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Neural Arabic Text Diacritization: State of the Art Results and a Novel Approach for Machine Translation

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In this work, we present several deep learning models for the automatic diacritization of Arabic text. Our models are built using two main approaches, viz. Feed-Forward Neural Network (FFNN) and Recurrent Neural Network (RNN), with several enhancements such as 100-hot encoding, embeddings, Conditional Random Field (CRF) and Block-Normalized Gradient (BNG). The models are tested on the only freely available benchmark dataset and the results show that our models are either better or on par with other models, which require language-dependent post-processing steps, unlike ours. Moreover, we show that diacritics in Arabic can be used to enhance the models of NLP tasks such as Machine Translation (MT) by proposing the Translation over Diacritization (ToD) approach.

Ali Fadel, Ibraheem Tuffaha, Bara' Al-Jawarneh, Mahmoud Al-Ayyoub• 2019

Related benchmarks

TaskDatasetResultRank
Arabic Text DiacritizationCATT 2024 (test)
DER10.386
26
Automatic Text DiacritizationWikinews (test)
DER6.593
26
Arabic DiacritizationTashkeela Including 'no diacritic'
DER (w/ case ending)0.026
5
Arabic DiacritizationTashkeela Excluding 'no diacritic'
DER (w/ case ending)3
5
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