SDSS/SEGUE Spectral Feature Analysis For Stellar Atmospheric Parameter Estimation
Xiangru Li, Q.M. Jonathan Wu, Ali Luo, Yongheng Zhao, Yu Lu, Fang Zuo,, Tan Yang, Yongjun Wang

TL;DR
This paper introduces a spectral feature analysis technique using LASSO and SVR to estimate stellar atmospheric parameters from large-scale spectra, achieving high accuracy and physical interpretability.
Contribution
The method combines feature extraction and regression for stellar parameters, emphasizing sparseness, locality, and physical interpretability, with demonstrated high consistency on SDSS/SEGUE data.
Findings
Estimation consistency: 0.007458 dex for logT_eff
Identified wavelength positions related to spectral lines
Features based on local flux integration improve accuracy
Abstract
Large-scale and deep sky survey missions are rapidly collecting a large amount of stellar spectra, which necessitate the estimation of atmospheric parameters directly from spectra and makes it feasible to statistically investigate latent principles in a large dataset. We present a technique for estimating parameters , log and [Fe/H] from stellar spectra. With this technique, we first extract features from stellar spectra using the LASSO algorithm; then, the parameters are estimated from the extracted features using the SVR. On a subsample of 20~000 stellar spectra from SDSS with reference parameters provided by SDSS/SEGUE Pipeline SSPP, estimation consistency are 0.007458 dex for log (101.609921 K for ), 0.189557 dex for log and 0.182060 for [Fe/H], where the consistency is evaluated by mean absolute error. Prominent characteristics of the proposed…
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