A crucial issue in statistical natural language processing is the issue of sparsity, namely the fact that in a given learning corpus, most linguistic events have low occurrence frequencies, and that an infinite number of structures allowed by a language will not be observed in the corpus. Neural models have already contributed to solving this issue by inferring continuous word representations. These continuous representations allow to structure the lexicon by inducing semantic or syntactic similarity between words. However, current neural models only partially solve the sparsity issue, due to the fact that they require a vectorial representation for every word in the lexicon, but are unable to infer sensible representations for unseen words...
For languages with fast vocabulary growth and limited resources, data sparsity leads to challenges i...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
Abstract Models of morphologically rich languages suffer from data sparsity when words are treated a...
The purpose of language models is in general to capture and to model regularities of language, there...
Ces dernières années, les méthodes d'apprentissage profond ont permis de créer des modèles neuronaux...
Communication between humans across the lands is difficult due to the diversity of languages. Machin...
Treating morphologically complex words (MCWs) as atomic units in translation would not yield a desi...
Translation into morphologically-rich languages challenges neural machine translation (NMT) models w...
Aplicat embargament des de la data de defensa fins a l'1 de febrer e 2021Language is an organic cons...
This thesis addresses some of the challenges of translating morphologically rich languages (MRLs). W...
Summary : A supralexical model of morphological representation for French derivational morphology Th...
This work presents an algorithm for the unsupervised learning, or induction, of a simple morphology ...
Lexical sparsity is a major challenge for machine translation into morphologically rich languages. W...
International audienceIn this article, we introduce a new technique for constructing wide-coverage m...
In this paper, a novel algorithm for incorporating morpho-logical knowledge into statistical machine...
For languages with fast vocabulary growth and limited resources, data sparsity leads to challenges i...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
Abstract Models of morphologically rich languages suffer from data sparsity when words are treated a...
The purpose of language models is in general to capture and to model regularities of language, there...
Ces dernières années, les méthodes d'apprentissage profond ont permis de créer des modèles neuronaux...
Communication between humans across the lands is difficult due to the diversity of languages. Machin...
Treating morphologically complex words (MCWs) as atomic units in translation would not yield a desi...
Translation into morphologically-rich languages challenges neural machine translation (NMT) models w...
Aplicat embargament des de la data de defensa fins a l'1 de febrer e 2021Language is an organic cons...
This thesis addresses some of the challenges of translating morphologically rich languages (MRLs). W...
Summary : A supralexical model of morphological representation for French derivational morphology Th...
This work presents an algorithm for the unsupervised learning, or induction, of a simple morphology ...
Lexical sparsity is a major challenge for machine translation into morphologically rich languages. W...
International audienceIn this article, we introduce a new technique for constructing wide-coverage m...
In this paper, a novel algorithm for incorporating morpho-logical knowledge into statistical machine...
For languages with fast vocabulary growth and limited resources, data sparsity leads to challenges i...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
Abstract Models of morphologically rich languages suffer from data sparsity when words are treated a...