Deep Neural Network Classifier for Variable Stars with Novelty Detection Capability

Tsang, Benny T.-H. and Schultz, William C. (2019) Deep Neural Network Classifier for Variable Stars with Novelty Detection Capability. The Astrophysical Journal, 877 (2). L14. ISSN 2041-8213

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Abstract

Common variable star classifiers are built with the singular goal of producing the correct class labels, leaving much of the multi-task capability of deep neural networks unexplored. We present a periodic light curve classifier that combines a recurrent neural network autoencoder for unsupervised feature extraction and a dual-purpose estimation network for supervised classification and novelty detection. The estimation network optimizes a Gaussian mixture model in the reduced-dimension feature space, where each Gaussian component corresponds to a variable class. An estimation network with a basic structure of a single hidden layer attains a cross-validation classification accuracy of ∼99%, which is on par with the conventional workhorses, random forest classifiers. With the addition of photometric features, the network is capable of detecting previously unseen types of variability with precision 0.90, recall 0.96, and an F1 score of 0.93. The simultaneous training of the autoencoder and estimation network is found to be mutually beneficial, resulting in faster autoencoder convergence, as well as superior classification and novelty detection performance. The estimation network also delivers adequate results even when optimized with pre-trained autoencoder features, suggesting that it can readily extend existing classifiers to provide added novelty detection capabilities.

Item Type: Article
Subjects: Open STM Article > Physics and Astronomy
Depositing User: Unnamed user with email support@openstmarticle.com
Date Deposited: 02 Jun 2023 05:53
Last Modified: 19 Aug 2025 03:35
URI: http://articles.sendtopublish.com/id/eprint/954

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