100
IRUS Total
Downloads
  Altmetric

Bayesian optimisation for likelihood-free cosmological inference

File Description SizeFormat 
bolfi.pdfAccepted version2.62 MBAdobe PDFView/Open
Title: Bayesian optimisation for likelihood-free cosmological inference
Authors: Leclercq, FCM
Item Type: Journal Article
Abstract: Many cosmological models have only a finite number of parameters of interest, but a very expensive data-generating process and an intractable likelihood function. We address the problem of performing likelihood-free Bayesian inference from such black-box simulation-based models, under the constraint of a very limited simulation budget (typically a few thousand). To do so, we adopt an approach based on the likelihood of an alternative parametric model. Conventional approaches to approximate Bayesian computation such as likelihood-free rejection sampling are impractical for the considered problem, due to the lack of knowledge about how the parameters affect the discrepancy between observed and simulated data. As a response, we make use of a strategy previously developed in the machine learning literature (Bayesian optimization for likelihood-free inference, bolfi), which combines Gaussian process regression of the discrepancy to build a surrogate surface with Bayesian optimization to actively acquire training data. We extend the method by deriving an acquisition function tailored for the purpose of minimizing the expected uncertainty in the approximate posterior density, in the parametric approach. The resulting algorithm is applied to the problems of summarizing Gaussian signals and inferring cosmological parameters from the joint lightcurve analysis supernovae data. We show that the number of required simulations is reduced by several orders of magnitude, and that the proposed acquisition function produces more accurate posterior approximations, as compared to common strategies.
Issue Date: 15-Sep-2018
Date of Acceptance: 14-Aug-2018
URI: http://hdl.handle.net/10044/1/63521
DOI: https://dx.doi.org/10.1103/PhysRevD.98.063511
ISSN: 1550-2368
Publisher: American Physical Society
Journal / Book Title: Physical Review D - Particles, Fields, Gravitation and Cosmology
Volume: 98
Issue: 6
Copyright Statement: © 2018 American Physical Society
Keywords: Science & Technology
Physical Sciences
Astronomy & Astrophysics
Physics, Particles & Fields
Physics
POWER-SPECTRUM INFERENCE
DATA-COMPRESSION
PARAMETER-ESTIMATION
COVARIANCE MATRICES
COMPUTATION
astro-ph.CO
astro-ph.IM
stat.AP
Publication Status: Published
Article Number: 063511
Online Publication Date: 2018-09-12
Appears in Collections:Physics
Astrophysics
Faculty of Natural Sciences