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arxiv: 1311.5552 · v3 · pith:SYMYIRTAnew · submitted 2013-11-21 · 💻 cs.SI · cs.LG· math.ST· physics.soc-ph· stat.ML· stat.TH

Bayesian Discovery of Threat Networks

classification 💻 cs.SI cs.LGmath.STphysics.soc-phstat.MLstat.TH
keywords networksalgorithmbayesiandetectionrandomthreatcovertdiffusion
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A novel unified Bayesian framework for network detection is developed, under which a detection algorithm is derived based on random walks on graphs. The algorithm detects threat networks using partial observations of their activity, and is proved to be optimum in the Neyman-Pearson sense. The algorithm is defined by a graph, at least one observation, and a diffusion model for threat. A link to well-known spectral detection methods is provided, and the equivalence of the random walk and harmonic solutions to the Bayesian formulation is proven. A general diffusion model is introduced that utilizes spatio-temporal relationships between vertices, and is used for a specific space-time formulation that leads to significant performance improvements on coordinated covert networks. This performance is demonstrated using a new hybrid mixed-membership blockmodel introduced to simulate random covert networks with realistic properties.

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