Nora Alturayeif


2025

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Pearl: A Multimodal Culturally-Aware Arabic Instruction Dataset
Fakhraddin Alwajih | Samar M. Magdy | Abdellah El Mekki | Omer Nacar | Youssef Nafea | Safaa Taher Abdelfadil | Abdulfattah Mohammed Yahya | Hamzah Luqman | Nada Almarwani | Samah Aloufi | Baraah Qawasmeh | Houdaifa Atou | Serry Sibaee | Hamzah A. Alsayadi | Walid Al-Dhabyani | Maged S. Al-shaibani | Aya El aatar | Nour Qandos | Rahaf Alhamouri | Samar Ahmad | Mohammed Anwar AL-Ghrawi | Aminetou Yacoub | Ruwa AbuHweidi | Vatimetou Mohamed Lemin | Reem Abdel-Salam | Ahlam Bashiti | Adel Ammar | Aisha Alansari | Ahmed Ashraf | Nora Alturayeif | Alcides Alcoba Inciarte | AbdelRahim A. Elmadany | Mohamedou Cheikh Tourad | Ismail Berrada | Mustafa Jarrar | Shady Shehata | Muhammad Abdul-Mageed
Findings of the Association for Computational Linguistics: EMNLP 2025

Mainstream large vision-language models (LVLMs) inherently encode cultural biases, highlighting the need for diverse multimodal datasets. To address this gap, we introduce PEARL, a large-scale Arabic multimodal dataset and benchmark explicitly designed for cultural understanding. Constructed through advanced agentic workflows and extensive human-in-the-loop annotations by 37 annotators from across the Arab world, PEARL comprises over 309K multimodal examples spanning ten culturally significant domains covering all Arab countries. We further provide two robust evaluation benchmarks (PEARL and PEARL-LITE) along with a specialized subset (PEARL-X) explicitly developed to assess nuanced cultural variations. Comprehensive evaluations on state-of-the-art open and proprietary LVLMs demonstrate that reasoning-centric instruction alignment substantially improves models’ cultural grounding compared to conventional scaling methods. PEARL establishes a foundational resource for advancing culturally-informed multimodal modeling research. All datasets and benchmarks are publicly available.

2024

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StanceEval 2024: The First Arabic Stance Detection Shared Task
Nora Alturayeif | Hamzah Luqman | Zaid Alyafeai | Asma Yamani
Proceedings of the Second Arabic Natural Language Processing Conference

Recently, there has been a growing interest in analyzing user-generated text to understand opinions expressed on social media. In NLP, this task is known as stance detection, where the goal is to predict whether the writer is in favor, against, or has no opinion on a given topic. Stance detection is crucial for applications such as sentiment analysis, opinion mining, and social media monitoring, as it helps in capturing the nuanced perspectives of users on various subjects. As part of the ArabicNLP 2024 program, we organized the first shared task on Arabic Stance Detection, StanceEval 2024. This initiative aimed to foster advancements in stance detection for the Arabic language, a relatively underrepresented area in Arabic NLP research. This overview paper provides a detailed description of the shared task, covering the dataset, the methodologies used by various teams, and a summary of the results from all participants. We received 28 unique team registrations, and during the testing phase, 16 teams submitted valid entries. The highest classification F-score obtained was 84.38.