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Hauptverfasser: Trassinelli, M., Ciccodicola, Pierre
Format: Preprint
Veröffentlicht: 2020
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2002.01431
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author Trassinelli, M.
Ciccodicola, Pierre
author_facet Trassinelli, M.
Ciccodicola, Pierre
contents Nested sampling is an efficient algorithm for the calculation of the Bayesian evidence and posterior parameter probability distributions. It is based on the step-by-step exploration of the parameter space by Monte Carlo sampling with a series of values sets called live points that evolve towards the region of interest, i.e. where the likelihood function is maximal. In presence of several local likelihood maxima, the algorithm converges with difficulty. Some systematic errors can also be introduced by unexplored parameter volume regions. In order to avoid this, different methods are proposed in the literature for an efficient search of new live points, even in presence of local maxima. Here we present a new solution based on the mean shift cluster recognition method implemented in a random walk search algorithm. The clustering recognition is integrated within the Bayesian analysis program NestedFit. It is tested with the analysis of some difficult cases. Compared to the analysis results without cluster recognition, the computation time is considerably reduced. At the same time, the entire parameter space is efficiently explored, which translates into a smaller uncertainty of the extracted value of the Bayesian evidence.
format Preprint
id arxiv_https___arxiv_org_abs_2002_01431
institution arXiv
publishDate 2020
record_format arxiv
spellingShingle Mean shift cluster recognition method implementation in the nested sampling algorithm
Trassinelli, M.
Ciccodicola, Pierre
Computation
Instrumentation and Methods for Astrophysics
Computational Physics
Machine Learning
Nested sampling is an efficient algorithm for the calculation of the Bayesian evidence and posterior parameter probability distributions. It is based on the step-by-step exploration of the parameter space by Monte Carlo sampling with a series of values sets called live points that evolve towards the region of interest, i.e. where the likelihood function is maximal. In presence of several local likelihood maxima, the algorithm converges with difficulty. Some systematic errors can also be introduced by unexplored parameter volume regions. In order to avoid this, different methods are proposed in the literature for an efficient search of new live points, even in presence of local maxima. Here we present a new solution based on the mean shift cluster recognition method implemented in a random walk search algorithm. The clustering recognition is integrated within the Bayesian analysis program NestedFit. It is tested with the analysis of some difficult cases. Compared to the analysis results without cluster recognition, the computation time is considerably reduced. At the same time, the entire parameter space is efficiently explored, which translates into a smaller uncertainty of the extracted value of the Bayesian evidence.
title Mean shift cluster recognition method implementation in the nested sampling algorithm
topic Computation
Instrumentation and Methods for Astrophysics
Computational Physics
Machine Learning
url https://arxiv.org/abs/2002.01431