Robust Attributed Graph Alignment via Joint Structure Learning and
Optimal Transport
- URL: http://arxiv.org/abs/2301.12721v2
- Date: Thu, 20 Apr 2023 15:04:48 GMT
- Title: Robust Attributed Graph Alignment via Joint Structure Learning and
Optimal Transport
- Authors: Jianheng Tang, Weiqi Zhang, Jiajin Li, Kangfei Zhao, Fugee Tsung, Jia
Li
- Abstract summary: We propose SLOTAlign, an unsupervised graph alignment framework that jointly performs Structure Learning and Optimal Transport Alignment.
We incorporate multi-view structure learning to enhance graph representation power and reduce the effect of structure and feature inconsistency inherited across graphs.
The proposed SLOTAlign shows superior performance and strongest robustness over seven unsupervised graph alignment methods and five specialized KG alignment methods.
- Score: 26.58964162799207
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Graph alignment, which aims at identifying corresponding entities across
multiple networks, has been widely applied in various domains. As the graphs to
be aligned are usually constructed from different sources, the inconsistency
issues of structures and features between two graphs are ubiquitous in
real-world applications. Most existing methods follow the
``embed-then-cross-compare'' paradigm, which computes node embeddings in each
graph and then processes node correspondences based on cross-graph embedding
comparison. However, we find these methods are unstable and sub-optimal when
structure or feature inconsistency appears. To this end, we propose SLOTAlign,
an unsupervised graph alignment framework that jointly performs Structure
Learning and Optimal Transport Alignment. We convert graph alignment to an
optimal transport problem between two intra-graph matrices without the
requirement of cross-graph comparison. We further incorporate multi-view
structure learning to enhance graph representation power and reduce the effect
of structure and feature inconsistency inherited across graphs. Moreover, an
alternating scheme based algorithm has been developed to address the joint
optimization problem in SLOTAlign, and the provable convergence result is also
established. Finally, we conduct extensive experiments on six unsupervised
graph alignment datasets and the DBP15K knowledge graph (KG) alignment
benchmark dataset. The proposed SLOTAlign shows superior performance and
strongest robustness over seven unsupervised graph alignment methods and five
specialized KG alignment methods.
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