Robust period estimation using mutual information for multiband light curves in the synoptic survey era
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Huijse, Pablo
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Robust period estimation using mutual information for multiband light curves in the synoptic survey era
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Abstract
The Large Synoptic Survey Telescope (LSST) will produce an unprecedented amount of light curves
using six optical bands. Robust and efficient methods that can aggregate data from multidimensional
sparsely-sampled time series are needed. In this paper we present a new method for light curve
period estimation based on the quadratic mutual information (QMI). The proposed method does not
assume a particular model for the light curve nor its underlying probability density and it is robust
to non-Gaussian noise and outliers. By combining the QMI from several bands the true period
can be estimated even when no single-band QMI yields the period. Period recovery performance
as a function of average magnitude and sample size is measured using 30,000 synthetic multi-band
light curves of RR Lyrae and Cepheid variables generated by the LSST Operations and Catalog
simulators. The results show that aggregating information from several bands is highly beneficial in LSST sparsely-sampled time series, obtaining an absolute increase in period recovery rate up to 50%.
We also show that the QMI is more robust to noise and light curve length (sample size) than the
multiband generalizations of the Lomb Scargle and Analysis of Variance periodograms, recovering
the true period in 10-30% more cases than its competitors. A python package containing efficient
Cython implementations of the QMI and other methods is provided.
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URI: https://repositorio.uchile.cl/handle/2250/169445
DOI: 10.3847/1538-4365/aab77c
ISSN: 00670049
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Astrophysical Journal, Supplement Series, Volumen 236, Issue 1, 2018
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