Spectroscopy and Spectral Analysis, Volume. 34, Issue 8, 2279(2014)

A New Method of Sparse Feature Extraction for Stellar Spectra

LU Yu*, LI Xiang-ru, YANG Tan, and WANG Yong-jun
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  • [in Chinese]
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    The authors propose a novel method of feature extraction for stellar spectra parameterization. The basic procedures are: First, stellar spectra are decomposed by multi-scale Harr wavelet and the coefficients with high-frequency are rejected. Secondly, the optimal features are detected by the lasso algorithm. Finally, we input the optimal feature vector to non-parametric regression model to estimate the atmospheric parameters. Haar wavelet can remove the high-frequency noise from the stellar spectrum. Lasso algorithm can further compress data by analyzing their significance on parameterization and removing redundancy. Experiments show that the proposed Haar+lasso method improves the accuracy and efficiency of the estimation. The authors used this scheme to estimate the atmospheric parameters from a subsample of some 40 000 stellar spectra from SDSS. The accuracies of our predictions (mean absolute errors) for each parameter are 0.007 1 dex for log Teff, 0.225 2 dex for log g, and 0.199 6 dex for [Fe/H]. Compared with the results of the existing literature, this scheme can derive more accurate atmospheric parameters.

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    LU Yu, LI Xiang-ru, YANG Tan, WANG Yong-jun. A New Method of Sparse Feature Extraction for Stellar Spectra[J]. Spectroscopy and Spectral Analysis, 2014, 34(8): 2279

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    Paper Information

    Received: Sep. 22, 2013

    Accepted: --

    Published Online: Aug. 18, 2014

    The Author Email: Yu LU (lydw1003@163.com)

    DOI:10.3964/j.issn.1000-0593(2014)08-2279-05

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