This thesis progresses Bayesian experimental design by developing novel methodologies and extensions to existing algorithms. Through these advancements, this thesis provides solutions to several important and complex experimental design problems, many of which have applications in biology and medicine. This thesis consists of a series of published and submitted papers. In the first paper, we provide a comprehensive literature review on Bayesian design. In the second paper, we discuss methods which may be used to solve design problems in which one is interested in finding a large number of (near) optimal design points. The third paper presents methods for finding fully Bayesian experimental designs for nonlinear mixed effects models, and the...
Bayesian design theory applied to nonlinear models is a promising route to cope with the problem of ...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
We propose and implement a Bayesian optimal design procedure. Our procedure takes as its primitives ...
Bayesian experimental design is a fast growing area of research with many real-world applications. A...
The complexity of statistical models that are used to describe biological processes poses significan...
Scientists perform experiments to collect evidence supporting one or another hypothesis or theory. E...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
In this paper, we present fully Bayesian experimental designs for nonlinear mixed effects models, in...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
The use of Bayesian methodologies for solving optimal experimental design problems has increased. Ma...
Nonlinear models pervade the statistical literature on drug development, and specifically in pharmac...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
In this thesis, we investigate the optimal experimental design of some common biological experiments...
Experimental design is an important phase in both scienti_c and industrial research. In recent years...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
Bayesian design theory applied to nonlinear models is a promising route to cope with the problem of ...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
We propose and implement a Bayesian optimal design procedure. Our procedure takes as its primitives ...
Bayesian experimental design is a fast growing area of research with many real-world applications. A...
The complexity of statistical models that are used to describe biological processes poses significan...
Scientists perform experiments to collect evidence supporting one or another hypothesis or theory. E...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
In this paper, we present fully Bayesian experimental designs for nonlinear mixed effects models, in...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
The use of Bayesian methodologies for solving optimal experimental design problems has increased. Ma...
Nonlinear models pervade the statistical literature on drug development, and specifically in pharmac...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
In this thesis, we investigate the optimal experimental design of some common biological experiments...
Experimental design is an important phase in both scienti_c and industrial research. In recent years...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
Bayesian design theory applied to nonlinear models is a promising route to cope with the problem of ...
The emphasis in this work is on derivation of optimal Bayes inferences and designs in relatively une...
We propose and implement a Bayesian optimal design procedure. Our procedure takes as its primitives ...