Synthetic likelihood is an attractive approach to likelihood-free inference when an approximately Gaussian summary statistic for the data, informative for inference about the parameters, is available. The synthetic likelihood method derives an approximate likelihood function from a plug-in normal density estimate for the summary statistic, with plug-in mean and covariance matrix obtained by Monte Carlo simulation from the model. In this article, we develop alternatives to Markov chain Monte Carlo implementations of Bayesian synthetic likelihoods with reduced computational overheads. Our approach uses stochastic gradient variational inference methods for posterior approximation in the synthetic likelihood context, employing unbiased estimate...
Complex statistical models pose a great challenge to practitioners because of methodological and com...
<p>Variational Bayes (VB) is rapidly becoming a popular tool for Bayesian inference in statistical m...
Simulation-based Bayesian inference methods are useful when the statistical model of interest does n...
Synthetic likelihood is an attractive approach to likelihood-free inference when an approximately Ga...
One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes ...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Having the ability to work with complex models can be highly beneficial, but the computational cost ...
Synthetic likelihood (SL) is a strategy for parameter inference when the likelihood function is anal...
Bayesian synthetic likelihood (BSL) is now a well-established method for performing approximate Baye...
Likelihood-free methods are an established approach for performing approximate Bayesian inference fo...
We develop a fast and accurate approach to approximate posterior distributions in the Bayesian empir...
When considering a Bayesian sequential design framework, sequential Monte Carlo (SMC) algorithms are...
Recent advances in stochastic gradient variational inference have made it possi-ble to perform varia...
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
Complex statistical models pose a great challenge to practitioners because of methodological and com...
<p>Variational Bayes (VB) is rapidly becoming a popular tool for Bayesian inference in statistical m...
Simulation-based Bayesian inference methods are useful when the statistical model of interest does n...
Synthetic likelihood is an attractive approach to likelihood-free inference when an approximately Ga...
One popular approach to likelihood-free inference is the synthetic likelihood method, which assumes ...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Implementing Bayesian inference is often computationally challenging in complex models, especially w...
Having the ability to work with complex models can be highly beneficial, but the computational cost ...
Synthetic likelihood (SL) is a strategy for parameter inference when the likelihood function is anal...
Bayesian synthetic likelihood (BSL) is now a well-established method for performing approximate Baye...
Likelihood-free methods are an established approach for performing approximate Bayesian inference fo...
We develop a fast and accurate approach to approximate posterior distributions in the Bayesian empir...
When considering a Bayesian sequential design framework, sequential Monte Carlo (SMC) algorithms are...
Recent advances in stochastic gradient variational inference have made it possi-ble to perform varia...
Many models of interest in the natural and social sciences have no closed-form likelihood function, ...
Complex statistical models pose a great challenge to practitioners because of methodological and com...
<p>Variational Bayes (VB) is rapidly becoming a popular tool for Bayesian inference in statistical m...
Simulation-based Bayesian inference methods are useful when the statistical model of interest does n...