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Application of Multi-task Sparse Lasso Feature Extraction and Support Vector Machine Regression in the Stellar Atmospheric Parameterization

机译:多任务稀疏套索特征提取和支持向量机回归在恒星大气参数化中的应用

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Abstract The multi-task learning takes the multiple tasks together to make analysis and calculation, so as to dig out the correlations among them, and therefore to improve the accuracy of the analyzed results. This kind of methods have been widely applied to the machine learning, pattern recognition, computer vision, and other related fields. This paper investigates the application of multi-task learning in estimating the stellar atmospheric parameters, including the surface temperature (T eff ), surface gravitational acceleration (lg g), and chemical abundance ([Fe/H]). Firstly, the spectral features of the three stellar atmospheric parameters are extracted by using the multi-task sparse group Lasso algorithm, then the support vector machine is used to estimate the atmospheric physical parameters. The proposed scheme is evaluated on both the Sloan stellar spectra and the theoretical spectra computed from the Kurucz's New Opacity Distribution Function (NEWODF) model. The mean absolute errors (MAEs) on the Sloan spectra are: 0.0064 for lg (T eff /K), 0.1622 for lg (g/(cm · s?2)), and 0.1221 dex for [Fe/H]; the MAEs on the synthetic spectra are 0.0006 for lg (T eff /K), 0.0098 for lg (g/(cm · s?2)), and 0.0082 dex for [Fe/H]. Experimental results show that the proposed scheme has a rathe
机译:<![cdata [ 抽象 多任务学习将多个任务一起取得分析和计算,以便挖掘它们之间的相关性,因此提高分析结果的准确性。这种方法已广泛应用于机器学习,模式识别,计算机视觉和其他相关领域。本文研究了多任务学习在估计恒星大气参数时的应用,包括表面温度( t eff ),表面重力加速度(lg g ),化学丰度([fe / h])。首先,通过使用多任务稀疏组套索算法提取三个恒星大气参数的光谱特征,然后使用支持向量机来估计大气物理参数。在Sloan Stellar光谱和从Kurucz的新透明度分布函数(Newodf)模型中计算的理论光谱评估所提出的方案。 Sloan Spectra上的平均绝对误差(MAE)是:0.0064用于LG( T EFF / K), 0.1622用于LG( g /(cm·s ?2 ),0.1221 dex for [fe / h ]; LG的合成光谱上的MAE为0.0006( T EFP / K),0.0098用于LG( g /(cm·s ?2 )),0.0082 dex for [fe / h]。实验结果表明,该方案有一个Rathe

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