2022
DOI: 10.48550/arxiv.2208.01328
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Pan-chromatic photometric classification of supernovae from multiple surveys and transfer learning for future surveys

Abstract: Time-domain astronomy is entering a new era as wide-field surveys with higher cadences allow for more discoveries than ever before. The field has seen an increased use of machine learning and deep learning for automated classification of transients into established taxonomies. Training such classifiers requires a large enough and representative training set, which is not guaranteed for new future surveys such as the Vera Rubin Observatory, especially at the beginning of operations. We present the use of Gaussi… Show more

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“…Currently, this approach is the state-of-the-art method for SN light-curve preprocessing (see, e.g. Qu et al 2021;Alves et al 2022;Burhanudin &Maund 2022 for classification andPruzhinskaya et al 2019;Villar et al 2021;Ishida et al 2021;Muthukrishna et al 2021 for anomaly detection) and we use it as a baseline result below.…”
Section: Introductionmentioning
confidence: 99%
“…Currently, this approach is the state-of-the-art method for SN light-curve preprocessing (see, e.g. Qu et al 2021;Alves et al 2022;Burhanudin &Maund 2022 for classification andPruzhinskaya et al 2019;Villar et al 2021;Ishida et al 2021;Muthukrishna et al 2021 for anomaly detection) and we use it as a baseline result below.…”
Section: Introductionmentioning
confidence: 99%