Unifying Homophily and Heterophily Network Transformation via Motifs
Yan Ge, Jun Ma, Li Zhang, Haiping Lu

TL;DR
This paper introduces H2NT, a framework that unifies homophily and heterophily in network transformation using motifs, enhancing network embedding quality and efficiency.
Contribution
H2NT is a novel motif-based network transformation method that captures both homophily and heterophily, improving embedding performance and computational efficiency.
Findings
24% improvement in motif prediction precision
Reduces 46% computational time for DeepWalk
Enhances node and role classification accuracy
Abstract
Higher-order proximity (HOP) is fundamental for most network embedding methods due to its significant effects on the quality of node embedding and performance on downstream network analysis tasks. Most existing HOP definitions are based on either homophily to place close and highly interconnected nodes tightly in embedding space or heterophily to place distant but structurally similar nodes together after embedding. In real-world networks, both can co-exist, and thus considering only one could limit the prediction performance and interpretability. However, there is no general and universal solution that takes both into consideration. In this paper, we propose such a simple yet powerful framework called homophily and heterophliy preserving network transformation (H2NT) to capture HOP that flexibly unifies homophily and heterophily. Specifically, H2NT utilises motif representations to…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Complex Network Analysis Techniques
MethodsDeepWalk
