Reconstructing Quasar Spectra and Measuring the Ly$\alpha$ Forest with ${\rm S{\scriptsize pender}Q}$
ChangHoon Hahn, Satya Gontcho A Gontcho, Peter Melchior, Hiram K. Herrera-Alcantar, Jessica Nicole Aguilar, Steven Ahlen, Davide Bianchi, David Brooks, Todd Claybaugh, Axel de la Macorra, Arjun Dey, Peter Doel, Jaime E. Forero-Romero, Gaston Gutierrez, Mustapha Ishak

TL;DR
SpenderQ is a machine learning method that accurately reconstructs intrinsic quasar spectra and measures the Lyα forest, reducing biases in cosmological analyses and enabling detailed quasar studies.
Contribution
The paper introduces SpenderQ, a novel ML-based approach that directly reconstructs quasar spectra and Lyα absorption features, improving accuracy over existing methods.
Findings
Accurately reconstructs intrinsic quasar spectra, including emission lines.
Achieves percent-level accuracy redward of LyA and <5% blueward.
Reduces biases in LyA clustering measurements.
Abstract
Quasar spectra carry the imprint of foreground intergalactic medium (IGM) through absorption features. In particular, absorption caused by neutral hydrogen gas, the ``Ly forest,'' is a key spectroscopic tracer for cosmological analyses used to measure cosmic expansion and test physics beyond the standard model. Despite their importance, current methods for measuring LyA absorption cannot directly derive the intrinsic quasar continuum and make strong assumptions on its shape, thus distorting the measured LyA clustering. We present SpenderQ, a ML-based approach for directly reconstructing the intrinsic quasar spectra and measuring the LyA forest from observations. SpenderQ uses the Spender spectrum autoencoder to learn a compact and redshift-invariant latent encoding of quasar spectra, combined with an iterative procedure to identify and mask absorption regions. To demonstrate its…
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