简化回归模型的高效计算。

IF 1.8 4区 数学 Q1 STATISTICS & PROBABILITY American Statistician Pub Date : 2017-01-01 Epub Date: 2017-02-28 DOI:10.1080/00031305.2017.1296375
Stuart R Lipsitz, Garrett M Fitzmaurice, Debajyoti Sinha, Nathanael Hevelone, Edward Giovannucci, Quoc-Dien Trinh, Jim C Hu
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引用次数: 1

摘要

我们考虑拟合和评估回归子模型的设置,这些回归子模型是由于各种解释变量被排除在更大的回归模型之外而产生的。较大的模型称为完整模型;子模型是简化的模型。研究表明,基于全模型估计的回归参数和协方差矩阵,可以通过加权最小二乘(WLS)方法获得任意约简模型下回归估计的计算效率近似值。这种WLS方法可以看作是Lawless和Singhal提出的一阶泰勒级数方法的无偏估计方程的推广。利用2010年全国住院患者样本(NIS)的数据,我们说明了WLS方法在拟合区间截除回归模型以估计手术类型(机器人手术与非机器人手术)对住院时间的影响时的方法,同时调整了三组协变量:患者级特征、医院特征和邮政编码级特征。通常,简化模型与NIS数据的标准拟合大约需要10个小时;使用所提出的WLS方法,简化模型需要几秒钟的时间来拟合。
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Efficient Computation of Reduced Regression Models.

We consider settings where it is of interest to fit and assess regression submodels that arise as various explanatory variables are excluded from a larger regression model. The larger model is referred to as the full model; the submodels are the reduced models. We show that a computationally efficient approximation to the regression estimates under any reduced model can be obtained from a simple weighted least squares (WLS) approach based on the estimated regression parameters and covariance matrix from the full model. This WLS approach can be considered an extension to unbiased estimating equations of a first-order Taylor series approach proposed by Lawless and Singhal. Using data from the 2010 Nationwide Inpatient Sample (NIS), a 20% weighted, stratified, cluster sample of approximately 8 million hospital stays from approximately 1000 hospitals, we illustrate the WLS approach when fitting interval censored regression models to estimate the effect of type of surgery (robotic versus nonrobotic surgery) on hospital length-of-stay while adjusting for three sets of covariates: patient-level characteristics, hospital characteristics, and zip-code level characteristics. Ordinarily, standard fitting of the reduced models to the NIS data takes approximately 10 hours; using the proposed WLS approach, the reduced models take seconds to fit.

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来源期刊
American Statistician
American Statistician 数学-统计学与概率论
CiteScore
3.50
自引率
5.60%
发文量
64
审稿时长
>12 weeks
期刊介绍: Are you looking for general-interest articles about current national and international statistical problems and programs; interesting and fun articles of a general nature about statistics and its applications; or the teaching of statistics? Then you are looking for The American Statistician (TAS), published quarterly by the American Statistical Association. TAS contains timely articles organized into the following sections: Statistical Practice, General, Teacher''s Corner, History Corner, Interdisciplinary, Statistical Computing and Graphics, Reviews of Books and Teaching Materials, and Letters to the Editor.
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