Reeves, GalenMayya, Vaishakhi Sathish2021-01-122021-01-122020https://hdl.handle.net/10161/22211<p>The problem of detecting the community structure of networks as well as closely related problems involving low-rank matrix factorization arise in applications throughout science and engineering. This dissertation focuses on the the fundamental limits of detection and recovery associated with a broad class of probabilistic network models, that includes the stochastic block model with labeled-edges. The main theoretical results are formulas that describe the asymptotically exact limits of the mutual information and reconstruction error. The formulas are described in terms of low-dimensional estimation problems in additive Gaussian noise.</p><p>The analysis builds upon a number of recent theoretical advances at the interface of information theory, random matrix theory, and statistical physics, including concepts such as channel universality and interpolation methods. The theoretical formulas provide insight into the ability to recover the community structure in the network. The analysis is supported by numerical simulations. Numerical simulations for different network models show that the observed performance closely follows the performance predicted by the formulas. </p>Information scienceCommunity detectionFundamental LimitsInformation theoryMMSEFUNDAMENTAL LIMITS FOR COMMUNITY DETECTION IN LABELLED NETWORKSDissertation