Abstract

This paper considers the robust estimation of the mean and covariance matrix for incomplete multivariate observations with the monotone missing-data pattern. First, we develop two efficient numerical algorithms for the existing robust estimator for the monotone incomplete data, i.e., the maximum likelihood (ML) estimator assuming the samples are from a Student’s t-distribution. The proposed algorithms can be more than one order of magnitude faster than the existing algorithms. Then, to deal with the unreliability and the inapplicability of the Student’s t ML estimator when the number of samples is relatively small compared to the dimension of parameters, we propose a regularized robust estimator, which is defined as the maximizer of a penalized log-likelihood. The penalty term is constructed with a prior target as its global maximizer, towards which the estimator will shrink the mean and covariance matrix. In addition, two numerical algorithms are derived for the regularized estimator. Numerical simulations show the fast convergence rates of the proposed algorithms and the good estimation accuracy of the proposed regularized estimator.

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