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Introduction of Machine Learning for Astronomy (Hands-on Workshop)

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arxiv 2302.06475 v1 pith:E6FK4S5B submitted 2023-02-13 astro-ph.IM astro-ph.COastro-ph.HEgr-qc

Introduction of Machine Learning for Astronomy (Hands-on Workshop)

classification astro-ph.IM astro-ph.COastro-ph.HEgr-qc
keywords astronomylearningmachinenetworkbasicdemonstratehands-onprocess
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This article is based on the tutorial we gave at the hands-on workshop of the ICRANet-ISFAHAN Astronomy Meeting. We first introduce the basic theory of machine learning and sort out the whole process of training a neural network. We then demonstrate this process with an example of inferring redshifts from SDSS spectra. To emphasize that machine learning for astronomy is easy to get started, we demonstrate that the most basic CNN network can be used to obtain high accuracy, we also show that with simple modifications, the network can be converted for classification problems and also to processing gravitational wave data.

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