One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes that some data summary statistics which are informative about model parameters are approximately Gaussian for each value of the parameter. Based on this assumption, a Gaussian likelihood can be constructed, where the mean and covariance matrix of the summary statistics are estimated via Monte Carlo. The objective of the current work is to improve on a variational implementation of the Bayesian synthetic likelihood introduced recently in the literature, to enable the application of that approach to high-dimensional problems. Here high-dimensional can mean problems with more than one hundred parameters. The improvements introduced relate to shr...
The challenges posed by complex stochastic models used in computational ecology, biology and genetic...
In this thesis we present a new likelihood-free inference method for simulator-based models. A simul...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...
One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes ...
Synthetic likelihood is an attractive approach to likelihood-free inference when an approximately Ga...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Synthetic likelihood (SL) is a strategy for parameter inference when the likelihood function is anal...
Methods that bypass analytical evaluations of the likelihood function have become an indispensable t...
Likelihood-free methods are an established approach for performing approximate Bayesian inference fo...
Having the ability to work with complex models can be highly beneficial, but the computational cost ...
A maximum likelihood methodology for the parameters of models with an intractable likelihood is intr...
Simulation-based Bayesian inference methods are useful when the statistical model of interest does n...
Simulation-based Bayesian inference methods are useful when the statistical model of interest does n...
Bayesian synthetic likelihood (BSL) is now a well-established method for performing approximate Baye...
The challenges posed by complex stochastic models used in computational ecology, biology and genetic...
In this thesis we present a new likelihood-free inference method for simulator-based models. A simul...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...
One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes ...
Synthetic likelihood is an attractive approach to likelihood-free inference when an approximately Ga...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Synthetic likelihood (SL) is a strategy for parameter inference when the likelihood function is anal...
Methods that bypass analytical evaluations of the likelihood function have become an indispensable t...
Likelihood-free methods are an established approach for performing approximate Bayesian inference fo...
Having the ability to work with complex models can be highly beneficial, but the computational cost ...
A maximum likelihood methodology for the parameters of models with an intractable likelihood is intr...
Simulation-based Bayesian inference methods are useful when the statistical model of interest does n...
Simulation-based Bayesian inference methods are useful when the statistical model of interest does n...
Bayesian synthetic likelihood (BSL) is now a well-established method for performing approximate Baye...
The challenges posed by complex stochastic models used in computational ecology, biology and genetic...
In this thesis we present a new likelihood-free inference method for simulator-based models. A simul...
42 pages, 16 figures, 1 tableWe consider the problem of reducing the dimensions of parameters and da...