Tight bounds on sparse perturbations of Markov Chains Romain Hollanders Giacomo Como Jean-Charles Delvenne Raphaël Jungers UCLouvain University of Lund.

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Presentation transcript:

Tight bounds on sparse perturbations of Markov Chains Romain Hollanders Giacomo Como Jean-Charles Delvenne Raphaël Jungers UCLouvain University of Lund MTNS’2014

PageRank is the average portion of time spent in a node During an infinite random walk

PageRank is the average portion of time spent in a node During an infinite random walk

PageRank : PageRank is the average portion of time spent in a node During an infinite random walk

PageRank : How much can a few nodes affect the PageRank values ?

PageRank : How much can a few nodes affect the PageRank values ?

PageRank : How much can a few nodes affect the PageRank values ?

PageRank : How much can a few nodes affect the PageRank values ?

Consensus : How much can a few nodes affect a consensus ?

Consensus : the weight of each agent in the final decision How much can a few nodes affect a consensus ?

Consensus : How much can a few nodes affect a consensus ?

Typically blows up when the network size grows Sensitive mainly to the magnitude of the perturbation We need better, tighter bounds, adapted to local perturbations ! Weak bounds already exist They depend more on the size than the structure of the network / perturbation

Captures local perturbationsProvides physical insight Difficult (impossible?) to extend to other norms No reason to believe that it is tight Como & Fagnani proposed a bound for the 1-norm mixing time a nice increasing function

Exactly and in polynomial time

probability 1

??

A counter example

We need to loop through every candidate “worst-node”…

Perspectives Extend the approach to other norms Compare the results with Como & Fagnani’s bound especially the 1-norm to establish its quality

Thank you