2024
DOI: 10.1051/0004-6361/202348848
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FINKER: Frequency Identification through Nonparametric KErnel Regression in astronomical time series

F. Stoppa,
C. Johnston,
E. Cator
et al.

Abstract: Optimal frequency identification in astronomical datasets is crucial for variable star studies, exoplanet detection, and asteroseismology. Traditional period-finding methods often rely on specific parametric assumptions, employ binning procedures, or overlook the regression nature of the problem, limiting their applicability and precision. We introduce a universal, nonparametric kernel regression method for optimal frequency determination that is generalizable, efficient, and robust across various astronomical… Show more

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