In this paper we present a methodology for designing experiments for efficiently estimating the parameters of models with computationally intractable likelihoods. The approach combines a commonly used methodology for robust experimental design, based on Markov chain Monte Carlo sampling, with approximate Bayesian computation (ABC) to ensure that no likelihood evaluations are required. The utility function considered for precise parameter estimation is based upon the precision of the ABC posterior distribution, which we form efficiently via the ABC rejection algorithm based on pre-computed model simulations. Our focus is on stochastic models and, in particular, we investigate the methodology for Markov process models of epidemics and macropa...
Summary. For many complex probability models, computation of likelihoods is either impossible or ver...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
Approaches to Bayesian inference for problems with intractable likelihoods have become increasingly ...
This paper addresses the problem of determining optimal designs for biological process models with i...
This paper addresses the problem of determining optimal designs for biological process models with i...
Simulation-based optimal experimental design techniques provide a set of tools to solve model-based ...
A Bayesian design is given by maximising an expected utility over a design space. The utility is cho...
We estimate the parameters of a stochastic process model for a macroparasite population within a hos...
In this thesis, we investigate the optimal experimental design of some common biological experiments...
Infectious diseases such as avian influenza pose a global threat to human health. Mathematical and s...
A methodology is proposed to derive Bayesian experimental designs for discriminating between rival e...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
A maximum likelihood methodology for a general class of models is presented, using an approximate Ba...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
Approximate Bayesian computation (ABC) is a popular technique for analysing data for complex models ...
Summary. For many complex probability models, computation of likelihoods is either impossible or ver...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
Approaches to Bayesian inference for problems with intractable likelihoods have become increasingly ...
This paper addresses the problem of determining optimal designs for biological process models with i...
This paper addresses the problem of determining optimal designs for biological process models with i...
Simulation-based optimal experimental design techniques provide a set of tools to solve model-based ...
A Bayesian design is given by maximising an expected utility over a design space. The utility is cho...
We estimate the parameters of a stochastic process model for a macroparasite population within a hos...
In this thesis, we investigate the optimal experimental design of some common biological experiments...
Infectious diseases such as avian influenza pose a global threat to human health. Mathematical and s...
A methodology is proposed to derive Bayesian experimental designs for discriminating between rival e...
This thesis provides novel methodological and theoretical contributions to the area of Monte Carlo m...
A maximum likelihood methodology for a general class of models is presented, using an approximate Ba...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
Approximate Bayesian computation (ABC) is a popular technique for analysing data for complex models ...
Summary. For many complex probability models, computation of likelihoods is either impossible or ver...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
Approaches to Bayesian inference for problems with intractable likelihoods have become increasingly ...