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1
Improving Machine Translation of Arabic Dialects through Multi-Task Learning
In: 20th International Conference Italian Association for Artificial Intelligence:AIxIA 2021 ; https://hal.archives-ouvertes.fr/hal-03435996 ; 20th International Conference Italian Association for Artificial Intelligence:AIxIA 2021, Dec 2021, MILAN/Virtual, Italy (2021)
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2
A Historical Reconstruction of Some Pronominal Suffixes in Modern Dialectal Arabic
In: Languages ; Volume 6 ; Issue 3 (2021)
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3
A Transformer-Based Neural Machine Translation Model for Arabic Dialects That Utilizes Subword Units
In: Sensors ; Volume 21 ; Issue 19 (2021)
Abstract: Languages that allow free word order, such as Arabic dialects, are of significant difficulty for neural machine translation (NMT) because of many scarce words and the inefficiency of NMT systems to translate these words. Unknown Word (UNK) tokens represent the out-of-vocabulary words for the reason that NMT systems run with vocabulary that has fixed size. Scarce words are encoded completely as sequences of subword pieces employing the Word-Piece Model. This research paper introduces the first Transformer-based neural machine translation model for Arabic vernaculars that employs subword units. The proposed solution is based on the Transformer model that has been presented lately. The use of subword units and shared vocabulary within the Arabic dialect (the source language) and modern standard Arabic (the target language) enhances the behavior of the multi-head attention sublayers for the encoder by obtaining the overall dependencies between words of input sentence for Arabic vernacular. Experiments are carried out from Levantine Arabic vernacular (LEV) to modern standard Arabic (MSA) and Maghrebi Arabic vernacular (MAG) to MSA, Gulf–MSA, Nile–MSA, Iraqi Arabic (IRQ) to MSA translation tasks. Extensive experiments confirm that the suggested model adequately addresses the unknown word issue and boosts the quality of translation from Arabic vernaculars to Modern standard Arabic (MSA).
Keyword: Arabic dialects; modern standard Arabic; multi-head attention; neural machine translation (NMT); self-attention; shared vocabulary; subword units; transformer
URL: https://doi.org/10.3390/s21196509
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4
The Old and the New: Considerations in Arabic Historical Dialectology
In: Languages ; Volume 6 ; Issue 4 (2021)
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5
Contrastive Feature Typologies of Arabic Consonant Reflexes
In: Languages ; Volume 6 ; Issue 3 (2021)
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