We introduce stochastic time-dependency in evolving graphs: starting from in arbitrary, initial edge probability distribution, at every time step! every edge changes it's state (existing or not) according to a two-state Markovian process with probabilities 1) (edge birth-rate) and q (edge death-rate). If all edge exists at time t then, at time t+1 it dies with probability q. If instead the edge does not exist at time 1, then it will come into existence at time t + 1 with Probability 1). Such evolving graph model is a. wide generalization of time-independent dynamic random graphs [6] and will be called edge-Markovian. dynamic graphs. We investigate the speed of information dissemination in such dynamic graphs. We provide nearly tight; bounds (which in fact turn out to be tight for a wide range of probabilities p and q) oil the completion Chile of the flooding mechanism aiming to broadcast a piece of information from a source node to all nodes. In particular, we provide: i) A tight characterization of the class of edge-Markovian dynamic graphs where flooding time is constant and. thus, it does not asymptotically depend oil the initial probability distribution. ii) A flight characterization of the class of edge-Markovian dynamic graphs where flooding time does not asymptotically depend oil the edge death-rate q.

Clementi, A., Macci, C., Monti, A., Pasquale, F., Silvestri, R. (2008). Flooding time in edge-Markovian dynamic graphs. In Proceedings of the Annual ACM Symposium on Principles of Distributed Computing (pp.213-222). NEW YORK : ASSOC COMPUTING MACHINERY [10.1145/1400751.1400781].

Flooding time in edge-Markovian dynamic graphs

CLEMENTI, ANDREA;MACCI, CLAUDIO;PASQUALE, FRANCESCO;
2008-01-01

Abstract

We introduce stochastic time-dependency in evolving graphs: starting from in arbitrary, initial edge probability distribution, at every time step! every edge changes it's state (existing or not) according to a two-state Markovian process with probabilities 1) (edge birth-rate) and q (edge death-rate). If all edge exists at time t then, at time t+1 it dies with probability q. If instead the edge does not exist at time 1, then it will come into existence at time t + 1 with Probability 1). Such evolving graph model is a. wide generalization of time-independent dynamic random graphs [6] and will be called edge-Markovian. dynamic graphs. We investigate the speed of information dissemination in such dynamic graphs. We provide nearly tight; bounds (which in fact turn out to be tight for a wide range of probabilities p and q) oil the completion Chile of the flooding mechanism aiming to broadcast a piece of information from a source node to all nodes. In particular, we provide: i) A tight characterization of the class of edge-Markovian dynamic graphs where flooding time is constant and. thus, it does not asymptotically depend oil the initial probability distribution. ii) A flight characterization of the class of edge-Markovian dynamic graphs where flooding time does not asymptotically depend oil the edge death-rate q.
27th ACM SIGACT-SIGOPS Symposium on Principles of Distributed Computing
Toronto, CANADA
AUG 18-21, 2008
ACM SIGACT, ACM SIGOPS
Rilevanza internazionale
contributo
2008
Settore INF/01 - INFORMATICA
Settore MAT/06 - PROBABILITA' E STATISTICA MATEMATICA
English
Flooding; Markov processes; Random graphs
Intervento a convegno
Clementi, A., Macci, C., Monti, A., Pasquale, F., Silvestri, R. (2008). Flooding time in edge-Markovian dynamic graphs. In Proceedings of the Annual ACM Symposium on Principles of Distributed Computing (pp.213-222). NEW YORK : ASSOC COMPUTING MACHINERY [10.1145/1400751.1400781].
Clementi, A; Macci, C; Monti, A; Pasquale, F; Silvestri, R
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/29441
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