This paper addresses the problem of determining optimal designs for biological process models with intractable likelihoods, with the goal of parameter inference. The Bayesian approach is to choose a design that maximises the mean of a utility, and the utility is a function of the posterior distribution. Therefore, its estimation requires likelihood evaluations. However, many problems in experimental design involve models with intractable likelihoods, that is, likelihoods that are neither analytic nor can be computed in a reasonable amount of time. We propose a novel solution using indirect inference (II), a well established method in the literature, and the Markov chain Monte Carlo (MCMC) algorithm of Müller et al. (2004). Indirect inferenc...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
<div><p>Parameter inference and model selection are very important for mathematical modeling in syst...
This paper addresses the problem of determining optimal designs for biological process models with i...
A Bayesian design is given by maximising an expected utility over a design space. The utility is cho...
In this paper we present a methodology for designing experiments for efficiently estimating the para...
The complexity of statistical models that are used to describe biological processes poses significan...
Simulation-based optimal experimental design techniques provide a set of tools to solve model-based ...
A methodology is proposed to derive Bayesian experimental designs for discriminating between rival e...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
In this thesis, we investigate the optimal experimental design of some common biological experiments...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
<div><p>Parameter inference and model selection are very important for mathematical modeling in syst...
This paper addresses the problem of determining optimal designs for biological process models with i...
A Bayesian design is given by maximising an expected utility over a design space. The utility is cho...
In this paper we present a methodology for designing experiments for efficiently estimating the para...
The complexity of statistical models that are used to describe biological processes poses significan...
Simulation-based optimal experimental design techniques provide a set of tools to solve model-based ...
A methodology is proposed to derive Bayesian experimental designs for discriminating between rival e...
This thesis progresses Bayesian experimental design by developing novel methodologies and extensions...
In this thesis, we investigate the optimal experimental design of some common biological experiments...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
Bayesian optimal design is considered for experiments where the response distribution depends on the...
The design of an experiment can be always be considered at least implicitly Bayesian, with prior kno...
The construction of decision-theoretical Bayesian designs for realistically complex nonlinear models...
Motivation: Systems biology employs mathematical modelling to further our understanding of biochemic...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
<div><p>Parameter inference and model selection are very important for mathematical modeling in syst...