Datasets:
Tasks:
Text Classification
Modalities:
Text
Formats:
csv
Languages:
Arabic
Size:
10K - 100K
License:
Update README.md
Browse files
README.md
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**BibTeX:**
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author="Zarnoufi, Randa
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and Hajhouj, Mohammed
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and Bachri, Walid
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and Jaafar, Hamid
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and Abik, Mounia",
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editor="Hdioud, Boutaina
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and Aouragh, Si Lhoussain",
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title="MAOffens: Moroccan Arabic Offensive Language Dataset",
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booktitle="Arabic Language Processing: From Theory to Practice",
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year="2025",
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publisher="Springer Nature Switzerland",
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address="Cham",
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pages="17--29",
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abstract="Moroccan Arabic (MA) dialect is a low resource language. To perform any NLP task, we have to develop the necessary resources from scratch. This paper introduces our work on MAOffens, the first MA dataset for offensive language detection. The dataset will serve to build predictive models to detect offensive content widely present on social media and hence help ensure online safety. We built the dataset with a mixture of comments in Arabic and Latin scripts to cover offensiveness in both cases. The resulting dataset consists of 23k comments totally balanced. The dataset is open to the public (https://huggingface.co/datasets/randa/maoffens). We evaluated the annotation and classification power of the dataset through various classifier architectures. Our best performing classifier was based on a MA transformer model.",
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isbn="978-3-031-80438-0"
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}
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**APA:**
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**BibTeX:**
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@InProceedings{10.1007/978-3-031-80438-0_2,
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author="Zarnoufi, Randa
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and Hajhouj, Mohammed
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and Bachri, Walid
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and Jaafar, Hamid
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and Abik, Mounia",
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editor="Hdioud, Boutaina
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and Aouragh, Si Lhoussain",
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+
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title="MAOffens: Moroccan Arabic Offensive Language Dataset",
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+
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booktitle="Arabic Language Processing: From Theory to Practice",
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year="2025",
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publisher="Springer Nature Switzerland",
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address="Cham",
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pages="17--29",
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+
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abstract="Moroccan Arabic (MA) dialect is a low resource language. To perform any NLP task, we have to develop the necessary resources from scratch. This paper introduces our work on MAOffens, the first MA dataset for offensive language detection. The dataset will serve to build predictive models to detect offensive content widely present on social media and hence help ensure online safety. We built the dataset with a mixture of comments in Arabic and Latin scripts to cover offensiveness in both cases. The resulting dataset consists of 23k comments totally balanced. The dataset is open to the public (https://huggingface.co/datasets/randa/maoffens). We evaluated the annotation and classification power of the dataset through various classifier architectures. Our best performing classifier was based on a MA transformer model.",
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isbn="978-3-031-80438-0"
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}
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**APA:**
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