Search results with tag "Graph neural"
JOURNAL OF LA A Comprehensive Survey on Graph Neural …
arxiv.orgGraph neural networks are categorized into four groups: recurrent graph neural networks, convo-lutional graph neural networks, graph autoencoders, and spatial-temporal graph neural networks. Comprehensive review We provide the most compre-hensive overview of modern deep learning techniques for graph data. For each type of graph neural network, we
Link Prediction Based on Graph Neural Networks
papers.nips.ccGraph neural network Figure 1: The SEAL framework. For each target link, SEAL extracts a local enclosing subgraph around it, and uses a GNN to learn general graph structure features for link prediction. Note that the heuristics listed inside the box are just for illustration – the learned features may be completely different from existing ...
MixGCF: An Improved Training Method for Graph Neural ...
keg.cs.tsinghua.edu.cnMixGCF: An Improved Training Method for Graph Neural Network-based Recommender Systems Tinglin Huang†★, Yuxiao Dong‡, Ming Ding♦, Zhen Yang♦, Wenzheng Feng♦ Xinyu Wang†, Jie Tang♦§ †Zhejiang University, ‡Facebook AI, ♦Tsinghua University tinglin.huang@zju.edu.cn,yuxiaod@fb.com,dm18@mails.tsinghua.edu.cn,zheny2751@gmail.com
Chapter 5 The Expressive Power of Graph Neural Networks
graph-neural-networks.github.iowork, the message passing neural network, describing the limitations of its expres-sive power and discussing its efficient implementations. In Section 5.4, we will in-troduce a number of methods that make GNNs more powerful than the message passing neural network. In Section 5.5, we will conclude this chapter by discussing further research ...