TL;DR
This paper introduces an interpretable Gaussian process model for stellar light curves that directly relates to physical starspot properties, enabling robust inference of stellar surface features from observational data.
Contribution
It derives a closed-form Gaussian process model conditioned on starspot distributions, improving physical interpretability and inference from stellar light curves.
Findings
Model accurately calibrated for physical parameter inference
Enables robust estimation of starspot size, contrast, and latitude distribution
Open source Python implementation available
Abstract
The use of Gaussian processes (GPs) as models for astronomical time series datasets has recently become almost ubiquitous, given their ease of use and flexibility. GPs excel in particular at marginalization over the stellar signal in cases where the variability due to starspots rotating in and out of view is treated as a nuisance, such as in exoplanet transit modeling. However, these effective models are less useful in cases where the starspot signal is of primary interest since it is not obvious how the parameters of the GP model are related to the physical properties of interest, such as the size, contrast, and latitudinal distribution of the spots. Instead, it is common practice to explicitly model the effect of individual starspots on the light curve and attempt to infer their properties via optimization or posterior inference. Unfortunately, this process is degenerate, ill-posed,…
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