QUEST (Quasar Unsupervised Encoder and Synthesis Tool): A machine learning framework to generate quasar spectra
F. Guarneri, J. T. Schindler, R. A. Meyer, D. Yang, J. F. Hennawi, L. Lucie-Smith, S. E. I. Bosman, F. B. Davies

TL;DR
QUEST is a Variational Auto-Encoder framework that generates realistic quasar spectra, enabling spectral reconstruction, photometry synthesis, and insights into quasar physics without extensive tuning.
Contribution
The paper introduces QUEST, a novel unsupervised machine learning model that accurately reproduces and extends quasar spectra, capturing key physical properties directly from data.
Findings
The trained model faithfully reproduces input spectra in median and variance.
Latent space correlates with physical quasar properties like luminosity and redshift.
Photometry generated from spectra matches actual quasar photometry with high accuracy.
Abstract
Quasars at the redshift frontier (z > 7.0) are fundamental probes of black hole (BH) growth and evolution but notoriously difficult to identify. At these redshifts, machine learning-based selection methods have proven to be efficient, but require appropriate training sets to express their full potential. Here, we present QUEST, a Variational Auto-Encoder capable of generating realistic quasar spectra that can be post-processed for generating synthetic photometry and for spectral imputation. We start from the SDSS DR16Q catalogue, pre-process the spectra, and vet the sample to obtain a clean data set. After training the model, we investigate the properties of its latent space to understand whether it has learnt relevant physics. We provide a pipeline to generate photometry from the sampled spectra, compare it with actual quasar photometry, and showcase the capabilities of the model in…
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