Mgat: Multi-view graph attention networks

Y Xie, Y Zhang, M Gong, Z Tang, C Han�- Neural Networks, 2020 - Elsevier
Neural Networks, 2020Elsevier
Multi-view graph embedding is aimed at learning low-dimensional representations of nodes
that capture various relationships in a multi-view network, where each view represents a
type of relationship among nodes. Multitudes of existing graph embedding approaches
concentrate on single-view networks, that can only characterize one simple type of proximity
relationships among objects. However, most of the real-world complex systems possess
multiple types of relationships among entities. In this paper, a novel approach of graph�…
Abstract
Multi-view graph embedding is aimed at learning low-dimensional representations of nodes that capture various relationships in a multi-view network, where each view represents a type of relationship among nodes. Multitudes of existing graph embedding approaches concentrate on single-view networks, that can only characterize one simple type of proximity relationships among objects. However, most of the real-world complex systems possess multiple types of relationships among entities. In this paper, a novel approach of graph embedding for multi-view networks is proposed, named Multi-view Graph Attention Networks (MGAT). We explore an attention-based architecture for learning node representations from each single view, the network parameters of which are constrained by a novel regularization term. In order to collaboratively integrate multiple types of relationships in different views, a view-focused attention method is explored to aggregate the view-wise node representations. We evaluate the proposed algorithm on several real-world datasets, and it demonstrates that the proposed approach outperforms existing state-of-the-art baselines.
Elsevier