A Locally Adaptive Bayesian Cubature Method

10/07/2019
by   Matthew A Fisher, et al.
0

Bayesian cubature (BC) is a popular inferential perspective on the cubature of expensive integrands, wherein the integrand is emulated using a stochastic process model. Several approaches have been put forward to encode sequential adaptation (i.e. dependence on previous integrand evaluations) into this framework. However, these proposals have been limited to either estimating the parameters of a stationary covariance model or focusing computational resources on regions where large values are taken by the integrand. In contrast, many classical adaptive cubature methods focus computational resources on spatial regions in which local error estimates are largest. The contributions of this work are three-fold: First, we present a theoretical result that suggests there does not exist a direct Bayesian analogue of the classical adaptive trapezoidal method. Then we put forward a novel BC method that has empirically similar behaviour to the adaptive trapezoidal method. Finally we present evidence that the novel method provides improved cubature performance, relative to standard BC, in a detailed empirical assessment.

READ FULL TEXT

page 35

page 42

research
12/08/2020

Neural fidelity warping for efficient robot morphology design

We consider the problem of optimizing a robot morphology to achieve the ...
research
02/18/2023

Emulation methods and adaptive sampling increase the efficiency of sensitivity analysis for computationally expensive models

Models with high-dimensional parameter spaces are common in many applica...
research
06/24/2020

Simple and Scalable Parallelized Bayesian Optimization

In recent years, leveraging parallel and distributed computational resou...
research
06/28/2019

FIESTA: Fast IdEntification of State-of-The-Art models using adaptive bandit algorithms

We present FIESTA, a model selection approach that significantly reduces...
research
02/27/2019

Adaptation for nonparametric estimators of locally stationary processes

Two adaptive bandwidth selection methods for nonparametric estimators in...
research
01/16/2015

Stochastic Local Interaction (SLI) Model: Interfacing Machine Learning and Geostatistics

Machine learning and geostatistics are powerful mathematical frameworks ...
research
08/18/2023

Adaptive Timers and Buffer Optimization for Layer-2 Protocols in 5G Non-Terrestrial Networks

Interest in the integration of Terrestrial Networks (TN) and Non-Terrest...

Please sign up or login with your details

Forgot password? Click here to reset