (NMT) are rapidly expanding the applica...
The last few years have witnessed a surge in the interest of a new machine translation paradigm: neu...
We investigate adaptive ensemble weighting for Neural Machine Translation, addressing the case of im...
An attentional mechanism has lately been used to improve neural machine transla-tion (NMT) by select...
Lexically constrained neural machine translation (NMT), which leverages pre-specified translation to...
Sharing source and target side vocabularies and word embeddings has been a popular practice in neura...