In recent years, the use of morphological decomposition strategies for Arabic Automatic Speech Recognition (ASR) has become increasingly popular. Systems trained on morphologically decomposed data are often used in combination with standard word-based approaches, and they have been found to yield consistent performance improvements. The present article contributes to this ongoing research endeavour by exploring the use of the 'Morphological Analysis and Disambiguation for Arabic' (MADA) tools for this purpose. System integration issues concerning language modelling and dictionary construction, as well as the estimation of pronunciation probabilities, are discussed. In particular, a novel solution for morpheme-to-word conversion is presented...
In this paper, we present ASMA, a fast and efficient system for automatic seg-mentation and fine gra...
The Arabic language is a collection of varieties, among which Modern Standard Arabic (MSA) has a spe...
In this paper, we present a powerful Arabic morphological analyzer and generator. The approach emplo...
Arabic has a large number of affixes that can modify a stem to form words. In automatic speech recog...
Language modelling for a morphologically complex language such as Arabic is a challenging task. Its ...
In this paper, we show the progress for Arabic speech recognition by incorporating contextual inform...
International audienceMorphological analysis is a crucial stage in natural language processing. For ...
In this paper two aspects of generating and using phonetic Arabic dictionaries are described. First,...
Arabic is a morphologically rich language which rarely displays diacritics. These two features of th...
Language modeling is a difficult problem for languages with rich morphology. In this paper we invest...
Language modeling for an inflected language such as Arabic poses new challenges for speech recognit...
We present MAGEAD, a morphological analyzer and generator for the Arabic language family. Our work i...
The analysis of Arabic morphology and the system will be the sole focus of this paper. It will be ca...
AbstractThis paper addresses the adaptation of Arabic speech recognition (ASR) systems to foreign ac...
We explore the application of memorybased learning to morphological analysis and part-of-speech ta...
In this paper, we present ASMA, a fast and efficient system for automatic seg-mentation and fine gra...
The Arabic language is a collection of varieties, among which Modern Standard Arabic (MSA) has a spe...
In this paper, we present a powerful Arabic morphological analyzer and generator. The approach emplo...
Arabic has a large number of affixes that can modify a stem to form words. In automatic speech recog...
Language modelling for a morphologically complex language such as Arabic is a challenging task. Its ...
In this paper, we show the progress for Arabic speech recognition by incorporating contextual inform...
International audienceMorphological analysis is a crucial stage in natural language processing. For ...
In this paper two aspects of generating and using phonetic Arabic dictionaries are described. First,...
Arabic is a morphologically rich language which rarely displays diacritics. These two features of th...
Language modeling is a difficult problem for languages with rich morphology. In this paper we invest...
Language modeling for an inflected language such as Arabic poses new challenges for speech recognit...
We present MAGEAD, a morphological analyzer and generator for the Arabic language family. Our work i...
The analysis of Arabic morphology and the system will be the sole focus of this paper. It will be ca...
AbstractThis paper addresses the adaptation of Arabic speech recognition (ASR) systems to foreign ac...
We explore the application of memorybased learning to morphological analysis and part-of-speech ta...
In this paper, we present ASMA, a fast and efficient system for automatic seg-mentation and fine gra...
The Arabic language is a collection of varieties, among which Modern Standard Arabic (MSA) has a spe...
In this paper, we present a powerful Arabic morphological analyzer and generator. The approach emplo...