TL;DR
This paper develops a machine learning pipeline for classifying supernovae from photometric light curves, achieving high accuracy without redshift data, crucial for upcoming large-scale surveys.
Contribution
It introduces a multi-faceted classification pipeline combining various feature extraction methods and machine learning algorithms, demonstrating high accuracy on simulated data.
Findings
SALT2 and wavelet features with BDTs achieve AUC of 0.98.
Accurate classification possible without redshift information.
Training set representativeness is crucial for performance.
Abstract
Automated photometric supernova classification has become an active area of research in recent years in light of current and upcoming imaging surveys such as the Dark Energy Survey (DES) and the Large Synoptic Survey Telescope, given that spectroscopic confirmation of type for all supernovae discovered will be impossible. Here, we develop a multi-faceted classification pipeline, combining existing and new approaches. Our pipeline consists of two stages: extracting descriptive features from the light curves and classification using a machine learning algorithm. Our feature extraction methods vary from model-dependent techniques, namely SALT2 fits, to more independent techniques fitting parametric models to curves, to a completely model-independent wavelet approach. We cover a range of representative machine learning algorithms, including naive Bayes, k-nearest neighbors, support vector…
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