Neural machine translation (NMT) models are typically trained with fixed-size input and output vocabularies, which creates an important bottleneck on their accuracy and generalization capability. As a solution, various studies proposed segmenting words into sub-word units and performing translation at the sub-lexical level. However, statistical word segmentation methods have recently shown to be prone to morphological errors, which can lead to inaccurate translations. In this paper, we propose to overcome this problem by replacing the source-language embedding layer of NMT with a bi-directional recurrent neural network that generates compositional representations of the input at any desired level of granularity. We test our approach in a lo...
This paper presents a scalable method for integrating compositional morphological representations in...
n the last years, deep learning algorithms have highly revolutionized several areas including speech...
In the last years, deep learning algorithms have highly revolutionized several areas including speec...
Neural machine translation (NMT) mod- els are typically trained with fixed-size input and output voc...
Translation into morphologically-rich languages challenges neural machine translation (NMT) models w...
This thesis addresses some of the challenges of translating morphologically rich languages (MRLs). W...
Treating morphologically complex words (MCWs) as atomic units in translation would not yield a desi...
The state of the art of handling rich morphology in neural machine translation (NMT) is to break wor...
Neural Machine Translation (NMT) models generally perform translation using a fixed-size lexical voc...
Neural Machine Translation (MT) has reached state-of-the-art results. However, one of the main chall...
Out-of-vocabulary words present a great challenge for Machine Translation. Recently various characte...
A morphologically complex word (MCW) is a hierarchical constituent with meaning-preserving subunits,...
Neural machine translation (NMT) models are conventionally trained with fixed-size vocabu- laries to...
Recently, neural machine translation (NMT) has emerged as a powerful alternative to conventional st...
Language models play an important role in many natural language processing tasks. In this thesis, we...
This paper presents a scalable method for integrating compositional morphological representations in...
n the last years, deep learning algorithms have highly revolutionized several areas including speech...
In the last years, deep learning algorithms have highly revolutionized several areas including speec...
Neural machine translation (NMT) mod- els are typically trained with fixed-size input and output voc...
Translation into morphologically-rich languages challenges neural machine translation (NMT) models w...
This thesis addresses some of the challenges of translating morphologically rich languages (MRLs). W...
Treating morphologically complex words (MCWs) as atomic units in translation would not yield a desi...
The state of the art of handling rich morphology in neural machine translation (NMT) is to break wor...
Neural Machine Translation (NMT) models generally perform translation using a fixed-size lexical voc...
Neural Machine Translation (MT) has reached state-of-the-art results. However, one of the main chall...
Out-of-vocabulary words present a great challenge for Machine Translation. Recently various characte...
A morphologically complex word (MCW) is a hierarchical constituent with meaning-preserving subunits,...
Neural machine translation (NMT) models are conventionally trained with fixed-size vocabu- laries to...
Recently, neural machine translation (NMT) has emerged as a powerful alternative to conventional st...
Language models play an important role in many natural language processing tasks. In this thesis, we...
This paper presents a scalable method for integrating compositional morphological representations in...
n the last years, deep learning algorithms have highly revolutionized several areas including speech...
In the last years, deep learning algorithms have highly revolutionized several areas including speec...