Description |
Ginestra Bianconi (Queen Mary University of London)
The Higher-order topological Kuramoto model, Global synchronization of topological signals and Dirac synchronization [1] mentioning application and relevance to brain research [2] and pattern formation. Ref:
[1] Millán, A.P., Torres, J.J. and Bianconi, G., 2020. Explosive higher-order Kuramoto dynamics on simplicial complexes. Physical Review Letters, 124(21), p.218301.
[2] Faskowitz, J., Betzel, R.F. and Sporns, O., 2022. Edges in brain networks: Contributions to models of structure and function. Network Neuroscience, 6(1), pp.1-28.
Higher-order networks [1] capture the many-body interactions present in complex systems and are dramatically changing our understanding of the interplay between topology of and dynamics. This field combines higher-order structures with discrete topology, discrete topology and dynamics and shows the emergence of new dynamical states and collective phenomena. Topological signals are dynamical variables, not only sustained on the nodes but also on edges, or even triangles and higher-order cells of higher-order networks. While traditionally network dynamics is studied by focusing only on dynamical variables associated to the nodes of simple and higher-order networks topological signals greatly enrich our understanding of dynamics in discrete topologies. These topological signals are treated by using algebraic topology operators as the Hodge Laplacian and the discrete Dirac operator. Recently, growing attention has been devoted to the study of topological signals showing that topological signals undergo collective phenomena and that they offer new paradigms to understand on one side how topology shape dynamics and on the other side how dynamics learns the underlying network topology. These concepts and idea have wide applications. Here we cover example of their applications in mathematical physics, in dynamical systems and in topological machine learning.
The field is topical at the moment with many new results already established and an Here we propose a series of lectures for a broad audience of scientists addressed mostly to physicist and mathematicians, but including also computer scientists and neuroscientists. The course is planned to be introductory, and self-contained starting from minimum set of prerequisites: We will aim at producing some extensive lecture notes either before the lectures or soon after. The course will cover 4 lectures and 1 seminar.
[1] Bianconi, G.: Higher-order networks: An introduction to simplicial complexes. Cambridge University Press (2021).
Majhi, S., Perc, M., and Ghosh, D.: Dynamics on higher-order networks: A review. Journal of the Royal Society Interface, 19(188):20220043 (2022).
Bick, C., Gross, E., Harrington, H.A., and Schaub, M.T.: What are higher-order networks? SIAM Review, 65(3): 686–731 (2023). |