Emergence of dynamic properties in network hyper-motifs
Miri Adler, Ruslan Medzhitov

TL;DR
This paper introduces a framework to analyze how higher-order arrangements of network motifs, viewed as hyper-nodes, lead to emergent properties at the mesoscale level across various complex systems.
Contribution
It develops a novel approach to study the mesoscale behavior of networks by modeling motifs as hyper-nodes and analyzing their interactions and emergent properties.
Findings
Hyper-motifs reveal key drivers of network behavior.
Emergent properties relate to motif arrangements and interactions.
Framework applicable to biological, social, and electronic networks.
Abstract
Networks are fundamental for our understanding of complex systems. Interactions between individual nodes in networks generate network motifs - small recurrent patterns that can be considered the network's building-block components, providing certain dynamical properties. However, it remains unclear how network motifs are arranged within networks and what properties emerge from interactions between network motifs. Here we develop a framework to explore the mesoscale-level behavior of complex networks. Considering network motifs as hyper-nodes, we define the rules for their interaction at the network's next level of organization. We infer the favorable arrangements of interactions between network motifs into hyper-motifs from real evolved and designed networks data including biological, neuronal, social, linguistic and electronic networks. We mathematically explore the emergent properties…
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Taxonomy
TopicsNonlinear Dynamics and Pattern Formation · Complex Network Analysis Techniques · Opinion Dynamics and Social Influence
