Many notions of network centrality can be formulated in terms of invariant probability vectors of suitably defined stochastic matrices encoding the network structure. Analogously, invariant probability vectors of stochastic matrices allow one to characterize the asymptotic behavior of many linear network dynamics, e.g., arising in opinion dynamics in social networks as well as in distributed averaging algorithms for estimation or control. Hence, a central problem in network science and engineering is that of assessing the robustness of such invariant probability vectors to perturbations possibly localized on some relatively small part of the network. In this work, upper bounds are derived on the total variation distance between the invarian...
Mathematical models of networked dynamical systems are ubiquitous - they are used to study power gri...
Inhomogeneous products of stochastic matrices are ubiquitous in mathematics and engineering. They ap...
Many real-world systems are characterized by stochastic dynamical rules where a complex network of i...
Abstract — What influence can be exerted by one or a few nodes in the consensus or stationary distri...
A metric on the space of probability measures on the state of a large network is introduced, with re...
Complex networks can model the structure and dynamics of different types of systems. It has been sho...
AbstractDespite considerable works, the numerical analysis of large chains remains a difficult probl...
Abstract. For many Markov chains of practical interest, the invariant distri-bution is extremely sen...
Distributed consensus and other linear systems with system stochastic matrices Wk emerge in various ...
In this paper we develop tools to analyse a recently proposed random matrix model of communication n...
In this paper we develop tools to analyse a recently proposed random matrix model of communication n...
In this paper we develop tools to analyse a recently proposed random matrix model of communication n...
The resource network is a non-linear threshold model where vertices exchange resource in infinite di...
<p>Graph signal processing analyzes signals supported on the nodes of a network with respect to a sh...
Mathematical models of networked dynamical systems are ubiquitous - they are used to study power gri...
Mathematical models of networked dynamical systems are ubiquitous - they are used to study power gri...
Inhomogeneous products of stochastic matrices are ubiquitous in mathematics and engineering. They ap...
Many real-world systems are characterized by stochastic dynamical rules where a complex network of i...
Abstract — What influence can be exerted by one or a few nodes in the consensus or stationary distri...
A metric on the space of probability measures on the state of a large network is introduced, with re...
Complex networks can model the structure and dynamics of different types of systems. It has been sho...
AbstractDespite considerable works, the numerical analysis of large chains remains a difficult probl...
Abstract. For many Markov chains of practical interest, the invariant distri-bution is extremely sen...
Distributed consensus and other linear systems with system stochastic matrices Wk emerge in various ...
In this paper we develop tools to analyse a recently proposed random matrix model of communication n...
In this paper we develop tools to analyse a recently proposed random matrix model of communication n...
In this paper we develop tools to analyse a recently proposed random matrix model of communication n...
The resource network is a non-linear threshold model where vertices exchange resource in infinite di...
<p>Graph signal processing analyzes signals supported on the nodes of a network with respect to a sh...
Mathematical models of networked dynamical systems are ubiquitous - they are used to study power gri...
Mathematical models of networked dynamical systems are ubiquitous - they are used to study power gri...
Inhomogeneous products of stochastic matrices are ubiquitous in mathematics and engineering. They ap...
Many real-world systems are characterized by stochastic dynamical rules where a complex network of i...