The purpose of language models is in general to capture and to model regularities of language, thereby capturing morphological, syntactical and distributional properties of word sequences in a given language. They play an important role in many successful applications of Natural Language Processing, such as Automatic Speech Recognition, Machine Translation and Information Extraction. The most successful approaches to date are based on n-gram assumption and the adjustment of statistics from the training data by applying smoothing and back-off techniques, notably Kneser-Ney technique, introduced twenty years ago. In this way, language models predict a word based on its n-1 previous words. In spite of their prevalence, conventional n-gram base...
In recent years, deep learning methods allowed the creation of neural models that are able to proces...
Automatic speech récognition currently arouses a great interest: it can be considered as a significa...
Word Sense Disambiguation (WSD) and Machine Translation (MT) are two central and among the oldest ta...
Les modèles de langage ont pour but de caractériser et d'évaluer la qualité des énoncés en langue na...
A crucial issue in statistical natural language processing is the issue of sparsity, namely the fact...
Durant ces dernières années, les architectures de réseaux de neurones (RN) ont été appliquées avec s...
The role of a stochastic language model is to give the best estimation possible of the probability o...
Language modeling has been widely used in the application of natural language processing, and there...
Our goal is to develop robust language models for speech recognition. These models have to predict a...
Statistical machine translation systems are based on one or more translation mod-els and a language ...
Communication between humans across the lands is difficult due to the diversity of languages. Machin...
Ces dernières années, les méthodes d'apprentissage profond ont permis de créer des modèles neuronaux...
Les plongements de mots générés par les modèles de langue neuronaux encodent des informations riches...
In recent years, neural methods for Natural Language Processing (NLP) have consistently and repeated...
Natural language generation is a process of generating a natural language text from some input. This...
In recent years, deep learning methods allowed the creation of neural models that are able to proces...
Automatic speech récognition currently arouses a great interest: it can be considered as a significa...
Word Sense Disambiguation (WSD) and Machine Translation (MT) are two central and among the oldest ta...
Les modèles de langage ont pour but de caractériser et d'évaluer la qualité des énoncés en langue na...
A crucial issue in statistical natural language processing is the issue of sparsity, namely the fact...
Durant ces dernières années, les architectures de réseaux de neurones (RN) ont été appliquées avec s...
The role of a stochastic language model is to give the best estimation possible of the probability o...
Language modeling has been widely used in the application of natural language processing, and there...
Our goal is to develop robust language models for speech recognition. These models have to predict a...
Statistical machine translation systems are based on one or more translation mod-els and a language ...
Communication between humans across the lands is difficult due to the diversity of languages. Machin...
Ces dernières années, les méthodes d'apprentissage profond ont permis de créer des modèles neuronaux...
Les plongements de mots générés par les modèles de langue neuronaux encodent des informations riches...
In recent years, neural methods for Natural Language Processing (NLP) have consistently and repeated...
Natural language generation is a process of generating a natural language text from some input. This...
In recent years, deep learning methods allowed the creation of neural models that are able to proces...
Automatic speech récognition currently arouses a great interest: it can be considered as a significa...
Word Sense Disambiguation (WSD) and Machine Translation (MT) are two central and among the oldest ta...