DocumentCode :
740093
Title :
Consensus Over Random Graph Processes: Network Borel–Cantelli Lemmas for Almost Sure Convergence
Author :
Shi, Guodong ; Anderson, Brian D. O. ; Johansson, Karl Henrik
Author_Institution :
Research School of Engineering, College of Engineering and Computer Science, Australian National University, Canberra, Australia
Volume :
61
Issue :
10
fYear :
2015
Firstpage :
5690
Lastpage :
5707
Abstract :
Distributed consensus computation over random graph processes is considered. The random graph process is defined as a sequence of random variables which take values from the set of all possible digraphs over the node set. At each time step, every node updates its state based on a Bernoulli trial, independent in time and among different nodes: either averaging among the neighbor set generated by the random graph, or sticking with its current state. The connectivity-independence and arc-independence are introduced to capture the fundamental influence of the random graphs on the consensus convergence. Necessary and/or sufficient conditions are presented on the success probabilities of the Bernoulli trials for the network to reach a global almost sure consensus, with some sharp threshold established revealing a consensus zero-one law. Convergence rates are established by the lower and upper bounds of the \\epsilon -computation time. We also generalize the concepts of connectivity/arc independence to their analogues from the *-mixing point of view, so that our results apply to a very wide class of graphical models, including the majority of random graph models in the literature, e.g., Erdős–Rényi, gossiping, and Markovian random graphs. We show that under *-mixing, our convergence analysis continues to hold and the corresponding almost sure consensus conditions are established. Finally, we further investigate almost sure finite-time convergence of random gossiping algorithms, and prove that the Bernoulli trials play a key role in ensuring finite-time convergence. These results add to the understanding of the interplay between random graphs, random computations, and convergence probability for distributed information processing.
Keywords :
Algorithm design and analysis; Australia; Computer science; Convergence; Information processing; Random variables; Upper bound; Consensus algorithms; Gossiping; Random graphs; Zero-One law; gossiping; random graphs; zero-one law;
fLanguage :
English
Journal_Title :
Information Theory, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9448
Type :
jour
DOI :
10.1109/TIT.2015.2468584
Filename :
7194804
Link To Document :
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