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DeepMerge: Classifying High-redshift Merging Galaxies with Deep Neural Networks

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arxiv 2004.11981 v1 pith:IWNB6XHI submitted 2020-04-24 astro-ph.GA astro-ph.IMcs.CV

DeepMerge: Classifying High-redshift Merging Galaxies with Deep Neural Networks

classification astro-ph.GA astro-ph.IMcs.CV
keywords galaxiesmergingdatanoiseclassificationclassifierclassifyingextract
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We investigate and demonstrate the use of convolutional neural networks (CNNs) for the task of distinguishing between merging and non-merging galaxies in simulated images, and for the first time at high redshifts (i.e. $z=2$). We extract images of merging and non-merging galaxies from the Illustris-1 cosmological simulation and apply observational and experimental noise that mimics that from the Hubble Space Telescope; the data without noise form a "pristine" data set and that with noise form a "noisy" data set. The test set classification accuracy of the CNN is $79\%$ for pristine and $76\%$ for noisy. The CNN outperforms a Random Forest classifier, which was shown to be superior to conventional one- or two-dimensional statistical methods (Concentration, Asymmetry, the Gini, $M_{20}$ statistics etc.), which are commonly used when classifying merging galaxies. We also investigate the selection effects of the classifier with respect to merger state and star formation rate, finding no bias. Finally, we extract Grad-CAMs (Gradient-weighted Class Activation Mapping) from the results to further assess and interrogate the fidelity of the classification model.

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