Our paper deals with inferring simulator-based statistical models given some observed data. A simulator-based model is a parametrized mechanism which specifies how data are generated. It is thus also referred to as generative model. We assume that only a finite number of parameters are of interest and allow the generative process to be very general; it may be a noisy nonlinear dynamical system with an unrestricted number of hidden variables. This weak assumption is useful for devising realistic models but it renders statistical inference very difficult. The main challenge is the intractability of the likelihood function. Several likelihood-free inference methods have been proposed which share the basic idea of identifying the parameters by ...
Statistical models which allow generating simulations without providing access to the density of the...
This dissertation presents several novel techniques and guidelines to advance the field of simulatio...
Simulator models are a type of stochastic model that is often used to approximate a real-life proces...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
In this thesis we present a new likelihood-free inference method for simulator-based models. A simul...
Increasingly complex generative models are being used across disciplines as they allow for realistic...
While likelihood-based inference and its variants provide a statistically efficient and widely appli...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
We present a framework for the efficient computation of optimal Bayesian decisions under intractable...
We present a framework for approximate Bayesian inference when only a limited number of noisy log-li...
Complex statistical models pose a great challenge to practitioners because of methodological and com...
Simulation-based optimal experimental design techniques provide a set of tools to solve model-based ...
We consider simulation optimization in the presence of input uncertainty. In particular, we assume t...
BACKGROUND: Mathematical modeling is an important tool in systems biology to study the dynamic prope...
Statistical models which allow generating simulations without providing access to the density of the...
This dissertation presents several novel techniques and guidelines to advance the field of simulatio...
Simulator models are a type of stochastic model that is often used to approximate a real-life proces...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
Our paper deals with inferring simulator-based statistical models given some observed data. A simula...
In this thesis we present a new likelihood-free inference method for simulator-based models. A simul...
Increasingly complex generative models are being used across disciplines as they allow for realistic...
While likelihood-based inference and its variants provide a statistically efficient and widely appli...
Bayesian methods provide the means for studying probabilistic models of linear as well as non-linear...
We present a framework for the efficient computation of optimal Bayesian decisions under intractable...
We present a framework for approximate Bayesian inference when only a limited number of noisy log-li...
Complex statistical models pose a great challenge to practitioners because of methodological and com...
Simulation-based optimal experimental design techniques provide a set of tools to solve model-based ...
We consider simulation optimization in the presence of input uncertainty. In particular, we assume t...
BACKGROUND: Mathematical modeling is an important tool in systems biology to study the dynamic prope...
Statistical models which allow generating simulations without providing access to the density of the...
This dissertation presents several novel techniques and guidelines to advance the field of simulatio...
Simulator models are a type of stochastic model that is often used to approximate a real-life proces...