[EN] A language model based in continuous representations of words is presented, which has been applied to a statistical machine translation task. This model is implemented by means of a bidirectional recurrent neural network, which is able to take into account both the past and the future context of a word in order to perform predictions. Due to its high temporal cost at training time, for obtaining relevant training data an instance selection algorithm is used, which aims to capture useful information for translating a test set. Obtained results show that the neural model trained with the selected data outperforms the results obtained by an n-gram language model[ES] Se presenta un modelo de lenguaje basado en representaciones cont...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
This work is framed into the Statistical Machine Translation field, more specifically into the lang...
We present a joint language and transla-tion model based on a recurrent neural net-work which predic...
A language model based in continuous representations of words is presented, which has been applied t...
This work presents two different trans-lation models using recurrent neural net-works. The first one...
[EN] From the outset, automatic translation was dominated by systems based on linguistic informatio...
[ANGLÈS] This work focuses on building and testing statistical language models based on recurrent ne...
In this paper we present how to estimate a continuous space Language Model with a Neural Network to ...
Este trabajo describe un sistema de traducción que integra n-gramas conexionistas en la etapa de dec...
The quality of translations produced by statistical machine translation (SMT) systems crucially depe...
The language model of the target language plays an impor-tant role in statistical machine translatio...
Statistical machine translation systems are based on one or more translation mod-els and a language ...
In this paper we present a survey on the application of recurrent neural networks to the task of sta...
In this paper, we propose a novel neu-ral network model called RNN Encoder– Decoder that consists of...
AbstractIn this paper, we present a survey on the application of recurrent neural networks to the ta...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
This work is framed into the Statistical Machine Translation field, more specifically into the lang...
We present a joint language and transla-tion model based on a recurrent neural net-work which predic...
A language model based in continuous representations of words is presented, which has been applied t...
This work presents two different trans-lation models using recurrent neural net-works. The first one...
[EN] From the outset, automatic translation was dominated by systems based on linguistic informatio...
[ANGLÈS] This work focuses on building and testing statistical language models based on recurrent ne...
In this paper we present how to estimate a continuous space Language Model with a Neural Network to ...
Este trabajo describe un sistema de traducción que integra n-gramas conexionistas en la etapa de dec...
The quality of translations produced by statistical machine translation (SMT) systems crucially depe...
The language model of the target language plays an impor-tant role in statistical machine translatio...
Statistical machine translation systems are based on one or more translation mod-els and a language ...
In this paper we present a survey on the application of recurrent neural networks to the task of sta...
In this paper, we propose a novel neu-ral network model called RNN Encoder– Decoder that consists of...
AbstractIn this paper, we present a survey on the application of recurrent neural networks to the ta...
Virtually any modern speech recognition system relies on count-based language models. In this thesis...
This work is framed into the Statistical Machine Translation field, more specifically into the lang...
We present a joint language and transla-tion model based on a recurrent neural net-work which predic...