Title of article :
Covariance structure approximation via gLasso in high-dimensional supervised classification
Author/Authors :
Tatjana Pavlenko، نويسنده , , Anders Bj?rkstr?m&Annika Tillander، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Recent work has shown that the Lasso-based regularization is very useful for estimating the highdimensional
inverse covariance matrix.A particularly useful scheme is based on penalizing the 1 norm of
the off-diagonal elements to encourage sparsity.We embed this type of regularization into high-dimensional
classification. A two-stage estimation procedure is proposed which first recovers structural zeros of the
inverse covariance matrix and then enforces block sparsity by moving non-zeros closer to the main diagonal.
We show that the block-diagonal approximation of the inverse covariance matrix leads to an additive
classifier, and demonstrate that accounting for the structure can yield better performance accuracy. Effect
of the block size on classification is explored, and a class of asymptotically equivalent structure approximations
in a high-dimensional setting is specified. We suggest a variable selection at the block level and
investigate properties of this procedure in growing dimension asymptotics.We present a consistency result
on the feature selection procedure, establish asymptotic lower an upper bounds for the fraction of separative
blocks and specify constraints under which the reliable classification with block-wise feature selection can
be performed. The relevance and benefits of the proposed approach are illustrated on both simulated and
real data.
Keywords :
graphical Lasso , separation strength , classification accuracy , High dimensionality , sparsity , block-diagonal covariance structure
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS