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Automatic Arabic Dialect Identification Systems for Written Texts: A Survey

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arxiv 2009.12622 v1 pith:MXVWOPSV submitted 2020-09-26 cs.CL cs.LG

Automatic Arabic Dialect Identification Systems for Written Texts: A Survey

classification cs.CL cs.LG
keywords arabicdialectidentificationsurveylearningprocessingtextchallenges
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Arabic dialect identification is a specific task of natural language processing, aiming to automatically predict the Arabic dialect of a given text. Arabic dialect identification is the first step in various natural language processing applications such as machine translation, multilingual text-to-speech synthesis, and cross-language text generation. Therefore, in the last decade, interest has increased in addressing the problem of Arabic dialect identification. In this paper, we present a comprehensive survey of Arabic dialect identification research in written texts. We first define the problem and its challenges. Then, the survey extensively discusses in a critical manner many aspects related to Arabic dialect identification task. So, we review the traditional machine learning methods, deep learning architectures, and complex learning approaches to Arabic dialect identification. We also detail the features and techniques for feature representations used to train the proposed systems. Moreover, we illustrate the taxonomy of Arabic dialects studied in the literature, the various levels of text processing at which Arabic dialect identification are conducted (e.g., token, sentence, and document level), as well as the available annotated resources, including evaluation benchmark corpora. Open challenges and issues are discussed at the end of the survey.

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  1. Jointly Improving Dialect Identification and ASR in Indian Languages using Multimodal Feature Fusion

    cs.CL 2026-07 accept novelty 5.5

    Multimodal bottleneck-plus-RoBERTa fusion with gating and detached embeddings jointly raises DID accuracy to 81.63% and lowers CER/WER to 4.65%/17.73% across 33 Indian dialects without the usual ASR–DID trade-off.