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We propose a simple and general resampling strategy to estimatevariances for parameter estimators derived from nonsmooth estimatingfunctions. This approach applies to a wide variety of semiparametricand nonparametric problems in biostatistics. It does not requiresolving estimating equations and is thus much faster than theexisting resampling procedures. Its usefulness is illustratedwith heteroscedastic quantile regression and censored data rankregression. Numerical results based on simulated and real dataare provided.  相似文献   

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A simple resampling method by perturbing the minimand   总被引:3,自引:0,他引:3  
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On importance resampling for the bootstrap   总被引:1,自引:0,他引:1  
DO  KIM-ANH; HALL  PETER 《Biometrika》1991,78(1):161-167
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A bootstrap based on the estimating equations of the linear model   总被引:2,自引:0,他引:2  
HU  FEIFANG; ZIDEK  JAMES V. 《Biometrika》1995,82(2):263-275
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A crossvalidation method for estimating conditional densities   总被引:1,自引:0,他引:1  
Fan  Jianqing; Yim  Tsz Ho 《Biometrika》2004,91(4):819-834
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Dudoit S  Fridlyand J 《Genome biology》2002,3(7):research0036.1-research003621

Background  

Microarray technology is increasingly being applied in biological and medical research to address a wide range of problems, such as the classification of tumors. An important statistical problem associated with tumor classification is the identification of new tumor classes using gene-expression profiles. Two essential aspects of this clustering problem are: to estimate the number of clusters, if any, in a dataset; and to allocate tumor samples to these clusters, and assess the confidence of cluster assignments for individual samples. Here we address the first of these problems.  相似文献   

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Small area estimation with M‐quantile models was proposed by Chambers and Tzavidis ( 2006 ). The key target of this approach to small area estimation is to obtain reliable and outlier robust estimates avoiding at the same time the need for strong parametric assumptions. This approach, however, does not allow for the use of unit level survey weights, making questionable the design consistency of the estimators unless the sampling design is self‐weighting within small areas. In this paper, we adopt a model‐assisted approach and construct design consistent small area estimators that are based on the M‐quantile small area model. Analytic and bootstrap estimators of the design‐based variance are discussed. The proposed estimators are empirically evaluated in the presence of complex sampling designs.  相似文献   

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Comparing the shapes of regression functions   总被引:1,自引:0,他引:1  
Heckman  NE; Zamar  RH 《Biometrika》2000,87(1):135-144
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Wang H  He X 《Biometrics》2008,64(2):449-457
Summary .   Due to the small number of replicates in typical gene microarray experiments, the performance of statistical inference is often unsatisfactory without some form of information-sharing across genes. In this article, we propose an enhanced quantile rank score test (EQRS) for detecting differential expression in GeneChip studies by analyzing the quantiles of gene intensity distributions through probe-level measurements. A measure of sign correlation, δ, plays an important role in the rank score tests. By sharing information across genes, we develop a calibrated estimate of δ, which reduces the variability at small sample sizes. We compare the EQRS test with four other approaches for determining differential expression: the gene-specific quantile rank score test, the quantile rank score test assuming a common δ, a modified t -test using summarized probe-set-level intensities, and the Mack–Skillings rank test on probe-level data. The proposed EQRS is shown to be favorable for preserving false discovery rates and for being robust against outlying arrays. In addition, we demonstrate the merits of the proposed approach using a GeneChip study comparing gene expression in the livers of mice exposed to chronic intermittent hypoxia and of those exposed to intermittent room air.  相似文献   

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In simple regression, two serious problems with the ordinary least squares (OLS) estimator are that its efficiency can be relatively poor when the error term is normal but heteroscedastic, and the usual confidence interval for the slope can have highly unsatisfactory probability coverage. When the error term is nonnormal, these problems become exacerbated. Two other concerns are that the OLS estimator has an unbounded influence function and a breakdown point of zero. Wilcox (1996) compared several estimators when there is heteroscedasticity and found two that have relatively good efficiency and simultaneously provide protection against outliers: an M-estimator with Schweppe weights and an estimator proposed by Cohen, Dalal and Tukey (1993). However, the M-estimator can handle only one outlier in the X-domain or among the Y values, and among the methods considered by Wilcox for computing confidence intervals for the slope, none performed well when working with the Cohen-Dalal-Tukey estimator. This note points out that the small-sample efficiency of theTheil-Sen estimator competes well with the estimators considered by Wilcox, and a method for computing a confidence interval was found that performs well in simulations. The Theil-Sen estimator has a reasonably high breakdown point, a bounded influence function, and in some cases its small-sample efficiency offers a substantial advantage over all of the estimators compared in Wilcox (1996).  相似文献   

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