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Main Authors: Li, Zhaoqing, Jiang, Maiqi, Chen, Shengyuan, Li, Bo, Chen, Guorong, Huang, Xiao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.07598
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author Li, Zhaoqing
Jiang, Maiqi
Chen, Shengyuan
Li, Bo
Chen, Guorong
Huang, Xiao
author_facet Li, Zhaoqing
Jiang, Maiqi
Chen, Shengyuan
Li, Bo
Chen, Guorong
Huang, Xiao
contents Heterogeneous information networks (HINs) can be used to model various real-world systems. As HINs consist of multiple types of nodes, edges, and node features, it is nontrivial to directly apply graph neural network (GNN) techniques in heterogeneous cases. There are two remaining major challenges. First, homogeneous message passing in a recursive manner neglects the distinct types of nodes and edges in different hops, leading to unnecessary information mixing. This often results in the incorporation of ``noise'' from uncorrelated intermediate neighbors, thereby degrading performance. Second, feature learning should be handled differently for different types, which is challenging especially when the type sizes are large. To bridge this gap, we develop a novel framework - AutoGNR, to directly utilize and automatically extract effective heterogeneous information. Instead of recursive homogeneous message passing, we introduce a non-recursive message passing mechanism for GNN to mitigate noise from uncorrelated node types in HINs. Furthermore, under the non-recursive framework, we manage to efficiently perform neural architecture search for an optimal GNN structure in a differentiable way, which can automatically define the heterogeneous paths for aggregation. Our tailored search space encompasses more effective candidates while maintaining a tractable size. Experiments show that AutoGNR consistently outperforms state-of-the-art methods on both normal and large scale real-world HIN datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2501_07598
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Automated Heterogeneous Network learning with Non-Recursive Message Passing
Li, Zhaoqing
Jiang, Maiqi
Chen, Shengyuan
Li, Bo
Chen, Guorong
Huang, Xiao
Machine Learning
Heterogeneous information networks (HINs) can be used to model various real-world systems. As HINs consist of multiple types of nodes, edges, and node features, it is nontrivial to directly apply graph neural network (GNN) techniques in heterogeneous cases. There are two remaining major challenges. First, homogeneous message passing in a recursive manner neglects the distinct types of nodes and edges in different hops, leading to unnecessary information mixing. This often results in the incorporation of ``noise'' from uncorrelated intermediate neighbors, thereby degrading performance. Second, feature learning should be handled differently for different types, which is challenging especially when the type sizes are large. To bridge this gap, we develop a novel framework - AutoGNR, to directly utilize and automatically extract effective heterogeneous information. Instead of recursive homogeneous message passing, we introduce a non-recursive message passing mechanism for GNN to mitigate noise from uncorrelated node types in HINs. Furthermore, under the non-recursive framework, we manage to efficiently perform neural architecture search for an optimal GNN structure in a differentiable way, which can automatically define the heterogeneous paths for aggregation. Our tailored search space encompasses more effective candidates while maintaining a tractable size. Experiments show that AutoGNR consistently outperforms state-of-the-art methods on both normal and large scale real-world HIN datasets.
title Automated Heterogeneous Network learning with Non-Recursive Message Passing
topic Machine Learning
url https://arxiv.org/abs/2501.07598