| Literature DB >> 31592195 |
Hua Zhou1, Liuyi Hu2, Jin Zhou3, Kenneth Lange4.
Abstract
Variance components estimation and mixed model analysis are central themes in statistics with applications in numerous scientific disciplines. Despite the best efforts of generations of statisticians and numerical analysts, maximum likelihood estimation and restricted maximum likelihood estimation of variance component models remain numerically challenging. Building on the minorization-maximization (MM) principle, this paper presents a novel iterative algorithm for variance components estimation. Our MM algorithm is trivial to implement and competitive on large data problems. The algorithm readily extends to more complicated problems such as linear mixed models, multivariate response models possibly with missing data, maximum a posteriori estimation, and penalized estimation. We establish the global convergence of the MM algorithm to a Karush-Kuhn-Tucker (KKT) point and demonstrate, both numerically and theoretically, that it converges faster than the classical EM algorithm when the number of variance components is greater than two and all covariance matrices are positive definite.Entities:
Keywords: global convergence; linear mixed model (LMM); matrix convexity; maximum a posteriori (MAP) estimation; minorization-maximization (MM); multivariate response; penalized estimation; variance components model
Year: 2019 PMID: 31592195 PMCID: PMC6779174 DOI: 10.1080/10618600.2018.1529601
Source DB: PubMed Journal: J Comput Graph Stat ISSN: 1061-8600 Impact factor: 2.302