Rooting out the Rumor Culprit from Suspects
Wenxiang Dong, Wenyi Zhang, Chee Wei Tan

TL;DR
This paper develops a MAP estimator using rumor centrality to identify the source of a rumor in networks with suspect nodes, analyzing detection probabilities under various suspect configurations and network degrees.
Contribution
It introduces a generalized local rumor center concept and characterizes detection probabilities for different suspect scenarios in regular tree networks.
Findings
Detection probability increases with node degree and decreases with the number of infected nodes.
Connected suspect subgraphs lead to higher detection accuracy, especially as grows.
Two suspects with greater separation are more reliably identified.
Abstract
Suppose that a rumor originating from a single source among a set of suspects spreads in a network, how to root out this rumor source? With the a priori knowledge of suspect nodes and an observation of infected nodes, we construct a maximum a posteriori (MAP) estimator to identify the rumor source using the susceptible-infected (SI) model. The a priori suspect set and its associated connectivity bring about new ingredients to the problem, and thus we propose to use local rumor center, a generalized concept based on rumor centrality, to identify the source from suspects. For regular tree-type networks of node degree {\delta}, we characterize Pc(n), the correct detection probability of the estimator upon observing n infected nodes, in both the finite and asymptotic regimes. First, when every infected node is a suspect, Pc(n) asymptotically grows from 0.25 to 0.307 with {\delta} from 3 to…
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