Challenges in the automated classification of variable stars in large databases
With ever-increasing numbers of astrophysical transient surveys, new facilities and archives of astronomical time series, time domain astronomy is emerging as a mainstream discipline. However, the sheer volume of data alone - hundreds of observations for hundreds of millions of sources – necessitate...
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doaj-376a681e7a9b404d8f3f2a1e89229b2b2021-08-02T02:44:35ZengEDP SciencesEPJ Web of Conferences2100-014X2017-01-011520300110.1051/epjconf/201715203001epjconf_puls2017_03001Challenges in the automated classification of variable stars in large databasesGraham MatthewDrake Andrew0Djorgovski S.G.1Mahabal Ashish2Donalek Ciro3California Institute of TechnologyCalifornia Institute of TechnologyCalifornia Institute of TechnologyCalifornia Institute of TechnologyWith ever-increasing numbers of astrophysical transient surveys, new facilities and archives of astronomical time series, time domain astronomy is emerging as a mainstream discipline. However, the sheer volume of data alone - hundreds of observations for hundreds of millions of sources – necessitates advanced statistical and machine learning methodologies for scientific discovery: characterization, categorization, and classification. Whilst these techniques are slowly entering the astronomer’s toolkit, their application to astronomical problems is not without its issues. In this paper, we will review some of the challenges posed by trying to identify variable stars in large data collections, including appropriate feature representations, dealing with uncertainties, establishing ground truths, and simple discrete classes.https://doi.org/10.1051/epjconf/201715203001 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Graham Matthew Drake Andrew Djorgovski S.G. Mahabal Ashish Donalek Ciro |
spellingShingle |
Graham Matthew Drake Andrew Djorgovski S.G. Mahabal Ashish Donalek Ciro Challenges in the automated classification of variable stars in large databases EPJ Web of Conferences |
author_facet |
Graham Matthew Drake Andrew Djorgovski S.G. Mahabal Ashish Donalek Ciro |
author_sort |
Graham Matthew |
title |
Challenges in the automated classification of variable stars in large databases |
title_short |
Challenges in the automated classification of variable stars in large databases |
title_full |
Challenges in the automated classification of variable stars in large databases |
title_fullStr |
Challenges in the automated classification of variable stars in large databases |
title_full_unstemmed |
Challenges in the automated classification of variable stars in large databases |
title_sort |
challenges in the automated classification of variable stars in large databases |
publisher |
EDP Sciences |
series |
EPJ Web of Conferences |
issn |
2100-014X |
publishDate |
2017-01-01 |
description |
With ever-increasing numbers of astrophysical transient surveys, new facilities and archives of astronomical time series, time domain astronomy is emerging as a mainstream discipline. However, the sheer volume of data alone - hundreds of observations for hundreds of millions of sources – necessitates advanced statistical and machine learning methodologies for scientific discovery: characterization, categorization, and classification. Whilst these techniques are slowly entering the astronomer’s toolkit, their application to astronomical problems is not without its issues. In this paper, we will review some of the challenges posed by trying to identify variable stars in large data collections, including appropriate feature representations, dealing with uncertainties, establishing ground truths, and simple discrete classes. |
url |
https://doi.org/10.1051/epjconf/201715203001 |
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