Abstract
A method was developed for the detection and measurement of a periodic signal with unknown characteristics in a data set where the existence of such signal was not known. The method detects a signal by using Bayesian probability theory to compare a constant model for the signal to members of a class of models with periodic structure. The method was applied to simulated data generated with both stepwise and sinusoidal light curves, demonstrating that such signals can be sensitively detected and the signal frequency and its shape can be accurately estimated.
Author
Gregory, P. C.; Loredo, Thomas J.
Journal
Astrophysical Journal
Paper Publication Date
October 1992
Paper Type
Astrostatistics