TL;DR
This paper explores how coarse graining of network dynamics using graph partitions affects the resulting simplified models, employing information theory and entrograms to analyze different macro-scale descriptions.
Contribution
It introduces the use of entrograms to analyze and visualize how various graph partitions influence the properties of coarse grained Markov processes on networks.
Findings
Different partitions capture distinct features of the original dynamics.
Coarse graining can reveal time-scale separation or preserve Markov properties.
Structural patterns influence the effectiveness of coarse grained models.
Abstract
Using an information theoretic point of view, we investigate how a dynamics acting on a network can be coarse grained through the use of graph partitions. Specifically, we are interested in how aggregating the state space of a Markov process according to a partition impacts on the thus obtained lower-dimensional dynamics. We highlight that for a dynamics on a particular graph there may be multiple coarse grained descriptions that capture different, incomparable features of the original process. For instance, a coarse graining induced by one partition may be commensurate with a time-scale separation in the dynamics, while another coarse graining may correspond to a different lower-dimensional dynamics that preserves the Markov property of the original process. Taking inspiration from the literature of Computational Mechanics, we find that a convenient tool to summarise and visualise such…
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