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This content will become publicly available on September 1, 2026

Title: HGEN: Heterogeneous Graph Ensemble Networks
This paper presents HGEN that pioneers ensemble learning for heterogeneous graphs. We argue that the heterogeneity in node types, nodal features, and local neighborhood topology poses significant challenges for ensemble learning, particularly in accommodating diverse graph learners. Our HGEN framework ensembles multiple learners through a meta-path and transformation-based optimization pipeline to uplift classification accuracy. Specifically, HGEN uses meta-path combined with random dropping to create Allele Graph Neural Networks (GNNs), whereby the base graph learners are trained and aligned for later ensembling. To ensure effective ensemble learning, HGEN presents two key components:1) a residual-attention mechanism to calibrate allele GNNs of different meta-paths, thereby enforcing node embeddings to focus on more informative graphs to improve base learner accuracy, and 2) a correlation-regularization term to enlarge the disparity among embedding matrices generated from different meta-paths, thereby enriching base learner diversity. We analyze the convergence of HGEN and attest its higher regularization magnitude over simple voting. Experiments on five heterogeneous networks validate that HGEN consistently outperforms its state-of-the-art competitors by substantial margin. Codes are available at https://github.com/Chrisshen12/HGEN.  more » « less
Award ID(s):
2441449 2236578 2446522 2505719
PAR ID:
10638986
Author(s) / Creator(s):
 ;  ;  ;  ;  
Publisher / Repository:
International Joint Conferences on Artificial Intelligence (IJCAI 2025)
Date Published:
Page Range / eLocation ID:
6156 to 6163
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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