4.5 Article

Reinforced Neighborhood Selection Guided Multi-Relational Graph Neural Networks

Journal

ACM TRANSACTIONS ON INFORMATION SYSTEMS
Volume 40, Issue 4, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3490181

Keywords

Graph neural network; multi-relational graph; reinforcement learning; node embedding; recursive optimization

Funding

  1. National Key R&D Program of China [2021YFB1714800]
  2. NSFC [62002007, U20B2053]
  3. S&T Program of Hebei [20310101D]
  4. Fundamental Research Funds for the Central Universities
  5. UK EPSRC [EP/T01461X/1]
  6. UK White Rose University Consortium
  7. NSF [III-1763325, III-1909323, III-2106758, SaTC-1930941]

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In this article, the authors propose a novel multi-relational Graph Neural Network architecture called RIOGNN, which addresses the complexity and diversity issues in heterogeneous graphs. By using reinforced, recursive, and flexible neighborhood selection, RIOGNN achieves more discriminative node embeddings with enhanced explainability. It also demonstrates advancements in effectiveness and efficiency compared to other comparative GNN models.
Graph Neural Networks (GNNs) have been widely used for the representation learning of various structured graph data, typically through message passing among nodes by aggregating their neighborhood information via different operations. While promising, most existing GNNs oversimplify the complexity and diversity of the edges in the graph and thus are inefficient to cope with ubiquitous heterogeneous graphs, which are typically in the form of multi-relational graph representations. In this article, we propose RIOGNN, a novel Reinforced, recursive, and flexible neighborhood selection guided multi-relational Graph Neural Network architecture, to navigate complexity of neural network structures whilst maintaining relation-dependent representations. We first construct a multi-relational graph, according to the practical task, to reflect the heterogeneity of nodes, edges, attributes, and labels. To avoid the embedding over-assimilation among different types of nodes, we employ a label-aware neural similarity measure to ascertain the most similar neighbors based on node attributes. A reinforced relation-aware neighbor selection mechanism is developed to choose the most similar neighbors of a targeting node within a relation before aggregating all neighborhood information from different relations to obtain the eventual node embedding. Particularly, to improve the efficiency of neighbor selecting, we propose a new recursive and scalable reinforcement learning framework with estimable depth and width for different scales of multi-relational graphs. RIOGNN can learn more discriminative node embedding with enhanced explainability due to the recognition of individual importance of each relation via the filtering threshold mechanism. Comprehensive experiments on real-world graph data and practical tasks demonstrate the advancements of effectiveness, efficiency, and the model explainability, as opposed to other comparative GNN models.

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