Calculation of Bayesian posteriors and model evidences typically requires numerical integration. Bayesian quadrature (BQ), a surrogate-model-based approach to numerical integration, is capable of superb sample efficiency, but its lack of parallelisation has hindered its practical applications. In this work, we propose a parallelised (batch) BQ method, employing techniques from kernel quadrature, that possesses an empirically exponential convergence rate. Additionally, just as with Nested Sampling, our method permits simultaneous inference of both posteriors and model evidence. Samples from our BQ surrogate model are re-selected to give a sparse set of samples, via a kernel recombination algorithm, requiring negligible additional time to inc...
Bayesian model comparison provides a rational and consistent method for applying logic and probabili...
Numerical integration and emulation are fundamental topics across scientific fields. We propose nove...
Bayesian inference via standard Markov Chain Monte Carlo (MCMC) methods such as Metropolis-Hastings ...
We propose a novel sampling framework for inference in probabilistic models: an active learning appr...
This work proposes a Bayesian updating approach, called parallel Bayesian optimization and quadratur...
Batch Bayesian optimisation and Bayesian quadrature have been shown to be sample-efficient methods o...
Probabilistic integration formulates integration as a statistical inference problem, and is motivate...
This is the author accepted manuscript. The final version is available from ACM via the DOI in this ...
Bayesian non-parametric models, despite their theoretical elegance, face a serious computational bur...
BackgroundBayesian regression models are widely used in genomic prediction, where the effects of all...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
A wide variety of battery models are available, and it is not always obvious which model `best' desc...
Numerical integration is a key component of many problems in scientific comput-ing, statistical mode...
There is renewed interest in formulating integration as an inference problem, motivated by obtaining...
We present a novel strategy to improve load balancing for large scale Bayesian inference problems. L...
Bayesian model comparison provides a rational and consistent method for applying logic and probabili...
Numerical integration and emulation are fundamental topics across scientific fields. We propose nove...
Bayesian inference via standard Markov Chain Monte Carlo (MCMC) methods such as Metropolis-Hastings ...
We propose a novel sampling framework for inference in probabilistic models: an active learning appr...
This work proposes a Bayesian updating approach, called parallel Bayesian optimization and quadratur...
Batch Bayesian optimisation and Bayesian quadrature have been shown to be sample-efficient methods o...
Probabilistic integration formulates integration as a statistical inference problem, and is motivate...
This is the author accepted manuscript. The final version is available from ACM via the DOI in this ...
Bayesian non-parametric models, despite their theoretical elegance, face a serious computational bur...
BackgroundBayesian regression models are widely used in genomic prediction, where the effects of all...
We consider Bayesian inference when only a limited number of noisy log-likelihood evaluations can be...
A wide variety of battery models are available, and it is not always obvious which model `best' desc...
Numerical integration is a key component of many problems in scientific comput-ing, statistical mode...
There is renewed interest in formulating integration as an inference problem, motivated by obtaining...
We present a novel strategy to improve load balancing for large scale Bayesian inference problems. L...
Bayesian model comparison provides a rational and consistent method for applying logic and probabili...
Numerical integration and emulation are fundamental topics across scientific fields. We propose nove...
Bayesian inference via standard Markov Chain Monte Carlo (MCMC) methods such as Metropolis-Hastings ...