GASRLGOct 5, 2021

Measuring chemical likeness of stars with RSCA

arXiv:2110.02250v1
Originality Incremental advance
AI Analysis

This work addresses the challenge of measuring chemical similarity between stars for Galactic archaeology, offering an incremental improvement over existing methods by leveraging spectra directly to reduce systematic errors.

The paper tackled the problem of identifying chemically similar stars in Galactic archaeology by developing a data-driven model called Relevant Scaled Component Analysis (RSCA) that maps stellar spectra to a representation optimizing recovery of known open clusters, finding that it identifies known stellar siblings more effectively than using stellar abundance measurements, with 1.8% of field star pairs being as similar as birth siblings compared to 2.3% using abundances.

Identification of chemically similar stars using elemental abundances is core to many pursuits within Galactic archaeology. However, measuring the chemical likeness of stars using abundances directly is limited by systematic imprints of imperfect synthetic spectra in abundance derivation. We present a novel data-driven model that is capable of identifying chemically similar stars from spectra alone. We call this Relevant Scaled Component Analysis (RSCA). RSCA finds a mapping from stellar spectra to a representation that optimizes recovery of known open clusters. By design, RSCA amplifies factors of chemical abundance variation and minimizes those of non-chemical parameters, such as instrument systematics. The resultant representation of stellar spectra can therefore be used for precise measurements of chemical similarity between stars. We validate RSCA using 185 cluster stars in 22 open clusters in the APOGEE survey. We quantify our performance in measuring chemical similarity using a reference set of 151,145 field stars. We find that our representation identifies known stellar siblings more effectively than stellar abundance measurements. Using RSCA, 1.8% of pairs of field stars are as similar as birth siblings, compared to 2.3% when using stellar abundance labels. We find that almost all of the information within spectra leveraged by RSCA fits into a two-dimensional basis, which we link to [Fe/H] and alpha-element abundances. We conclude that chemical tagging of stars to their birth clusters remains prohibitive. However, using the spectra has noticeable gain, and our approach is poised to benefit from larger datasets and improved algorithm designs.

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