La Trobe

ABG-NAS: Adaptive bayesian genetic neural architecture search for graph representation learning

journal contribution
posted on 2025-09-30, 04:06 authored by Sixuan WangSixuan Wang, Jiao YinJiao Yin, Jinli CaoJinli Cao, Ming Jian TangMing Jian Tang, Hua Wang, Yanchun Zhang
Effective and efficient graph representation learning is essential for enabling critical downstream tasks, such as node classification, link prediction, and subgraph search. However, existing graph neural network (GNN) architectures often struggle to adapt to diverse and complex graph structures, limiting their ability to produce structure-aware and task-discriminative representations. To address this challenge, we propose ABG-NAS, a novel framework for automated graph neural network architecture search tailored for efficient graph representation learning. ABG-NAS encompasses three key components: a Comprehensive Architecture Search Space (CASS), an Adaptive Genetic Optimization Strategy (AGOS), and a Bayesian-Guided Tuning Module (BGTM). CASS systematically explores diverse propagation (P) and transformation (T) operations, enabling the discovery of GNN architectures capable of capturing intricate graph characteristics. AGOS dynamically balances exploration and exploitation, ensuring search efficiency and preserving solution diversity. BGTM further optimizes hyperparameters periodically, enhancing the robustness and scalability of the resulting architectures to both large-scale graphs and high-complexity models. Empirical evaluations on benchmark datasets (Cora, PubMed, Citeseer, and CoraFull) demonstrate that ABG-NAS consistently outperforms both manually designed GNNs and state-of-the-art neural architecture search (NAS) methods. These results highlight the potential of ABG-NAS to advance graph representation learning by providing adaptive solutions that scale effectively across varying graph sizes and architectural complexities. Our code is publicly available at https://github.com/sserranw/ABG-NAS.<p></p>

Funding

This work was supported in part by the Australian Research Council under Discovery Project Grant no. DP230100716.

History

Publication Date

2025-10-25

Journal

Knowledge-Based Systems

Volume

328

Article Number

114235

Pagination

11p.

Publisher

Elsevier

ISSN

0950-7051

Rights Statement

© 2025 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).