The principal response curve (PRC) model is of use to analyse multivariate data resulting from experiments involving repeated sampling in time. The time-dependent treatment effects are represented by PRCs, which are functional in nature. The sample PRCs can be estimated using a raw approach, or the newly proposed smooth approach. The generalisability of the sample PRCs can be judged using confidence bands. The quality of various bootstrap strategies to estimate such confidence bands for PRCs is evaluated. The best coverage was obtained with BCa intervals using a non-parametric bootstrap. The coverage appeared to be generally good, except for the case of exactly zero population PRCs for all conditions. Then, the behaviour is irregular, which...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Bootstrap methods can be used as an alternative for cross-validation in regression procedures such a...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Bootstrap methods can be used as an alternative for cross-validation in regression procedures such a...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
The principal response curve (PRC) model is of use to analyse multivariate data resulting from exper...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Principal covariate regression (PCOVR) is a method for regressing a set of criterion variables with ...
Bootstrap methods can be used as an alternative for cross-validation in regression procedures such a...