Hong Xu

  1. Tuning parameter selection for penalized likelihood estimation of inverse covariance matrix.

    Authors: Xin Gao, Daniel Q. Pu, Yuehua Wu, Hong Xu
    Subjects: Methodology
    Abstract

    In a Gaussian graphical model, the conditional independence between two
    variables are characterized by the corresponding zero entries in the inverse
    covariance matrix. Maximum likelihood method using the smoothly clipped
    absolute deviation (SCAD) penalty (Fan and Li, 2001) and the adaptive LASSO
    penalty (Zou, 2006) have been proposed in literature. In this article, we
    establish the result that using Bayesian information criterion (BIC) to select
    the tuning parameter in penalized likelihood estimation with both types of
    penalties can lead to consistent graphical model selection.

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