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Multi-Relational Graph Neural Architecture Search with Fine-grained Message Passing

Xin Zheng, Miao Zhang, Chunyang Chen, Chaojie Li, Chuan Zhou, Shirui Pan*

*Corresponding author for this work

Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 32 - Refereed conference paper (with host publication)peer-review

Abstract

Graph neural architecture search (NAS) has gained great popularity in automatically designing powerful graph neural networks (GNNs) with superior learning abilities, significantly relieving human effort and expertise reliance. Despite the advanced performance of automated learning, existing graph NAS models mainly work on single-relational graphs, while the widespread multi-relational graphs in real-world applications, are not well addressed. Moreover, current search spaces of automated GNNs are generally coarse-grained by simply integrating typical GNN layers and hyper-parameters, resulting in severe limitations on search capacities and scopes for creating innovative GNN architectures. To tackle the limitations of single-relational setting and coarse-grained search space design in existing graph NAS, in this paper, we propose a novel framework of multi-relational graph neural architecture search, dubbed MR-GNAS, to automatically develop innovative and excellent multi-relational GNN architectures. Specifically, to enlarge search capacities and improve search flexibility, MR-GNAS contains a fine-grained search space that embraces the full-pipe multi-relational message passing schema, enabling expressive architecture search scopes. With the well-designed fine-grained search space, MR-GNAS constructs a relation-aware supernet with a tree topology, to jointly learn discriminative node and relation representations. By searching with a gradient-based strategy in the supernet, the proposed MR-GNAS could derive excellent multi-relational GNN architectures in multi-relational graph analysis. Extensive experiments on entity classification and link prediction tasks over multi-relational graphs illustrate the effectiveness and superiority of the proposed method. © 2022 IEEE.
Original languageEnglish
Title of host publicationProceedings - 22nd IEEE International Conference on Data Mining (ICDM 2022)
PublisherIEEE
Pages783-792
Number of pages10
ISBN (Electronic)978-1-6654-5099-7
DOIs
Publication statusPublished - Nov 2022
Externally publishedYes
Event22nd IEEE International Conference on Data Mining, ICDM 2022 - Orlando, United States
Duration: 28 Nov 20221 Dec 2022

Publication series

NameProceedings - IEEE International Conference on Data Mining, ICDM
Volume2022-November
ISSN (Print)1550-4786

Conference

Conference22nd IEEE International Conference on Data Mining, ICDM 2022
PlaceUnited States
CityOrlando
Period28/11/221/12/22

Funding

This work was partially supported by an Australian Research Council (ARC) Future Fellowship (FT210100097), Independent Research Fund Denmark under agreements 8022-00246B and 8048-00038B, the VILLUM FONDEN under agreement 34328, and the Innovation Fund Denmark centre, DIREC.

Research Keywords

  • automated graph learning
  • fine-grained message passing
  • graph neural architecture search
  • graph neural networks
  • multi-relational graphs

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