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Finding the Graph of Epidemic Cascades

8 February 2012
Praneeth Netrapalli
Sujay Sanghavi
ArXiv (abs)PDFHTML
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 into nnn local problems -- one for each node. For a node of degree ddd, we show that its neighborhood can be reliably found once it has been infected O(d2log⁡n)O(d^2 \log n)O(d2logn) times (for ML on general graphs) or O(dlog⁡n)O(d\log n)O(dlogn) times (for greedy on trees). We also provide a corresponding information-theoretic lower bound of Ω(dlog⁡n)\Omega(d\log n)Ω(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 size nnn. 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.

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