Galaxy Spectra neural Network (GaSNet). II. Using Deep Learning for Spectral Classification and Redshift Predictions
Fucheng Zhong, Nicola R. Napolitano, Caroline Heneka, Rui Li, Franz, Erik Bauer, Nicolas Bouche, Johan Comparat, Young-Lo Kim, Jens-Kristian, Krogager, Marcella Longhetti, Jonathan Loveday, Boudewijn F. Roukema,, Benedict L. Rouse, Mara Salvato, Crescenzo Tortora

TL;DR
GaSNet-II is a deep learning tool that classifies galaxy spectra and predicts redshifts with high accuracy, enabling efficient analysis of large spectroscopic datasets for current and future sky surveys.
Contribution
The paper introduces GaSNet-II, a multi-network deep learning pipeline that improves spectral classification and redshift estimation, demonstrating high accuracy on multiple survey datasets.
Findings
Achieves over 92% classification accuracy on SDSS spectra
Redshift errors are approximately 0.23% for galaxies and 2.1% for quasars
Processes ~40,000 spectra in less than a minute on a standard GPU
Abstract
Large sky spectroscopic surveys have reached the scale of photometric surveys in terms of sample sizes and data complexity. These huge datasets require efficient, accurate, and flexible automated tools for data analysis and science exploitation. We present the Galaxy Spectra Network/GaSNet-II, a supervised multi-network deep learning tool for spectra classification and redshift prediction. GaSNet-II can be trained to identify a customized number of classes and optimize the redshift predictions for classified objects in each of them. It also provides redshift errors, using a network-of-networks that reproduces a Monte Carlo test on each spectrum, by randomizing their weight initialization. As a demonstration of the capability of the deep learning pipeline, we use 260k Sloan Digital Sky Survey spectra from Data Release 16, separated into 13 classes including 140k galactic, and 120k…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · CCD and CMOS Imaging Sensors · Spectroscopy Techniques in Biomedical and Chemical Research
