TL;DR
This paper introduces degree-based approximation frameworks for analyzing multistate dynamical processes on networks, enabling better understanding of complex phenomena in epidemiology and social sciences.
Contribution
It presents generalized, degree-based approximation methods and open-source tools for analyzing multistate processes, unifying approaches across disciplines.
Findings
Frameworks effectively analyze epidemiological multistate models
Tools demonstrate applicability to social opinion dynamics
Provides a versatile suite for interdisciplinary research
Abstract
Multistate dynamical processes on networks, where nodes can occupy one of a multitude of discrete states, are gaining widespread use because of their ability to recreate realistic, complex behaviour that cannot be adequately captured by simpler binary-state models. In epidemiology, multistate models are employed to predict the evolution of real epidemics, while multistate models are used in the social sciences to study diverse opinions and complex phenomena such as segregation. In this paper, we introduce generalized approximation frameworks for the study and analysis of multistate dynamical processes on networks. These frameworks are degree-based, allowing for the analysis of the effect of network connectivity structures on dynamical processes. We illustrate the utility of our approach with the analysis of two specific dynamical processes from the epidemiological and physical sciences.…
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