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Semi-supervised Learning of Galaxy Morphology using Equivariant Transformer Variational Autoencoders

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arxiv 2011.08714 v1 pith:ZT5IPCBY submitted 2020-11-17 stat.ML cs.LG

Semi-supervised Learning of Galaxy Morphology using Equivariant Transformer Variational Autoencoders

classification stat.ML cs.LG
keywords galaxyaccuracyclassificationmorphologyclassifierdataequivariantimages
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The growth in the number of galaxy images is much faster than the speed at which these galaxies can be labelled by humans. However, by leveraging the information present in the ever growing set of unlabelled images, semi-supervised learning could be an effective way of reducing the required labelling and increasing classification accuracy. We develop a Variational Autoencoder (VAE) with Equivariant Transformer layers with a classifier network from the latent space. We show that this novel architecture leads to improvements in accuracy when used for the galaxy morphology classification task on the Galaxy Zoo data set. In addition we show that pre-training the classifier network as part of the VAE using the unlabelled data leads to higher accuracy with fewer labels compared to exiting approaches. This novel VAE has the potential to automate galaxy morphology classification with reduced human labelling efforts.

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