Stellar Populations With Optical Spectra: Deep Learning vs. Popular Spectrum Fitting Codes
Joanna Woo, Dan Walters, Finn Archinuk, S. M. Faber, Sara L. Ellison,, Hossen Teimoorinia, Kartheik Iyer

TL;DR
This study compares traditional spectrum fitting codes and a deep learning model for recovering stellar population properties from simulated galaxy spectra, highlighting the superior accuracy and speed of the deep learning approach when properly trained.
Contribution
It demonstrates that a convolutional neural network significantly outperforms traditional codes in speed and accuracy for stellar population analysis, emphasizing the importance of training data quality.
Findings
StarNet outperforms all traditional codes in speed and accuracy.
pPXF is the fastest among non-ML codes and best at recovering properties.
Errors depend on true values, S/N ratio, and mock spectrum construction methods.
Abstract
We compare the performance of several popular spectrum fitting codes (Firefly, starlight, pyPipe3D and pPXF), and a deep-learning convolutional neural network (StarNet), in recovering known stellar population properties (mean stellar age, stellar metallicity, stellar mass-to-light ratio M*/L_r and the internal E(B-V)) of simulated galaxy spectra in optical wavelengths. Our mock spectra are constructed from star-formation histories from the IllustrisTNG100-1 simulation. These spectra mimic the Sloan Digital Sky Survey (SDSS) through a novel method of including the noise, sky residuals and emission lines taken directly from SDSS. We find that StarNet vastly outperforms all conventional codes in both speed and recovery of stellar population properties (error scatter < 0.08 dex, average biases < 0.02 dex for all tested quantities), but it requires an appropriate training set. Of the…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Stellar, planetary, and galactic studies · Astronomy and Astrophysical Research
