Multi-view Graph Embedding with Hub Detection for Brain Network Analysis
Guixiang Ma, Chun-Ta Lu, Lifang He, Philip S. Yu, Ann B. Ragin

TL;DR
This paper introduces MVGE-HD, a novel framework that integrates hub detection into multi-view graph embedding to improve brain network analysis by enhancing node clustering clarity and discriminability.
Contribution
It proposes a new auto-weighted framework that jointly learns multi-view graph embeddings and detects hubs, addressing a gap in existing methods.
Findings
Outperforms existing methods on brain network datasets
Enhances node clustering structure clarity
Demonstrates clinical relevance in brain analysis
Abstract
Multi-view graph embedding has become a widely studied problem in the area of graph learning. Most of the existing works on multi-view graph embedding aim to find a shared common node embedding across all the views of the graph by combining the different views in a specific way. Hub detection, as another essential topic in graph mining has also drawn extensive attentions in recent years, especially in the context of brain network analysis. Both the graph embedding and hub detection relate to the node clustering structure of graphs. The multi-view graph embedding usually implies the node clustering structure of the graph based on the multiple views, while the hubs are the boundary-spanning nodes across different node clusters in the graph and thus may potentially influence the clustering structure of the graph. However, none of the existing works in multi-view graph embedding considered…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Complex Network Analysis Techniques · Advanced Graph Neural Networks
