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 th...
Complex systems are large collections of entities that organize themselves into non-trivial structur...
The past recent years have seen a large increase in the study of complex networks. This interest has...
In this paper we introduce a general Markov chain model of dynamical processes on networks. In this ...
Using an information theoretic point of view, we investigate how a dynamics acting on a network can ...
This chapter discusses the interplay between structure and dynamics in complex networks. Given a par...
We study the large time fluctuations of entropy production in Markov processes. In particular, we co...
This chapter discusses the interplay between structure and dynamics in complex networks. Given a par...
We study the large time fluctuations of entropy production in Markov processes. In particular, we co...
Here we present the entropic dynamics formalism for networks. That is, a framework for the dynamics ...
Robustness and entropy are widely used concepts in the study of networks in various disciplines. The...
As effective representations of complex systems, complex networks have attracted scholarly attention...
An information-theoretic perspective on coarse-graining is presented. It starts with an information ...
Cellular automata (CA) are a remarkably efficient tool for exploring general properties of complex s...
We consider relations of structure and dynamics in complex networks. Firstly, a dynamical perspectiv...
Abstract. Complex networks are characterized by highly heterogeneous distributions of links, often p...
Complex systems are large collections of entities that organize themselves into non-trivial structur...
The past recent years have seen a large increase in the study of complex networks. This interest has...
In this paper we introduce a general Markov chain model of dynamical processes on networks. In this ...
Using an information theoretic point of view, we investigate how a dynamics acting on a network can ...
This chapter discusses the interplay between structure and dynamics in complex networks. Given a par...
We study the large time fluctuations of entropy production in Markov processes. In particular, we co...
This chapter discusses the interplay between structure and dynamics in complex networks. Given a par...
We study the large time fluctuations of entropy production in Markov processes. In particular, we co...
Here we present the entropic dynamics formalism for networks. That is, a framework for the dynamics ...
Robustness and entropy are widely used concepts in the study of networks in various disciplines. The...
As effective representations of complex systems, complex networks have attracted scholarly attention...
An information-theoretic perspective on coarse-graining is presented. It starts with an information ...
Cellular automata (CA) are a remarkably efficient tool for exploring general properties of complex s...
We consider relations of structure and dynamics in complex networks. Firstly, a dynamical perspectiv...
Abstract. Complex networks are characterized by highly heterogeneous distributions of links, often p...
Complex systems are large collections of entities that organize themselves into non-trivial structur...
The past recent years have seen a large increase in the study of complex networks. This interest has...
In this paper we introduce a general Markov chain model of dynamical processes on networks. In this ...