2023
DOI: 10.1093/mnras/stad2773
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Fast and efficient identification of anomalous galaxy spectra with neural density estimation

Vanessa Böhm,
Alex G Kim,
Stéphanie Juneau

Abstract: Current large-scale astrophysical experiments produce unprecedented amounts of rich and diverse data. This creates a growing need for fast and flexible automated data inspection methods. Deep learning algorithms can capture and pick up subtle variations in rich data sets and are fast to apply once trained. Here, we study the applicability of an unsupervised and probabilistic deep learning framework, the probabilistic auto-encoder, to the detection of peculiar objects in galaxy spectra from the SDSS survey. Dif… Show more

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Cited by 3 publications
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