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HDMI: High-order Deep Multiplex Infomax

About

Networks have been widely used to represent the relations between objects such as academic networks and social networks, and learning embedding for networks has thus garnered plenty of research attention. Self-supervised network representation learning aims at extracting node embedding without external supervision. Recently, maximizing the mutual information between the local node embedding and the global summary (e.g. Deep Graph Infomax, or DGI for short) has shown promising results on many downstream tasks such as node classification. However, there are two major limitations of DGI. Firstly, DGI merely considers the extrinsic supervision signal (i.e., the mutual information between node embedding and global summary) while ignores the intrinsic signal (i.e., the mutual dependence between node embedding and node attributes). Secondly, nodes in a real-world network are usually connected by multiple edges with different relations, while DGI does not fully explore the various relations among nodes. To address the above-mentioned problems, we propose a novel framework, called High-order Deep Multiplex Infomax (HDMI), for learning node embedding on multiplex networks in a self-supervised way. To be more specific, we first design a joint supervision signal containing both extrinsic and intrinsic mutual information by high-order mutual information, and we propose a High-order Deep Infomax (HDI) to optimize the proposed supervision signal. Then we propose an attention based fusion module to combine node embedding from different layers of the multiplex network. Finally, we evaluate the proposed HDMI on various downstream tasks such as unsupervised clustering and supervised classification. The experimental results show that HDMI achieves state-of-the-art performance on these tasks.

Baoyu Jing, Chanyoung Park, Hanghang Tong• 2021

Related benchmarks

TaskDatasetResultRank
Node ClassificationACM
Macro F190.1
104
Node ClassificationDBLP
Micro-F192.2
94
Node ClusteringACM
ARI72.3
57
Node ClassificationAminer
Micro F171.7
46
Node ClusteringDBLP
NMI73.1
39
Node ClassificationYelp
Macro F1 Score80.7
15
Node ClusteringYelp
NMI38.9
11
Node ClusteringAminer
NMI33.5
11
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