Among the many challenges posed by the huge data volumes produced by the new generation of astronomical instruments there is also the search for rare and peculiar objects. Unsupervised outlier detection algorithms may provide a viable solution. In this work we compare the performances of six methods: the Local Outlier Factor, Isolation Forest, k-means clustering, a measure of novelty, and both a normal and a convolutional autoencoder. These methods were applied to data extracted from SDSS stripe 82. After discussing the sensitivity of each method to its own set of hyperparameters, we combine the results from each method to rank the objects and produce a final list of outliers.
SEEK ID: https://publications.h-its.org/publications/1259
Research Groups: Astroinformatics
Publication type: Journal
Book Title: Intelligent Astrophysics
Editors: Ivan Zelinka, Massimo Brescia, Dalya Baron
Publisher: Springer International Publishing
Citation:
Date Published: 2020
URL: https://www.springer.com/gp/book/9783030658663
Registered Mode: manually
Views: 4691
Created: 12th Apr 2021 at 16:32
Last updated: 5th Mar 2024 at 21:24
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