TwinSpecNet: Extending APOGEE's chemical reach to low-S/N spectra via empirical paired learning
Weijia Sun, Cristina Chiappini, Samir Nepal

TL;DR
TwinSpecNet (TSN) is a paired-learning framework that enhances chemical abundance estimates from low-S/N stellar spectra by leveraging multi-visit data and a Vision Transformer encoder.
Contribution
TSN introduces an empirical paired-learning approach using multi-visit spectra to improve chemical and stellar parameter measurements in low-S/N conditions.
Findings
TSN reduces label scatter for S/N<60 visits.
TSN achieves residual scatters of <19 K in T_eff, ~0.06 dex in log g, and ~0.03 dex in Fe/H.
TSN improves chemical sequence recovery and age precision in APOGEE data.
Abstract
Large spectroscopic surveys rely on automated pipelines to deliver homogeneous stellar labels, but a substantial fraction of observations are at low signal-to-noise ratio (S/N), where label estimates become imprecise or are omitted. In APOGEE, these low-S/N spectra visits sample faint and distant populations -- the bulge, outer halo, and satellite systems -- yet still encode recoverable chemical information. We present TwinSpecNet (TSN), a paired-learning framework that exploits APOGEE's multi-visit observing strategy: by training on empirical low-/high-S/N spectral twins of the same stars, TSN learns to suppress stochastic noise while preserving the ASPCAP label scale. TSN employs a Vision Transformer encoder with dual objectives: reconstructing high-S/N flux from low-S/N visits and predicting stellar parameters and abundances with calibrated uncertainties. TSN reduces label scatter…
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