Litcius/Paper detail

Guest Editorial: Deep Neural Networks for Graphs: Theory, Models, Algorithms, and Applications

Ming Li, Alessio Micheli, Yu Guang Wang, Shirui Pan, Píetro Lió, Giorgio Stefano Gnecco, Marcello Sanguineti

2024IEEE Transactions on Neural Networks and Learning Systems174 citationsDOIOpen Access PDF

Abstract

Deep neural networks for graphs (DNNGs) represent an emerging field that studies how the deep learning method can be generalized to graph-structured data. Since graphs are a powerful and flexible tool to represent complex information in the form of patterns and their relationships, ranging from molecules to protein-to-protein interaction networks, to social or transportation networks, or up to knowledge graphs, potentially modeling systems at very different scales, these methods have been exploited for many application domains.

Topics & Concepts

Computer scienceArtificial neural networkArtificial intelligenceDeep neural networksAlgorithmCognitive scienceTheoretical computer sciencePsychologyAdvanced Graph Neural NetworksGraph Theory and Algorithms
Guest Editorial: Deep Neural Networks for Graphs: Theory, Models, Algorithms, and Applications | Litcius