Lukman Jibril Aliyu


2025

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Who Wrote This? Identifying Machine vs Human-Generated Text in Hausa
Babangida Sani | Aakansha Soy | Sukairaj Hafiz Imam | Ahmad Mustapha | Lukman Jibril Aliyu | Idris Abdulmumin | Ibrahim Said Ahmad | Shamsuddeen Hassan Muhammad
Proceedings of the Sixth Workshop on African Natural Language Processing (AfricaNLP 2025)

The advancement of large language models (LLMs) has allowed them to be proficient in various tasks, including content generation. However, their unregulated usage can lead to malicious activities such as plagiarism and generating and spreading fake news, especially for low-resource languages. Most existing machine-generated text detectors are trained on high-resource languages like English, French, etc. In this study, we developed the first large-scale detector that can distinguish between human- and machine-generated content in Hausa. We scraped seven Hausa-language media outlets for the human-generated text and the Gemini-2.0 flash model to automatically generate the corresponding Hausa-language articles based on the human-generated article headlines. We fine-tuned four pre-trained African-centric models (AfriTeVa, AfriBERTa, AfroX LMR, and AfroXLMR-76L) on the resulting dataset and assessed their performance using accuracy and F1-score metrics. AfroXLMR achieved the highest performance with an accuracy of 99.23% and an F1 score of 99.21%, demonstrating its effectiveness for Hausa text detection. Our dataset is made publicly available to enable further research.

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AfriHate: A Multilingual Collection of Hate Speech and Abusive Language Datasets for African Languages
Shamsuddeen Hassan Muhammad | Idris Abdulmumin | Abinew Ali Ayele | David Ifeoluwa Adelani | Ibrahim Said Ahmad | Saminu Mohammad Aliyu | Paul Röttger | Abigail Oppong | Andiswa Bukula | Chiamaka Ijeoma Chukwuneke | Ebrahim Chekol Jibril | Elyas Abdi Ismail | Esubalew Alemneh | Hagos Tesfahun Gebremichael | Lukman Jibril Aliyu | Meriem Beloucif | Oumaima Hourrane | Rooweither Mabuya | Salomey Osei | Samuel Rutunda | Tadesse Destaw Belay | Tadesse Kebede Guge | Tesfa Tegegne Asfaw | Lilian Diana Awuor Wanzare | Nelson Odhiambo Onyango | Seid Muhie Yimam | Nedjma Ousidhoum
Proceedings of the 2025 Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)

Hate speech and abusive language are global phenomena that need socio-cultural background knowledge to be understood, identified, and moderated. However, in many regions of the Global South, there have been several documented occurrences of (1) absence of moderation and (2) censorship due to the reliance on keyword spotting out of context. Further, high-profile individuals have frequently been at the center of the moderation process, while large and targeted hate speech campaigns against minorities have been overlooked.These limitations are mainly due to the lack of high-quality data in the local languages and the failure to include local communities in the collection, annotation, and moderation processes. To address this issue, we present AfriHate: a multilingual collection of hate speech and abusive language datasets in 15 African languages. Each instance in AfriHate is a tweet annotated by native speakers familiar with the regional culture. We report the challenges related to the construction of the datasets and present various classification baseline results with and without using LLMs. We find that model performance highly depends on the language and that multilingual models can help boost performance in low-resource settings.