Fatima Haouari


2025

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BALSAM: A Platform for Benchmarking Arabic Large Language Models
Rawan Nasser Almatham | Kareem Mohamed Darwish | Raghad Al-Rasheed | Waad Thuwaini Alshammari | Muneera Alhoshan | Amal Almazrua | Asma Al Wazrah | Mais Alheraki | Firoj Alam | Preslav Nakov | Norah A. Alzahrani | Eman Albilali | Nizar Habash | Abdelrahman Mustafa El-Sheikh | Muhammad Elmallah | Hamdy Mubarak | Zaid Alyafeai | Mohamed Anwar | Haonan Li | Ahmed Abdelali | Nora Altwairesh | Maram Hasanain | Abdulmohsen Al-Thubaity | Shady Shehata | Bashar Alhafni | Injy Hamed | Go Inoue | Khalid N. Elmadani | Ossama Obeid | Fatima Haouari | Tamer Elsayed | Emad A. Alghamdi | Khalid Almubarak | Saied Alshahrani | Ola Aljareh | Safa Alajlan | Areej Alshaqarawi | Maryam Alshihri | Sultana Alghurabi | Atikah Alzeghayer | Afrah Altamimi | Abdullah Alfaifi | Abdulrahman M Alosaimy
Proceedings of The Third Arabic Natural Language Processing Conference

The impressive advancement of Large Language Models (LLMs) in English has not been matched across all languages. In particular, LLM performance in Arabic lags behind, due to data scarcity, linguistic diversity of Arabic and its dialects, morphological complexity, etc. Progress is further hindered by the quality of Arabic benchmarks, which typically rely on static, publicly available data, lack comprehensive task coverage, or do not provide dedicated platforms with blind test sets. This makes it challenging to measure actual progress and to mitigate data contamination. Here, we aim to bridge these gaps. In particular, we introduce BALSAM, a comprehensive, community-driven benchmark aimed at advancing Arabic LLM development and evaluation. It includes 78 NLP tasks from 14 broad categories, with 52K examples divided into 37K test and 15K development, and a centralized, transparent platform for blind evaluation. We envision BALSAM as a unifying platform that sets standards and promotes collaborative research to advance Arabic LLM capabilities.

2024

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AuRED: Enabling Arabic Rumor Verification using Evidence from Authorities over Twitter
Fatima Haouari | Tamer Elsayed | Reem Suwaileh
Proceedings of the Second Arabic Natural Language Processing Conference

Diverging from the trend of the previous rumor verification studies, we introduce the new task of rumor verification using evidence that are exclusively captured from authorities, i.e., entities holding the right and knowledge to verify corresponding information. To enable research on this task for Arabic low-resourced language, we construct and release the first Authority-Rumor-Evidence Dataset (AuRED). The dataset comprises 160 rumors expressed in tweets and 692 Twitter timelines of authorities containing about 34k tweets. Additionally, we explore how existing evidence retrieval and claim verification models for fact-checking perform on our task under both the cross-lingual zero-shot and in-domain fine-tuning setups. Our experiments show that although evidence retrieval models perform relatively well on the task establishing strong baselines, there is still a big room for improvement. However, existing claim verification models perform poorly on the task no matter how good the retrieval performance is. The results also show that stance detection can be useful for evidence retrieval. Moreover, existing fact-checking datasets showed a potential in transfer learning to our task, however, further investigation using different datasets and setups is required.

2021

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ArCOV19-Rumors: Arabic COVID-19 Twitter Dataset for Misinformation Detection
Fatima Haouari | Maram Hasanain | Reem Suwaileh | Tamer Elsayed
Proceedings of the Sixth Arabic Natural Language Processing Workshop

In this paper we introduce ArCOV19-Rumors, an Arabic COVID-19 Twitter dataset for misinformation detection composed of tweets containing claims from 27th January till the end of April 2020. We collected 138 verified claims, mostly from popular fact-checking websites, and identified 9.4K relevant tweets to those claims. Tweets were manually-annotated by veracity to support research on misinformation detection, which is one of the major problems faced during a pandemic. ArCOV19-Rumors supports two levels of misinformation detection over Twitter: verifying free-text claims (called claim-level verification) and verifying claims expressed in tweets (called tweet-level verification). Our dataset covers, in addition to health, claims related to other topical categories that were influenced by COVID-19, namely, social, politics, sports, entertainment, and religious. Moreover, we present benchmarking results for tweet-level verification on the dataset. We experimented with SOTA models of versatile approaches that either exploit content, user profiles features, temporal features and propagation structure of the conversational threads for tweet verification.

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ArCOV-19: The First Arabic COVID-19 Twitter Dataset with Propagation Networks
Fatima Haouari | Maram Hasanain | Reem Suwaileh | Tamer Elsayed
Proceedings of the Sixth Arabic Natural Language Processing Workshop

In this paper, we present ArCOV-19, an Arabic COVID-19 Twitter dataset that spans one year, covering the period from 27th of January 2020 till 31st of January 2021. ArCOV-19 is the first publicly-available Arabic Twitter dataset covering COVID-19 pandemic that includes about 2.7M tweets alongside the propagation networks of the most-popular subset of them (i.e., most-retweeted and -liked). The propagation networks include both retweetsand conversational threads (i.e., threads of replies). ArCOV-19 is designed to enable research under several domains including natural language processing, information retrieval, and social computing. Preliminary analysis shows that ArCOV-19 captures rising discussions associated with the first reported cases of the disease as they appeared in the Arab world. In addition to the source tweets and the propagation networks, we also release the search queries and the language-independent crawler used to collect the tweets to encourage the curation of similar datasets.