Nested Sampling for Uncertainty Quantification and Rare Event Estimation
Abstract
Nested Sampling is a method for computing the Bayesian evidence, also called the marginal likelihood, which is the integral of the likelihood with respect to the prior. More generally, it is a numerical probabilistic quadrature rule. The main idea of Nested Sampling is to replace a high-dimensional likelihood integral over parameter space with an integral over the unit line by employing a push-forward with respect to a suitable transformation. Practically, a set of active samples ascends the level sets of the integrand function, with the measure contraction of the super-level sets being statistically estimated. We justify the validity of this approach for integrands with non-negligible plateaus, and demonstrate Nested Sampling's practical effectiveness in estimating the (log-)probability of rare events.
Cite
@article{arxiv.2310.03040,
title = {Nested Sampling for Uncertainty Quantification and Rare Event Estimation},
author = {Jonas Latz and Doris Schneider and Philipp Wacker},
journal= {arXiv preprint arXiv:2310.03040},
year = {2023}
}
Comments
24 pages