Katya Scheinberg

  1. Sparse Inverse Covariance Selection via Alternating Linearization Methods.

    Authors: Donald Goldfarb, Shiqian Ma, Katya Scheinberg
    Subjects: Learning
    Abstract

    Gaussian graphical models are of great interest in statistical learning.
    Because the conditional independencies between different nodes correspond to
    zero entries in the inverse covariance matrix of the Gaussian distribution, one
    can learn the structure of the graph by estimating a sparse inverse covariance
    matrix from sample data, by solving a convex maximum likelihood problem with an
    $\ell_1$-regularization term.

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