2019
DOI: 10.1093/mnras/stz2362
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Anomaly Detection in the Open Supernova Catalog

Abstract: In the upcoming decade large astronomical surveys will discover millions of transients raising unprecedented data challenges in the process. Only the use of the machine learning algorithms can process such large data volumes. Most of the discovered transients will belong to the known classes of astronomical objects. However, it is expected that some transients will be rare or completely new events of unknown physical nature. The task of finding them can be framed as an anomaly detection problem. In this work, … Show more

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Cited by 52 publications
(49 citation statements)
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“…The catalog is constantly evolving, but at any moment in time it is also known to contain some percentage of non-SN contaminants (Guillochon et al 2017;Pruzhinskaya et al 2019), which makes it well suited for our purposes. The real data analysis is based on the data set 4 first presented in Pruzhinskaya et al (2019). Therefore, the detailed description of quality cuts, the data selection process, and the preprocessing pipeline are given there.…”
Section: Datamentioning
confidence: 99%
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“…The catalog is constantly evolving, but at any moment in time it is also known to contain some percentage of non-SN contaminants (Guillochon et al 2017;Pruzhinskaya et al 2019), which makes it well suited for our purposes. The real data analysis is based on the data set 4 first presented in Pruzhinskaya et al (2019). Therefore, the detailed description of quality cuts, the data selection process, and the preprocessing pipeline are given there.…”
Section: Datamentioning
confidence: 99%
“…This has led to the development of a number of machine learning (ML) algorithms for anomaly detection (AD) with a large range of applications (Mehrotra et al 2017). In astronomy, these techniques have largely been applied to areas such as the identification of anoma-lous galaxy spectra (Baron & Poznanski 2017), problematic objects in photometric redshift estimation tasks (Hoyle et al 2015), characterization of light curves (LCs) of transients (Zhang & Zou 2018;Pruzhinskaya et al 2019), and variable stars (e.g., Rebbapragada et al 2009;Nun et al 2014;Giles & Walkowicz 2019;Malanchev et al 2021), among others.…”
Section: Introductionmentioning
confidence: 99%
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“…The use of automated anomaly detection (AD) algorithms might help mitigate some of these issues. However, traditional AD techniques are known to deliver a high incidence of false positives (see e.g., Pruzhinskaya et al 2019). Taking into account that, in astronomy, further scrutiny of an anomaly candidate is only possible through expensive spectroscopic follow-up, this translates into a significant fraction of resources spent in non-interesting targets.…”
Section: Anomaly Detectionmentioning
confidence: 99%