Inferring Evidence from Nested Sampling Data via Information Field Theory
Abstract
Nested sampling provides an estimate of the evidence of a Bayesian inference problem via probing the likelihood as a function of the enclosed prior volume. However, the lack of precise values of the enclosed prior mass of the samples introduces probing noise, which can hamper high-accuracy determinations of the evidence values as estimated from the likelihood-prior-volume function. We introduce an approach based on information field theory, a framework for non-parametric function reconstruction from data, that infers the likelihood-prior-volume function by exploiting its smoothness and thereby aims to improve the evidence calculation. Our method provides posterior samples of the likelihood-prior-volume function that translate into a quantification of the remaining sampling noise for the evidence estimate, or for any other quantity derived from the likelihood-prior-volume function.
Cite
@article{arxiv.2312.11907,
title = {Inferring Evidence from Nested Sampling Data via Information Field Theory},
author = {Margret Westerkamp and Jakob Roth and Philipp Frank and Will Handley and Torsten Enßlin},
journal= {arXiv preprint arXiv:2312.11907},
year = {2024}
}