Nested sampling for physical scientists
Accepted version
Peer-reviewed
Repository URI
Repository DOI
Change log
Abstract
This Primer examines Skilling’s nested sampling algorithm for Bayesian inference and, more broadly, multidimensional integration. The principles of nested sampling are summarized and recent developments using efficient nested sampling algorithms in high dimensions surveyed, including methods for sampling from the constrained prior. Different ways of applying nested sampling are outlined, with detailed examples from three scientific fields: cosmology, gravitational-wave astronomy and materials science. Finally, the Primer includes recommendations for best practices and a discussion of potential limitations and optimizations of nested sampling.
Description
Journal Title
Nature Reviews Methods Primers
Conference Name
Journal ISSN
2662-8449
2662-8449
2662-8449
Volume Title
2
Publisher
Springer Nature
Publisher DOI
Rights and licensing
Except where otherwised noted, this item's license is described as All Rights Reserved
