Zemin LiuYuan FangYong LiuVincent W. Zheng
While graph neural networks (GNNs) exhibit strong discriminative power, they often fall short of learning the underlying node distribution for increased robustness. To deal with this, inspired by generative adversarial networks (GANs), we investigate the problem of adversarial learning on graph neural networks, and propose a novel framework named NAGNN (i.e., Neighbor-anchoring Adversarial Graph Neural Networks) for graph representation learning, which trains not only a discriminator but also a generator that compete with each other. In particular, we propose a novel neighbor-anchoring strategy, where the generator produces samples with explicit features and neighborhood structures anchored on a reference real node, so that the discriminator can perform neighborhood aggregation on the fake samples to learn superior representations.
Zemin LiuYuan FangYong LiuVincent W. Zheng
Zhiqiang ZhongCheng–Te LiJun Pang
Tingyang ChenDazhuo QiuYinghui WuArijit KhanXiangyu KeYunjun Gao