
TL;DR
This paper introduces a non-parametric machine learning method based on independent component analysis to disentangle systematic noise from exoplanetary signals in light curves, enhancing data analysis precision.
Contribution
It presents a novel blind signal de-mixing technique inspired by the Cocktail Party problem, applicable to exoplanet data without requiring auxiliary instrument information.
Findings
Successfully disentangles systematic noise from exoplanet signals in simulated data.
Effectively removes stellar variability from Kepler light curves.
Provides a validation of existing parametric correction methods.
Abstract
The characterisation of ever smaller and fainter extrasolar planets requires an intricate understanding of one's data and the analysis techniques used. Correcting the raw data at the 10^-4 level of accuracy in flux is one of the central challenges. This can be difficult for instruments that do not feature a calibration plan for such high precision measurements. Here, it is not always obvious how to de-correlate the data using auxiliary information of the instrument and it becomes paramount to know how well one can disentangle instrument systematics from one's data, given nothing but the data itself. We propose a non-parametric machine learning algorithm, based on the concept of independent component analysis, to de-convolve the systematic noise and all non-Gaussian signals from the desired astrophysical signal. Such a `blind' signal de-mixing is commonly known as the `Cocktail Party…
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