4.5 Article

Missing values: sparse inverse covariance estimation and an extension to sparse regression

期刊

STATISTICS AND COMPUTING
卷 22, 期 1, 页码 219-235

出版社

SPRINGER
DOI: 10.1007/s11222-010-9219-7

关键词

Gaussian graphical model; Lasso; Missing data; EM algorithm; Two-stage likelihood

资金

  1. Novartis International AG, Basel, Switzerland

向作者/读者索取更多资源

We propose an a (1)-regularized likelihood method for estimating the inverse covariance matrix in the high-dimensional multivariate normal model in presence of missing data. Our method is based on the assumption that the data are missing at random (MAR) which entails also the completely missing at random case. The implementation of the method is non-trivial as the observed negative log-likelihood generally is a complicated and non-convex function. We propose an efficient EM algorithm for optimization with provable numerical convergence properties. Furthermore, we extend the methodology to handle missing values in a sparse regression context. We demonstrate both methods on simulated and real data.

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