线性模型
选型
Lasso(编程语言)
计算机科学
选择(遗传算法)
广义线性混合模型
信息标准
贝叶斯信息准则
协方差
混合模型
特征选择
线性回归
数学优化
数学
机器学习
统计
万维网
作者
Samuel Müller,Janice L. Scealy,A. H. Welsh
出处
期刊:Statistical Science
[Institute of Mathematical Statistics]
日期:2013-05-01
卷期号:28 (2)
被引量:235
摘要
Linear mixed effects models are highly flexible in handling a broad range of data types and are therefore widely used in applications. A key part in the analysis of data is model selection, which often aims to choose a parsimonious model with other desirable properties from a possibly very large set of candidate statistical models. Over the last 5–10 years the literature on model selection in linear mixed models has grown extremely rapidly. The problem is much more complicated than in linear regression because selection on the covariance structure is not straightforward due to computational issues and boundary problems arising from positive semidefinite constraints on covariance matrices. To obtain a better understanding of the available methods, their properties and the relationships between them, we review a large body of literature on linear mixed model selection. We arrange, implement, discuss and compare model selection methods based on four major approaches: information criteria such as AIC or BIC, shrinkage methods based on penalized loss functions such as LASSO, the Fence procedure and Bayesian techniques.
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