In analysis of longitudinal data, the variance matrix of the parameter estimates is usually estimated by the ‘sandwich’ method, in which the variance for each subject is estimated by its residual products. We propose smooth bootstrap methods by perturbing the estimating functions to obtain ‘bootstrapped’ realizations of the parameter estimates for statistical inference. Our extensive simulation studies indicate that the variance estimators by our proposed methods can not only correct the bias of the sandwich estimator but also improve the confidence interval coverage. We applied the proposed method to a data set from a clinical trial of antibiotics for leprosy
This thesis consists of four papers dealing with estimation and inference for quantile regression of...
It is common to conduct bootstrap inference in vector autoregressive (VAR) models based on the assum...
In this work, we investigate an alternative bootstrap approach based on a result of Ramsey [F.L. Ram...
In analysis of longitudinal data, the variance matrix of the parameter estimates is usually estimate...
90 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Longitudinal data are characte...
90 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Longitudinal data are characte...
Linear mixed models are widely used for analyzing longitudinal datasets, and the inference for varia...
This paper examines the use of bootstrapping for bias correction and confidence interval calculation...
This paper examines the use of bootstrapping for bias correction and confidence interval calculation...
Regression theory is the hat of various methodologies for approximating a function whose analytical ...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...
In the first part of the dissertation, we discuss a residual bootstrap method for high-dimensional r...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
This thesis consists of four papers dealing with estimation and inference for quantile regression of...
It is common to conduct bootstrap inference in vector autoregressive (VAR) models based on the assum...
In this work, we investigate an alternative bootstrap approach based on a result of Ramsey [F.L. Ram...
In analysis of longitudinal data, the variance matrix of the parameter estimates is usually estimate...
90 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Longitudinal data are characte...
90 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Longitudinal data are characte...
Linear mixed models are widely used for analyzing longitudinal datasets, and the inference for varia...
This paper examines the use of bootstrapping for bias correction and confidence interval calculation...
This paper examines the use of bootstrapping for bias correction and confidence interval calculation...
Regression theory is the hat of various methodologies for approximating a function whose analytical ...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...
In the first part of the dissertation, we discuss a residual bootstrap method for high-dimensional r...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
This thesis consists of four papers dealing with estimation and inference for quantile regression of...
It is common to conduct bootstrap inference in vector autoregressive (VAR) models based on the assum...
In this work, we investigate an alternative bootstrap approach based on a result of Ramsey [F.L. Ram...