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Main Authors: Magill, Dylan, Nicholl, Matt, Anilkumar, Vysakh, van Velzen, Sjoert, Sheng, Xinyue, Mai, Thai Son, Tran, Hung Viet, Doan, Ngoc Phu, Moore, Thomas, Srivastav, Shubham, Young, David R., Angus, Charlotte R., Weston, Joshua
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.04946
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author Magill, Dylan
Nicholl, Matt
Anilkumar, Vysakh
van Velzen, Sjoert
Sheng, Xinyue
Mai, Thai Son
Tran, Hung Viet
Doan, Ngoc Phu
Moore, Thomas
Srivastav, Shubham
Young, David R.
Angus, Charlotte R.
Weston, Joshua
author_facet Magill, Dylan
Nicholl, Matt
Anilkumar, Vysakh
van Velzen, Sjoert
Sheng, Xinyue
Mai, Thai Son
Tran, Hung Viet
Doan, Ngoc Phu
Moore, Thomas
Srivastav, Shubham
Young, David R.
Angus, Charlotte R.
Weston, Joshua
contents The Vera C. Rubin Observatory's 10-Year Legacy Survey of Space and Time (LSST) is expected to produce a hundredfold increase in the number of transients we observe. However, there are insufficient spectroscopic resources to follow up on all of the wealth of targets that LSST will provide. As such it is necessary to be able to prioritise objects for followup observations or inclusion in sample studies based purely on their LSST photometry. We are particularly keen to identify tidal disruption events (TDEs) with LSST. TDEs are immensely useful for determining black hole parameters and probing our understanding of accretion physics. To assist in these efforts, we present the Many Artificial LSST Lightcurves based on the Observations of Real Nuclear transients (MALLORN) data set and the corresponding classifier challenge for identifying TDEs. MALLORN comprises 10178 simulated LSST light curves, constructed from real Zwicky Transient Facility (ZTF) observations of 64 TDEs, 727 nuclear supernovae and 1407 AGN with spectroscopic labels using Gaussian process fitting, empirically-motivated spectral energy distributions from SNCosmo and the baseline from the Rubin Survey Simulator. Our novel approach can be easily adapted to simulate transients for any photometric survey using observations from another, requiring only the limiting magnitudes and an estimate of the cadence of observations. The MALLORN Astronomical Classification Challenge, launched on Kaggle on 15/10/2025, will allow competitors to test their photometric classifiers on simulated LSST data to find TDEs and improve upon their capabilities prior to the start of LSST.
format Preprint
id arxiv_https___arxiv_org_abs_2512_04946
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MALLORN: Many Artificial LSST Lightcurves based on Observations of Real Nuclear transients
Magill, Dylan
Nicholl, Matt
Anilkumar, Vysakh
van Velzen, Sjoert
Sheng, Xinyue
Mai, Thai Son
Tran, Hung Viet
Doan, Ngoc Phu
Moore, Thomas
Srivastav, Shubham
Young, David R.
Angus, Charlotte R.
Weston, Joshua
High Energy Astrophysical Phenomena
The Vera C. Rubin Observatory's 10-Year Legacy Survey of Space and Time (LSST) is expected to produce a hundredfold increase in the number of transients we observe. However, there are insufficient spectroscopic resources to follow up on all of the wealth of targets that LSST will provide. As such it is necessary to be able to prioritise objects for followup observations or inclusion in sample studies based purely on their LSST photometry. We are particularly keen to identify tidal disruption events (TDEs) with LSST. TDEs are immensely useful for determining black hole parameters and probing our understanding of accretion physics. To assist in these efforts, we present the Many Artificial LSST Lightcurves based on the Observations of Real Nuclear transients (MALLORN) data set and the corresponding classifier challenge for identifying TDEs. MALLORN comprises 10178 simulated LSST light curves, constructed from real Zwicky Transient Facility (ZTF) observations of 64 TDEs, 727 nuclear supernovae and 1407 AGN with spectroscopic labels using Gaussian process fitting, empirically-motivated spectral energy distributions from SNCosmo and the baseline from the Rubin Survey Simulator. Our novel approach can be easily adapted to simulate transients for any photometric survey using observations from another, requiring only the limiting magnitudes and an estimate of the cadence of observations. The MALLORN Astronomical Classification Challenge, launched on Kaggle on 15/10/2025, will allow competitors to test their photometric classifiers on simulated LSST data to find TDEs and improve upon their capabilities prior to the start of LSST.
title MALLORN: Many Artificial LSST Lightcurves based on Observations of Real Nuclear transients
topic High Energy Astrophysical Phenomena
url https://arxiv.org/abs/2512.04946