Litcius/Paper detail

Nested sampling methods

Johannes Büchner

2023Statistics Surveys104 citationsDOIOpen Access PDF

Abstract

Nested sampling (NS) computes parameter posterior distributions and makes Bayesian model comparison computationally feasible. Its strengths are the unsupervised navigation of complex, potentially multi-modal posteriors until a well-defined termination point. A systematic literature review of nested sampling algorithms and variants is presented. We focus on complete algorithms, including solutions to likelihood-restricted prior sampling, parallelisation, termination and diagnostics. The relation between number of live points, dimensionality and computational cost is studied for two complete algorithms. A new formulation of NS is presented, which casts the parameter space exploration as a search on a tree data structure. Previously published ways of obtaining robust error estimates and dynamic variations of the number of live points are presented as special cases of this formulation. A new online diagnostic test is presented based on previous insertion rank order work. The survey of nested sampling methods concludes with outlooks for future research.

Topics & Concepts

Computer scienceSampling (signal processing)AlgorithmCurse of dimensionalityBayesian probabilityFocus (optics)Data miningMathematicsMachine learningArtificial intelligenceOpticsFilter (signal processing)PhysicsComputer visionStatistical Methods and Bayesian InferenceStatistical Distribution Estimation and ApplicationsAdvanced Statistical Methods and Models