DIAMONDS: a new Bayesian nested sampling tool*

In the context of high-quality asteroseismic data provided by the NASA Kepler Mission, we developed a new code, termed DIAMONDS (high-DImensional And multi-MOdal NesteD Sampling), for fast Bayesian parameter estimation and model comparison by means of the Nested Sampling Monte Carlo (NSMC) algorithm...

Full description

Bibliographic Details
Main Authors: Corsaro Enrico, Ridder Joris De
Format: Article
Language:English
Published: EDP Sciences 2015-01-01
Series:EPJ Web of Conferences
Online Access:http://dx.doi.org/10.1051/epjconf/201510106019
id doaj-d17bf5ab2006433e839883953aec0e15
record_format Article
spelling doaj-d17bf5ab2006433e839883953aec0e152021-08-02T01:31:39ZengEDP SciencesEPJ Web of Conferences2100-014X2015-01-011010601910.1051/epjconf/201510106019epjconf_sphr2014_06019DIAMONDS: a new Bayesian nested sampling tool*Corsaro EnricoRidder Joris DeIn the context of high-quality asteroseismic data provided by the NASA Kepler Mission, we developed a new code, termed DIAMONDS (high-DImensional And multi-MOdal NesteD Sampling), for fast Bayesian parameter estimation and model comparison by means of the Nested Sampling Monte Carlo (NSMC) algorithm, an efficient and powerful method very suitable for high-dimensional problems (like the peak bagging analysis of solar-like oscillations) and multi-modal problems (i.e. problems that show multiple solutions). We applied the code to the peak bagging analysis of solar-like oscillations observed in a challenging F-type star. By means of DIAMONDS one is able to detect the different backgrounds in the power spectrum of the star (e.g. stellar granulation and faculae activity) and to understand whether one or two oscillation peaks can be identified or not. In addition, we demonstrate a novel approach to peak bagging based on multi-modality, which is able to reduce significantly the number of free parameters involved in the peak bagging model. This novel approach is therefore of great interest for possible future automatization of the entire analysis technique.http://dx.doi.org/10.1051/epjconf/201510106019
collection DOAJ
language English
format Article
sources DOAJ
author Corsaro Enrico
Ridder Joris De
spellingShingle Corsaro Enrico
Ridder Joris De
DIAMONDS: a new Bayesian nested sampling tool*
EPJ Web of Conferences
author_facet Corsaro Enrico
Ridder Joris De
author_sort Corsaro Enrico
title DIAMONDS: a new Bayesian nested sampling tool*
title_short DIAMONDS: a new Bayesian nested sampling tool*
title_full DIAMONDS: a new Bayesian nested sampling tool*
title_fullStr DIAMONDS: a new Bayesian nested sampling tool*
title_full_unstemmed DIAMONDS: a new Bayesian nested sampling tool*
title_sort diamonds: a new bayesian nested sampling tool*
publisher EDP Sciences
series EPJ Web of Conferences
issn 2100-014X
publishDate 2015-01-01
description In the context of high-quality asteroseismic data provided by the NASA Kepler Mission, we developed a new code, termed DIAMONDS (high-DImensional And multi-MOdal NesteD Sampling), for fast Bayesian parameter estimation and model comparison by means of the Nested Sampling Monte Carlo (NSMC) algorithm, an efficient and powerful method very suitable for high-dimensional problems (like the peak bagging analysis of solar-like oscillations) and multi-modal problems (i.e. problems that show multiple solutions). We applied the code to the peak bagging analysis of solar-like oscillations observed in a challenging F-type star. By means of DIAMONDS one is able to detect the different backgrounds in the power spectrum of the star (e.g. stellar granulation and faculae activity) and to understand whether one or two oscillation peaks can be identified or not. In addition, we demonstrate a novel approach to peak bagging based on multi-modality, which is able to reduce significantly the number of free parameters involved in the peak bagging model. This novel approach is therefore of great interest for possible future automatization of the entire analysis technique.
url http://dx.doi.org/10.1051/epjconf/201510106019
work_keys_str_mv AT corsaroenrico diamondsanewbayesiannestedsamplingtool
AT ridderjorisde diamondsanewbayesiannestedsamplingtool
_version_ 1721244760174231552