LA Probability Forum
Linde Hall 310
Community Detection with the Bethe-Hessian
Yizhe Zhu,
Department of Mathematics,
USC,
The Bethe-Hessian matrix, introduced by Saade, Krzakala, and Zdeborová (2014), is a Hermitian matrix designed for applying spectral clustering algorithms to sparse networks. Rather than employing a non-symmetric and high-dimensional non-backtracking operator, a spectral method based on the Bethe-Hessian matrix is conjectured to also reach the Kesten-Stigum detection threshold in the sparse stochastic block model (SBM). We provide the first rigorous analysis of the Bethe-Hessian spectral method in the SBM under both the bounded expected degree and the growing degree regimes. Joint work with Ludovic Stephan.
For more information, please contact Math Dept by phone at 626-395-4335 or by email at [email protected].
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Caltech/UCLA Joint Probability Seminar Series
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