Nested sampling for physical scientists
G. Ashton
N. Bernstein
Johannes Buchner
Xi Chen
Gábor Csányi
A. Fowlie
F. Feroz
M. Griffiths
Will Handley
Michael Habeck
E. Higson
Michael P. Hobson
A. Lasenby
David Parkinson
L. Pártay
M. Pitkin
Doris Schneider
J. Speagle
Leah F. South
J. Veitch
Philipp Wacker
D. Wales
David Yallup

Abstract
We review Skilling's nested sampling (NS) algorithm for Bayesian inference and more broadly multi-dimensional integration. After recapitulating the principles of NS, we survey developments in implementing efficient NS algorithms in practice in high-dimensions, including methods for sampling from the so-called constrained prior. We outline the ways in which NS may be applied and describe the application of NS in three scientific fields in which the algorithm has proved to be useful: cosmology, gravitational-wave astronomy, and materials science. We close by making recommendations for best practice when using NS and by summarizing potential limitations and optimizations of NS.
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