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      Hypergraph assortativity: A dynamical systems perspective

      1 , 1
      Chaos: An Interdisciplinary Journal of Nonlinear Science
      AIP Publishing

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          Abstract

          The largest eigenvalue of the matrix describing a network’s contact structure is often important in predicting the behavior of dynamical processes. We extend this notion to hypergraphs and motivate the importance of an analogous eigenvalue, the expansion eigenvalue, for hypergraph dynamical processes. Using a mean-field approach, we derive an approximation to the expansion eigenvalue in terms of the degree sequence for uncorrelated hypergraphs. We introduce a generative model for hypergraphs that includes degree assortativity, and use a perturbation approach to derive an approximation to the expansion eigenvalue for assortative hypergraphs. We define the dynamical assortativity, a dynamically sensible definition of assortativity for uniform hypergraphs, and describe how reducing the dynamical assortativity of hypergraphs through preferential rewiring can extinguish epidemics. We validate our results with both synthetic and empirical datasets.

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          Most cited references48

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          Assortative Mixing in Networks

          M. Newman (2002)
          A network is said to show assortative mixing if the nodes in the network that have many connections tend to be connected to other nodes with many connections. Here we measure mixing patterns in a variety of networks and find that social networks are mostly assortatively mixed, but that technological and biological networks tend to be disassortative. We propose a model of an assortatively mixed network, which we study both analytically and numerically. Within this model we find that networks percolate more easily if they are assortative and that they are also more robust to vertex removal.
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            Complex networks: Structure and dynamics

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              Power and Centrality: A Family of Measures

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                Author and article information

                Contributors
                (View ORCID Profile)
                (View ORCID Profile)
                Journal
                Chaos: An Interdisciplinary Journal of Nonlinear Science
                Chaos
                AIP Publishing
                1054-1500
                1089-7682
                May 2022
                May 2022
                : 32
                : 5
                : 053113
                Affiliations
                [1 ]Department of Applied Mathematics, University of Colorado at Boulder, Boulder, Colorado 80309, USA
                Article
                10.1063/5.0086905
                35649990
                7ae4ea75-6dd2-4f26-b19c-3517c512ce64
                © 2022
                History

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