Graph Neural Network Model
Graph neural networks (GNNs) are a class of deep learning models designed to analyze and learn from graph-structured data, aiming to extract meaningful representations from complex relationships between interconnected entities. Current research focuses on improving GNN efficiency and scalability for large datasets, exploring various architectures like graph convolutional networks (GCNs), graph attention networks (GATs), and graph transformers, and developing techniques to enhance explainability and address challenges like overfitting and the cold start problem. GNNs are proving valuable across diverse fields, including recommendation systems, malware detection, and power system optimization, offering significant potential for advancing data analysis in domains with inherently relational data.
Papers
Benchmarking Accuracy and Generalizability of Four Graph Neural Networks Using Large In Vitro ADME Datasets from Different Chemical Spaces
Fabio Broccatelli, Richard Trager, Michael Reutlinger, George Karypis, Mufei Li
A Review on Graph Neural Network Methods in Financial Applications
Jianian Wang, Sheng Zhang, Yanghua Xiao, Rui Song