Arabic Multimodal Machine Learning: Datasets, Applications, Approaches, and Challenges
- URL: http://arxiv.org/abs/2508.12227v2
- Date: Thu, 21 Aug 2025 02:28:33 GMT
- Title: Arabic Multimodal Machine Learning: Datasets, Applications, Approaches, and Challenges
- Authors: Abdelhamid Haouhat, Slimane Bellaouar, Attia Nehar, Hadda Cherroun, Ahmed Abdelali,
- Abstract summary: Arabic MML aims to integrate and analyze information from diverse modalities, such as text, audio, and visuals.<n>This paper explores Arabic MML by categorizing efforts through a novel taxonomy and analyzing existing research.
- Score: 1.0323998873402922
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Multimodal Machine Learning (MML) aims to integrate and analyze information from diverse modalities, such as text, audio, and visuals, enabling machines to address complex tasks like sentiment analysis, emotion recognition, and multimedia retrieval. Recently, Arabic MML has reached a certain level of maturity in its foundational development, making it time to conduct a comprehensive survey. This paper explores Arabic MML by categorizing efforts through a novel taxonomy and analyzing existing research. Our taxonomy organizes these efforts into four key topics: datasets, applications, approaches, and challenges. By providing a structured overview, this survey offers insights into the current state of Arabic MML, highlighting areas that have not been investigated and critical research gaps. Researchers will be empowered to build upon the identified opportunities and address challenges to advance the field.
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