We study behavior of the restricted maximum likelihood (REML) estimator under a misspecified linear mixed model (LMM) that has received much attention in recent gnome-wide association studies. The asymptotic analysis establishes consistency of the REML estimator of the variance of the errors in the LMM, and convergence in probability of the REML estimator of the variance of the random effects in the LMM to a certain limit, which is equal to the true variance of the random effects multiplied by the limiting proportion of the nonzero random effects present in the LMM. The aymptotic results also establish convergence rate (in probability) of the REML estimators as well as a result ...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Multivariate linear mixed models (mvLMMs) have been widely used in many areas of genet-ics, and have...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
We study variance estimation and associated confidence intervals for parameters characterizing genet...
Genome-wide association studies have been successful in uncovering novel genetic variants that are a...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
This paper explores the asymptotic distribution of the restricted maximum likelihood estimator of th...
Linear mixed models (LMMs) are widely used in genome-wide association studies (GWASs) to account for...
markdownabstractOne of the goals of statistical genetics is to elucidate the genetic architecture of...
In genome-wide association studies (GWAS), penalization is an important approach for identifying gen...
In recent years, advanced technologies have enabled people to collect complex data and the analysis ...
BackgroundMultiple hypothesis testing is a major issue in genome-wide association studies (GWAS), wh...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
Mixed linear models are emerging as a method of choice for conducting genetic association studies in...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Multivariate linear mixed models (mvLMMs) have been widely used in many areas of genet-ics, and have...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
We study variance estimation and associated confidence intervals for parameters characterizing genet...
Genome-wide association studies have been successful in uncovering novel genetic variants that are a...
Motivated by genome-wide association studies, we consider a standard linear model with one additiona...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
This paper explores the asymptotic distribution of the restricted maximum likelihood estimator of th...
Linear mixed models (LMMs) are widely used in genome-wide association studies (GWASs) to account for...
markdownabstractOne of the goals of statistical genetics is to elucidate the genetic architecture of...
In genome-wide association studies (GWAS), penalization is an important approach for identifying gen...
In recent years, advanced technologies have enabled people to collect complex data and the analysis ...
BackgroundMultiple hypothesis testing is a major issue in genome-wide association studies (GWAS), wh...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...
Mixed linear models are emerging as a method of choice for conducting genetic association studies in...
Estimation of variance components by Monte Carlo (MC) expectation maximization (EM) restricted maxim...
Multivariate linear mixed models (mvLMMs) have been widely used in many areas of genet-ics, and have...
Linear mixed models are a powerful statistical tool for identifying genetic associations and avoidin...