An iterative sparse algorithm for the penalized maximum likelihood estimator in mixed effects model

被引:0
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作者
Won Son
Jong Soo Lee
Kyeong Eun Lee
Johan Lim
机构
[1] The Bank of Korea,Department of Mathematical Sciences
[2] University of Massachusetts,Department of Statistics
[3] Kyungpook National University,Department of Statistics
[4] Seoul National University,undefined
关键词
Arrow-head matrix; Iterative sparse approximation; Mixed effects model; Penalized maximum likelihood estimator; 65C60; 62J12;
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摘要
In this paper, we propose a new iterative sparse algorithm (ISA) to compute the maximum likelihood estimator (MLE) or penalized MLE of the mixed effects model. The sparse approximation based on the arrow-head (A-H) matrix is one solution which is popularly used in practice. The A-H method provides an easy computation of the inverse of the Hessian matrix and is computationally efficient. However, it often has non-negligible error in approximating the inverse of the Hessian matrix and in the estimation. Unlike the A-H method, in the ISA, the sparse approximation is applied “iteratively” to reduce the approximation error at each Newton Raphson step. The advantages of the ISA over the exact and A-H method are illustrated using several synthetic and real examples.
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页码:482 / 490
页数:8
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