Node-Specific Triad Pattern Mining for Complex-Network Analysis
Marco Winkler, Joerg Reichardt

TL;DR
This paper introduces a method for mining node-specific triad patterns in complex networks, revealing that motifs are heterogeneously distributed across nodes, which enhances understanding of local network structures.
Contribution
It proposes a novel node-specific triad pattern mining approach, addressing limitations of traditional motif detection by focusing on local node environments.
Findings
Motifs are highly heterogeneously distributed across nodes.
Node-specific analysis reveals local variations in motif abundance.
Feed-forward loops are particularly prominent in certain network regions.
Abstract
The mining of graphs in terms of their local substructure is a well-established methodology to analyze networks. It was hypothesized that motifs - subgraph patterns which appear significantly more often than expected at random - play a key role for the ability of a system to perform its task. Yet the framework commonly used for motif-detection averages over the local environments of all nodes. Therefore, it remains unclear whether motifs are overrepresented in the whole system or only in certain regions. In this contribution, we overcome this limitation by mining node-specific triad patterns. For every vertex, the abundance of each triad pattern is considered only in triads it participates in. We investigate systems of various fields and find that motifs are distributed highly heterogeneously. In particular we focus on the feed-forward loop motif which has been alleged to play a key…
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