Functional Regression for Quasar Spectra
Mattia Ciollaro, Jessi Cisewski, Peter Freeman, Christopher Genovese,, Jing Lei, Ross O'Connell, Larry Wasserman

TL;DR
This paper develops a nonparametric functional regression approach to accurately predict the unobservable continuum in quasar Lyman-alpha spectra, enabling better analysis of cosmic matter distribution.
Contribution
It introduces a novel functional regression model with distribution-free prediction bands for analyzing quasar spectra.
Findings
Accurately predicts the continuum in simulated and real spectra.
Provides finite-sample guaranteed prediction bands.
Enhances understanding of matter distribution in the Universe.
Abstract
The Lyman-alpha forest is a portion of the observed light spectrum of distant galactic nuclei which allows us to probe remote regions of the Universe that are otherwise inaccessible. The observed Lyman-alpha forest of a quasar light spectrum can be modeled as a noisy realization of a smooth curve that is affected by a `damping effect' which occurs whenever the light emitted by the quasar travels through regions of the Universe with higher matter concentration. To decode the information conveyed by the Lyman-alpha forest about the matter distribution, we must be able to separate the smooth `continuum' from the noise and the contribution of the damping effect in the quasar light spectra. To predict the continuum in the Lyman-alpha forest, we use a nonparametric functional regression model in which both the response and the predictor variable (the smooth part of the damping-free portion of…
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Taxonomy
TopicsAdvanced Statistical Methods and Models · Statistical and numerical algorithms · Control Systems and Identification
