Graph Contrastive Learning
Graph contrastive learning (GCL) is a self-supervised learning paradigm for graph-structured data that aims to learn robust and informative node or graph representations by contrasting augmented views of the same data. Current research focuses on improving data augmentation techniques to avoid information loss and noise, developing more sophisticated negative sampling strategies, and exploring the use of GCL in diverse applications like recommendation systems, fraud detection, and medical image analysis. These advancements are driving progress in various fields by enabling effective learning from large, unlabeled graph datasets, thereby reducing reliance on expensive manual annotation and improving the performance of downstream tasks.
Papers
January 3, 2023
December 14, 2022
December 8, 2022
December 1, 2022
November 20, 2022
November 7, 2022
November 1, 2022
October 25, 2022
October 17, 2022
September 16, 2022
August 13, 2022
July 25, 2022
June 25, 2022
June 23, 2022
June 16, 2022
May 27, 2022
May 13, 2022
April 11, 2022
April 1, 2022