Exploring Graph Mamba: A Comprehensive Survey on State-Space Models for Graph Learning
December 24, 2024 ยท The Cartographer ยท ๐ arXiv.org
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"Title-pattern auto-detect: Exploring Graph Mamba: A Comprehensive Survey on State-Space Models for Graph Learning"
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Authors
Safa Ben Atitallah, Chaima Ben Rabah, Maha Driss, Wadii Boulila, Anis Koubaa
arXiv ID
2412.18322
Category
cs.LG: Machine Learning
Cross-listed
cs.AI
Citations
2
Venue
arXiv.org
Last Checked
4 days ago
Abstract
Graph Mamba, a powerful graph embedding technique, has emerged as a cornerstone in various domains, including bioinformatics, social networks, and recommendation systems. This survey represents the first comprehensive study devoted to Graph Mamba, to address the critical gaps in understanding its applications, challenges, and future potential. We start by offering a detailed explanation of the original Graph Mamba architecture, highlighting its key components and underlying mechanisms. Subsequently, we explore the most recent modifications and enhancements proposed to improve its performance and applicability. To demonstrate the versatility of Graph Mamba, we examine its applications across diverse domains. A comparative analysis of Graph Mamba and its variants is conducted to shed light on their unique characteristics and potential use cases. Furthermore, we identify potential areas where Graph Mamba can be applied in the future, highlighting its potential to revolutionize data analysis in these fields. Finally, we address the current limitations and open research questions associated with Graph Mamba. By acknowledging these challenges, we aim to stimulate further research and development in this promising area. This survey serves as a valuable resource for both newcomers and experienced researchers seeking to understand and leverage the power of Graph Mamba.
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