Title:
Information-theoretic metrics of higher-order interactions on graphs
Abstract:
In this work, we contribute to the growing understanding of
higher-order interactions (those involving more than two variables),
in particular the distinction between higher-order mechanisms and
higher-order behaviors. We employ a newly-developed metric based on
information theory to detect the presence of higher-order behaviors
from time-series data. Our work comprises a thorough numerical study
of the behavior of this metric under different synthetic dynamics and
models for epidemic spreading on small graphs. The ultimate aim is
applying this methodology to identify higher-order mechanisms in
dynamics on complex networks, and in general to study the synergies
resulting from network effects. To this end, we also present
preliminary results on applying this metric on SIS dynamics on small
networks. The methods explored in this work have the potential to
illuminate our understanding of higher-order interactions, their
definition and importance, and thus of the nature of complex systems
in general.
Presential at IFISC's seminars room and online at https://us06web.zoom.us/j/84189947714?pwd=4xmMKs6rq3res6OGYEo6FotkW3D2Ca.1
Detalles de contacto:
Sandro Meloni Contact form