This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. Two different approaches using directed graphs as a main tool are introduced: one is to compute the “scrambling constants” of stochastic matrices associated with “neighbor shared graphs” and the other is to analyze random walks on a sequence of graphs. Both approaches prove that the time to reach consensus within a dynamic network is logarithmic in the relative error and is in worst case exponential in the size of the network
We propose three new algorithms for the distributed averaging and consensus prob-lems: two for the f...
The quantities of coefficient of ergodicity and algebraic connectivity have been used to estimate th...
We study the convergence speed of distributed iterative algorithms for the consensus and averaging p...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
The problem addressed in this paper is the analysis of a distributed consensus algorithm for arbitra...
Abstract—The problem addressed in this paper is the analysis of a distributed consensus algorithm fo...
We consider a consensus algorithm in which every nodein a sequence of undirected, B-connected graphs...
We consider a consensus algorithm in which every node in a time-varying undirected connected graph a...
We consider a consensus algorithm in which every node in a sequence of undirected, B-connected graph...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
This article evaluates convergence rates of binary majority consensus algorithms in networks with di...
We propose three new algorithms for the distributed averaging and consensus prob-lems: two for the f...
The quantities of coefficient of ergodicity and algebraic connectivity have been used to estimate th...
We study the convergence speed of distributed iterative algorithms for the consensus and averaging p...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
The problem addressed in this paper is the analysis of a distributed consensus algorithm for arbitra...
Abstract—The problem addressed in this paper is the analysis of a distributed consensus algorithm fo...
We consider a consensus algorithm in which every nodein a sequence of undirected, B-connected graphs...
We consider a consensus algorithm in which every node in a time-varying undirected connected graph a...
We consider a consensus algorithm in which every node in a sequence of undirected, B-connected graph...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
This article evaluates convergence rates of binary majority consensus algorithms in networks with di...
We propose three new algorithms for the distributed averaging and consensus prob-lems: two for the f...
The quantities of coefficient of ergodicity and algebraic connectivity have been used to estimate th...
We study the convergence speed of distributed iterative algorithms for the consensus and averaging p...