Victor Henrique Alves Ribeiro, Pedro Henrique Domingues, et al.
IJCNN 2020
A variety of graph neural networks (GNNs) frameworks for representation learning on graphs have been recently developed. These frameworks rely on aggregation and ITERATION scheme to learn the representation of nodes. However, information between nodes is inevitably lost in the scheme during learning. In order to reduce the loss, we extend the GNNs frameworks by exploring the aggregation and iteration scheme in the methodology of mutual information. We propose a new approach of enlarging the normal neighborhood in the aggregation of GNNs, which aims at maximizing mutual information. Based on a series of experiments conducted on several benchmark datasets, we show that the proposed approach improves the state-of-the-art performance for four types of graph tasks, including supervised and semi-supervised graph classification, graph link prediction and graph edge generation and classification.
Victor Henrique Alves Ribeiro, Pedro Henrique Domingues, et al.
IJCNN 2020
Djallel Bouneffouf, Charu Aggarwal, et al.
IJCNN 2020
Zhi Chen, Pengqian Yu, et al.
Optimization
Achintya Kundu, Pengqian Yu, et al.
EDGE 2022