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Computer Science > Social and Information Networks
Title: Finding the Graph of Epidemic Cascades
(Submitted on 8 Feb 2012)
Abstract: We consider the problem of finding the graph on which an epidemic cascade spreads, given only the times when each node gets infected. While this is a problem of importance in several contexts -- offline and online social networks, e-commerce, epidemiology, vulnerabilities in infrastructure networks -- there has been very little work, analytical or empirical, on finding the graph. Clearly, it is impossible to do so from just one cascade; our interest is in learning the graph from a small number of cascades.
For the classic and popular "independent cascade" SIR epidemics, we analytically establish the number of cascades required by both the global maximum-likelihood (ML) estimator, and a natural greedy algorithm. Both results are based on a key observation: the global graph learning problem decouples inton local problems -- one for each node. For a node of degreed , we show that its neighborhood can be reliably found once it has been infectedO(d2logn) times (for ML on general graphs) orO(dlogn) times (for greedy on trees). We also provide a corresponding information-theoretic lower bound ofΩ(dlogn) ; thus our bounds are essentially tight. Furthermore, if we are given side-information in the form of a super-graph of the actual graph (as is often the case), then the number of cascade samples required -- in all cases -- becomes independent of the network sizen .
Finally, we show that for a very general SIR epidemic cascade model, the Markov graph of infection times is obtained via the moralization of the network graph.
Submission history
From: Praneeth Netrapalli [view email][v1] Wed, 8 Feb 2012 17:46:09 GMT (180kb,D)