Machine Learning Techniques for Astrophysics and Cosmology: Lyman-$\alpha$ forest
Jon\'as Chaves-Montero

TL;DR
This paper reviews how machine-learning techniques have revolutionized the analysis of the Lyman-$\alpha$ forest, enabling more efficient and detailed cosmological insights from quasar spectra.
Contribution
It provides a comprehensive overview of ML applications in Lyman-$\alpha$ forest research, highlighting advancements in data analysis, simulation emulation, and field reconstruction.
Findings
ML improves characterization of absorption systems
ML accelerates hydrodynamical simulation emulation
ML enables 3D matter density reconstruction
Abstract
The Lyman- forest refers to the series of absorption features observed in the spectra of distant quasars that are produced by neutral hydrogen in the intergalactic medium. Observed over a wide range of redshifts with both ground- and space-based facilities, the Lyman- forest provides a powerful probe of numerous physical processes, including the thermal state of intergalactic gas, the timing and topology of cosmic reionization, the expansion history of the Universe, the growth of cosmic structure, massive neutrinos, and the nature of dark matter. This chapter reviews the transformative impact of machine-learning techniques on Lyman- forest analyses, particularly in overcoming the computational and methodological limitations of traditional approaches. We discuss a broad range of machine-learning applications, including the automated characterization of individual…
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