The integration of graph structures in diverse domains has recently garnered substantial attention, presenting a paradigm shift from classical euclidean representations. This new trend is driven by the advent of novel algorithms that can capture complex relationships through a class of neural architectures: the Graph Neural Networks (GNNs) [1], [2]. These networks are adept at handling data that can be effectively modeled as graphs, introducing a new representation learning paradigm. The significance of GNNs extends to several domains, including computer vision [3], [4], natural language processing [5], chemistry/biology [6], physics [7], traffic networks [8], and recommendation systems [9].
Damelio, A., Lin, J., Ramel, J. -., Lanzarotti, R., Guest Editorial Emerging Trends and Advances in Graph-Based Methods and Applications, <<IEEE TRANSACTIONS ON EMERGING TOPICS IN COMPUTING>>, 2024; 12 (1): 122-125. [doi:10.1109/TETC.2024.3374581] [https://hdl.handle.net/10807/301402]
Guest Editorial Emerging Trends and Advances in Graph-Based Methods and Applications
Lin, Jianyi;
2024
Abstract
The integration of graph structures in diverse domains has recently garnered substantial attention, presenting a paradigm shift from classical euclidean representations. This new trend is driven by the advent of novel algorithms that can capture complex relationships through a class of neural architectures: the Graph Neural Networks (GNNs) [1], [2]. These networks are adept at handling data that can be effectively modeled as graphs, introducing a new representation learning paradigm. The significance of GNNs extends to several domains, including computer vision [3], [4], natural language processing [5], chemistry/biology [6], physics [7], traffic networks [8], and recommendation systems [9].I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.