TL;DR
This paper introduces a functional data analysis method using principal components to extract intrinsic spectral features from large spectroscopic datasets, reducing systematics and enabling precise stellar parameter and abundance inference, demonstrated on the open cluster M67.
Contribution
The paper presents a novel functional principal component analysis approach to disentangle intrinsic spectral information from systematics in large spectroscopic surveys.
Findings
Intrinsic spectral structure requires about 10 functional principal components.
The method reduces spectral dimensionality and removes systematics effectively.
Achieved high-precision abundance constraints in M67, limiting element spread.
Abstract
High-resolution spectroscopic surveys of the Milky Way have entered the Big Data regime and have opened avenues for solving outstanding questions in Galactic archaeology. However, exploiting their full potential is limited by complex systematics, whose characterization has not received much attention in modern spectroscopic analyses. In this work, we present a novel method to disentangle the component of spectral data space intrinsic to the stars from that due to systematics. Using functional principal component analysis on a sample of giant spectra from APOGEE, we find that the intrinsic structure above the level of observational uncertainties requires 10 functional principal components (FPCs). Our FPCs can reduce the dimensionality of spectra, remove systematics, and impute masked wavelengths, thereby enabling accurate studies of stellar populations. To demonstrate…
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