Rainbow: a colorful approach on multi-passband light curve estimation
E. Russeil, K. L. Malanchev, P. D. Aleo, E. E. O. Ishida, M. V., Pruzhinskaya, E. Gangler, A. D. Lavrukhina, A. A. Volnova, A. Voloshina, T., Semenikhin, S. Sreejith, M. V. Kornilov, and V. S. Korolev (The SNAD team)

TL;DR
Rainbow is a novel framework for multi-band light curve fitting that leverages physical models to improve reconstruction accuracy, especially with sparse data, by integrating temperature evolution and bolometric light curves.
Contribution
It introduces a physically motivated, multi-passband light curve estimation method that effectively combines data across filters and surveys, even with limited observations.
Findings
Rainbow improves goodness of fit by up to 75% over monochromatic methods.
It enhances ML classification accuracy across supernova types.
The method performs well with sparse and multi-survey data.
Abstract
We present Rainbow, a physically motivated framework which enables simultaneous multi-band light curve fitting. It allows the user to construct a 2-dimensional continuous surface across wavelength and time, even in situations where the number of observations in each filter is significantly limited. Assuming the electromagnetic radiation emission from the transient can be approximated by a black-body, we combined an expected temperature evolution and a parametric function describing its bolometric light curve. These three ingredients allow the information available in one passband to guide the reconstruction in the others, thus enabling a proper use of multi-survey data. We demonstrate the effectiveness of our method by applying it to simulated data from the Photometric LSST Astronomical Time-series Classification Challenge (PLAsTiCC) as well as real data from the Young Supernova…
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