协变量
借记
Lasso(编程语言)
结果(博弈论)
统计
相关性
残余物
推论
数学
协方差
逻辑回归
协方差矩阵
计量经济学
变量(数学)
计算机科学
算法
人工智能
心理学
几何学
万维网
认知科学
数学分析
数理经济学
作者
Michael Celentano,Andrea Montanari
标识
DOI:10.1093/jrsssb/qkae039
摘要
Abstract We consider the problem of estimating a low-dimensional parameter in high-dimensional linear regression. Constructing an approximately unbiased estimate of the parameter of interest is a crucial step towards performing statistical inference. Several authors suggest to orthogonalize both the variable of interest and the outcome with respect to the nuisance variables, and then regress the residual outcome with respect to the residual variable. This is possible if the covariance structure of the regressors is perfectly known, or is sufficiently structured that it can be estimated accurately from data (e.g. the precision matrix is sufficiently sparse). Here we consider a regime in which the covariate model can only be estimated inaccurately, and hence existing debiasing approaches are not guaranteed to work. We propose the correlation adjusted debiased Lasso, which nearly eliminates this bias in some cases, including cases in which the estimation errors are neither negligible nor orthogonal.
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