DocumentCode :
82450
Title :
Robustness of Large-Scale Stochastic Matrices to Localized Perturbations
Author :
Como, Giacomo ; Fagnani, Fabio
Author_Institution :
Dept. of Autom. Control, Lund Univ., Lund, Sweden
Volume :
2
Issue :
2
fYear :
2015
fDate :
April-June 1 2015
Firstpage :
53
Lastpage :
64
Abstract :
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 invariant probability vectors of two stochastic matrices differing on a subset W of rows. Such bounds depend on three parameters: the mixing time and the entrance time on the set W for the Markov chain associated to one of the matrices; and the exit probability from the set W for the Markov chain associated to the other matrix. These results, obtained through coupling techniques, prove particularly useful in scenarios where W is a small subset of the state space, even if the difference between the two matrices is not small in any norm. Several applications to large-scale network problems are discussed, including robustness of Google´s PageRank algorithm, distributed averaging, consensus algorithms, and the voter model.
Keywords :
Markov processes; matrix algebra; perturbation techniques; state-space methods; vectors; Google PageRank algorithm; Markov chain; asymptotic behavior; consensus algorithms; coupling techniques; distributed averaging algorithms; engineering; exit probability; invariant probability vectors; large-scale stochastic matrices; linear network dynamics; localized perturbations; network centrality; network science; network structure; opinion dynamics; social networks; state space; voter model; Markov processes; Robustness; Social network services; Standards; Upper bound; World Wide Web; Network centrality; PageRank; consensus; distributed averaging; invariant probability vectors; large-scale networks; resilience; robustness; stochastic matrices; voter model;
fLanguage :
English
Journal_Title :
Network Science and Engineering, IEEE Transactions on
Publisher :
ieee
ISSN :
2327-4697
Type :
jour
DOI :
10.1109/TNSE.2015.2438818
Filename :
7115154
Link To Document :
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