4.8 Article

Heterogeneous Hypergraph Variational Autoencoder for Link Prediction

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TPAMI.2021.3059313

Keywords

Semantics; Predictive models; Task analysis; Topology; Stochastic processes; Network topology; Fans; Heterogeneous information network; hypergraph; hyperedge attention; link prediction; variational inference

Funding

  1. National Natural Science Foundation of China [U1701262, 61972187, 61172168]
  2. Tsinghua University Initiative Scientific Research Program [20197020003]
  3. Natural Science Foundation of Fujian Province [2020J02024]
  4. Fuzhou Science and Technology Project [2020-RC-186]

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This paper presents a method named HeteHG-VAE for link prediction in heterogeneous information networks. It maps a conventional HIN to a heterogeneous hypergraph with specific semantics to capture high-order semantics and complex relations among nodes, and learns deep latent representations of nodes and hyperedges from the heterogeneous hypergraph using a Bayesian deep generative framework. Experimental results demonstrate the effectiveness and efficiency of the proposed method.
Link prediction aims at inferring missing links or predicting future ones based on the currently observed network. This topic is important for many applications such as social media, bioinformatics and recommendation systems. Most existing methods focus on homogeneous settings and consider only low-order pairwise relations while ignoring either the heterogeneity or high-order complex relations among different types of nodes, which tends to lead to a sub-optimal embedding result. This paper presents a method named Heterogeneous Hypergraph Variational Autoencoder (HeteHG-VAE) for link prediction in heterogeneous information networks (HINs). It first maps a conventional HIN to a heterogeneous hypergraph with a certain kind of semantics to capture both the high-order semantics and complex relations among nodes, while preserving the low-order pairwise topology information of the original HIN. Then, deep latent representations of nodes and hyperedges are learned by a Bayesian deep generative framework from the heterogeneous hypergraph in an unsupervised manner. Moreover, a hyperedge attention module is designed to learn the importance of different types of nodes in each hyperedge. The major merit of HeteHG-VAE lies in its ability of modeling multi-level relations in heterogeneous settings. Extensive experiments on real-world datasets demonstrate the effectiveness and efficiency of the proposed method.

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