Gaussian processes and kernel methods: A review on connections and equivalences
This paper is an attempt to bridge the conceptual gaps between researchers working on the
two widely used approaches based on positive definite kernels: Bayesian learning or …
two widely used approaches based on positive definite kernels: Bayesian learning or …
Galactica: A large language model for science
Information overload is a major obstacle to scientific progress. The explosive growth in
scientific literature and data has made it ever harder to discover useful insights in a large …
scientific literature and data has made it ever harder to discover useful insights in a large …
Control functionals for Monte Carlo integration
A non-parametric extension of control variates is presented. These leverage gradient
information on the sampling density to achieve substantial variance reduction. It is not …
information on the sampling density to achieve substantial variance reduction. It is not …
Probabilistic integration
A research frontier has emerged in scientific computation, wherein discretisation error is
regarded as a source of epistemic uncertainty that can be modelled. This raises several …
regarded as a source of epistemic uncertainty that can be modelled. This raises several …
Preferential bayesian optimization
Bayesian optimization (BO) has emerged during the last few years as an effective approach
to optimize black-box functions where direct queries of the objective are expensive. We …
to optimize black-box functions where direct queries of the objective are expensive. We …
Monte Carlo with determinantal point processes
R Bardenet, A Hardy - 2020 - projecteuclid.org
We show that repulsive random variables can yield Monte Carlo methods with faster
convergence rates than the typical N^-1/2, where N is the number of integrand evaluations …
convergence rates than the typical N^-1/2, where N is the number of integrand evaluations …
Variational bayesian monte carlo
L Acerbi - Advances in Neural Information Processing …, 2018 - proceedings.neurips.cc
Many probabilistic models of interest in scientific computing and machine learning have
expensive, black-box likelihoods that prevent the application of standard techniques for …
expensive, black-box likelihoods that prevent the application of standard techniques for …
Kernel thinning
We introduce kernel thinning, a new procedure for compressing a distribution $\mathbb {P} $
more effectively than iid sampling or standard thinning. Given a suitable reproducing kernel …
more effectively than iid sampling or standard thinning. Given a suitable reproducing kernel …
Fast Bayesian inference with batch Bayesian quadrature via kernel recombination
Calculation of Bayesian posteriors and model evidences typically requires numerical
integration. Bayesian quadrature (BQ), a surrogate-model-based approach to numerical …
integration. Bayesian quadrature (BQ), a surrogate-model-based approach to numerical …
Positively weighted kernel quadrature via subsampling
We study kernel quadrature rules with convex weights. Our approach combines the spectral
properties of the kernel with recombination results about point measures. This results in …
properties of the kernel with recombination results about point measures. This results in …