Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous, especially when trying to find a reasonable joint model from which the interesting effects and covariances are estimated. A novel statistical approach known as multiple marginal models greatly simplifies the modelling process: the core idea is to “marginalise” the problem and fit multiple small models to different portions of the data, and then estimate the overall covariance matrix in a subsequent, separate step. Using these estimates guarantees strong control of the family‐wise error rate, however only asymptotically. In this paper, we show how to make the approach also applicable to small‐sample data problems. Specifically, we discuss th...
This paper describes a method for comparisons of several treatments with a control, simultaneously f...
Much of the research on multiple comparison and simultaneous inference in the past sixty years or so...
Simultaneous inference is a common problem in many areas of application. If multiple null hypotheses...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
We discuss several aspects of multiple inference in longitudinal settings, focusing on many-to-one a...
Motivated by small-sample studies in ophthalmology and dermatology, we study the problem of simultan...
We discuss several aspects of multiple inference in longitudinal settings, focusing on many-to-one a...
The framework for simultaneous inference by Hothorn, Bretz, and Westfall (2008) allows for a unified...
The framework for simultaneous inference by Hothorn, Bretz, and Westfall (2008) allows for a unified...
Open access financiado por Universite de Geneve (article funding)European Regional Development Fund[...
Multinomial data occur if the major outcome of an experiment is the classification of experimental ...
This paper describes a method for comparisons of several treatments with a control, simultaneously f...
Much of the research on multiple comparison and simultaneous inference in the past sixty years or so...
Simultaneous inference is a common problem in many areas of application. If multiple null hypotheses...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
Simultaneous inference in longitudinal, repeated‐measures, and multi‐endpoint designs can be onerous...
We discuss several aspects of multiple inference in longitudinal settings, focusing on many-to-one a...
Motivated by small-sample studies in ophthalmology and dermatology, we study the problem of simultan...
We discuss several aspects of multiple inference in longitudinal settings, focusing on many-to-one a...
The framework for simultaneous inference by Hothorn, Bretz, and Westfall (2008) allows for a unified...
The framework for simultaneous inference by Hothorn, Bretz, and Westfall (2008) allows for a unified...
Open access financiado por Universite de Geneve (article funding)European Regional Development Fund[...
Multinomial data occur if the major outcome of an experiment is the classification of experimental ...
This paper describes a method for comparisons of several treatments with a control, simultaneously f...
Much of the research on multiple comparison and simultaneous inference in the past sixty years or so...
Simultaneous inference is a common problem in many areas of application. If multiple null hypotheses...