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Main Authors: Nacar, Omer, Sibaee, Serry, Ammar, Adel, Alhabashi, Yasser, Sibai, Nadia Samer, Ahmed, Yara Farouk, Alqusaiyer, Ahmed Saud, AlMahmoud, Sulieman Mahmoud, Mukhaniq, Abdulrhman Mamdoh, Raed, Lubaba, Alatwah, Sulaiman Mohammed, Alqahtani, Waad Nasser, Alnasser, Yousif Abdulmajeed, Khadraoui, Mohamed Aziz, Boulila, Wadii
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.02209
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author Nacar, Omer
Sibaee, Serry
Ammar, Adel
Alhabashi, Yasser
Sibai, Nadia Samer
Ahmed, Yara Farouk
Alqusaiyer, Ahmed Saud
AlMahmoud, Sulieman Mahmoud
Mukhaniq, Abdulrhman Mamdoh
Raed, Lubaba
Alatwah, Sulaiman Mohammed
Alqahtani, Waad Nasser
Alnasser, Yousif Abdulmajeed
Khadraoui, Mohamed Aziz
Boulila, Wadii
author_facet Nacar, Omer
Sibaee, Serry
Ammar, Adel
Alhabashi, Yasser
Sibai, Nadia Samer
Ahmed, Yara Farouk
Alqusaiyer, Ahmed Saud
AlMahmoud, Sulieman Mahmoud
Mukhaniq, Abdulrhman Mamdoh
Raed, Lubaba
Alatwah, Sulaiman Mohammed
Alqahtani, Waad Nasser
Alnasser, Yousif Abdulmajeed
Khadraoui, Mohamed Aziz
Boulila, Wadii
contents The Arabic language is characterized by a rich tapestry of regional dialects that differ substantially in phonetics and lexicon, reflecting the geographic and cultural diversity of its speakers. Despite the availability of many multi-dialect datasets, mapping speech to fine-grained dialect sources, such as cities, remains underexplored. We present ARCADE (Arabic Radio Corpus for Audio Dialect Evaluation), the first Arabic speech dataset designed explicitly with city-level dialect granularity. The corpus comprises Arabic radio speech collected from streaming services across the Arab world. Our data pipeline captures 30-second segments from verified radio streams, encompassing both Modern Standard Arabic (MSA) and diverse dialectal speech. To ensure reliability, each clip was annotated by one to three native Arabic reviewers who assigned rich metadata, including emotion, speech type, dialect category, and a validity flag for dialect identification tasks. The resulting corpus comprises 6,907 annotations and 3,790 unique audio segments spanning 58 cities across 19 countries. These fine-grained annotations enable robust multi-task learning, serving as a benchmark for city-level dialect tagging. We detail the data collection methodology, assess audio quality, and provide a comprehensive analysis of label distributions. The dataset is available on: https://huggingface.co/datasets/riotu-lab/ARCADE-full
format Preprint
id arxiv_https___arxiv_org_abs_2601_02209
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ARCADE: A City-Scale Corpus for Fine-Grained Arabic Dialect Tagging
Nacar, Omer
Sibaee, Serry
Ammar, Adel
Alhabashi, Yasser
Sibai, Nadia Samer
Ahmed, Yara Farouk
Alqusaiyer, Ahmed Saud
AlMahmoud, Sulieman Mahmoud
Mukhaniq, Abdulrhman Mamdoh
Raed, Lubaba
Alatwah, Sulaiman Mohammed
Alqahtani, Waad Nasser
Alnasser, Yousif Abdulmajeed
Khadraoui, Mohamed Aziz
Boulila, Wadii
Computation and Language
Computers and Society
Sound
The Arabic language is characterized by a rich tapestry of regional dialects that differ substantially in phonetics and lexicon, reflecting the geographic and cultural diversity of its speakers. Despite the availability of many multi-dialect datasets, mapping speech to fine-grained dialect sources, such as cities, remains underexplored. We present ARCADE (Arabic Radio Corpus for Audio Dialect Evaluation), the first Arabic speech dataset designed explicitly with city-level dialect granularity. The corpus comprises Arabic radio speech collected from streaming services across the Arab world. Our data pipeline captures 30-second segments from verified radio streams, encompassing both Modern Standard Arabic (MSA) and diverse dialectal speech. To ensure reliability, each clip was annotated by one to three native Arabic reviewers who assigned rich metadata, including emotion, speech type, dialect category, and a validity flag for dialect identification tasks. The resulting corpus comprises 6,907 annotations and 3,790 unique audio segments spanning 58 cities across 19 countries. These fine-grained annotations enable robust multi-task learning, serving as a benchmark for city-level dialect tagging. We detail the data collection methodology, assess audio quality, and provide a comprehensive analysis of label distributions. The dataset is available on: https://huggingface.co/datasets/riotu-lab/ARCADE-full
title ARCADE: A City-Scale Corpus for Fine-Grained Arabic Dialect Tagging
topic Computation and Language
Computers and Society
Sound
url https://arxiv.org/abs/2601.02209