Nonparametric Transient Classification using Adaptive Wavelets
Melvin M. Varughese, Rainer von Sachs, Michael Stephanou, Bruce A., Bassett

TL;DR
This paper introduces a nonparametric, wavelet-based classifier for transient astronomical events that is translation-invariant, handles heteroscedastic data, and is effective for large-scale sky surveys without requiring spectroscopic data.
Contribution
The paper presents a novel combination of BAGIDIS wavelet methodology with a ranked probability classifier for classifying transients from light curves, enabling model-blind and efficient classification.
Findings
Achieved 80.5% Ia efficiency and 82.4% purity on supernova data.
Demonstrated effectiveness on light curves longer than 100 days.
Provided a model-blind classification approach suitable for large surveys.
Abstract
Classifying transients based on multi band light curves is a challenging but crucial problem in the era of GAIA and LSST since the sheer volume of transients will make spectroscopic classification unfeasible. Here we present a nonparametric classifier that uses the transient's light curve measurements to predict its class given training data. It implements two novel components: the first is the use of the BAGIDIS wavelet methodology - a characterization of functional data using hierarchical wavelet coefficients. The second novelty is the introduction of a ranked probability classifier on the wavelet coefficients that handles both the heteroscedasticity of the data in addition to the potential non-representativity of the training set. The ranked classifier is simple and quick to implement while a major advantage of the BAGIDIS wavelets is that they are translation invariant, hence they…
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