Abstract—We propose a class of distributed iterative algo-rithms that enable the asymptotic scaling of a primitive column stochastic matrix, with a given sparsity structure, to a doubly stochastic form. We also demonstrate the application of these algorithms to the average consensus problem in networked multi-component systems. More specifically, we consider a setting where each node is in charge of assigning weights on its outgoing edges based on the weights on its incoming edges. We establish that, as long as the (generally directed) graph that describes the communication links between components is strongly connected, each of the proposed matrix scaling algorithms allows the system components to asymptotically assign, in a distributed fa...
We discuss the possibility of reaching consensus in finite time using only linear iterations, with ...
We consider a multi-component system in which each component (node) can send/receive information to/...
Distributed algorithms for average consensus in directed graphs are typically asymptotic in the lite...
Classical distributed algorithms for asymptotic average consensus typically assume timely and reliab...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
We consider a decentralized network with the following goal: the state at each node of the network i...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
We study the problem of asymptotic consensus as it occurs in a wide range of applications in both ma...
Classical approaches for asymptotic convergence to the global average in a distributed fashion typic...
We propose consensus propagation, an asynchronous distributed protocol for averaging numbers across ...
Consensus strategies find a variety of applications in distributed coordination and decision making ...
Abstract—We discuss the possibility of reaching consensus in finite time using only linear iteration...
Abstract—We find the exact rate for convergence in probability of products of independent, identical...
International audienceNetworked systems of autonomous agents, and applications thereof, often rely o...
We consider the problem of finding a linear iteration that yields distributed averaging consensus ov...
We discuss the possibility of reaching consensus in finite time using only linear iterations, with ...
We consider a multi-component system in which each component (node) can send/receive information to/...
Distributed algorithms for average consensus in directed graphs are typically asymptotic in the lite...
Classical distributed algorithms for asymptotic average consensus typically assume timely and reliab...
This paper gives a lower bound on the convergence rate of a class of network consensus algorithms. T...
We consider a decentralized network with the following goal: the state at each node of the network i...
Stochastic consensus algorithms are considered for multi-agent systems over noisy unbalanced directe...
We study the problem of asymptotic consensus as it occurs in a wide range of applications in both ma...
Classical approaches for asymptotic convergence to the global average in a distributed fashion typic...
We propose consensus propagation, an asynchronous distributed protocol for averaging numbers across ...
Consensus strategies find a variety of applications in distributed coordination and decision making ...
Abstract—We discuss the possibility of reaching consensus in finite time using only linear iteration...
Abstract—We find the exact rate for convergence in probability of products of independent, identical...
International audienceNetworked systems of autonomous agents, and applications thereof, often rely o...
We consider the problem of finding a linear iteration that yields distributed averaging consensus ov...
We discuss the possibility of reaching consensus in finite time using only linear iterations, with ...
We consider a multi-component system in which each component (node) can send/receive information to/...
Distributed algorithms for average consensus in directed graphs are typically asymptotic in the lite...