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Stellar Spectral Subclasses Classification Based on Fisher Criterion and Manifold Learning

机译:基于Fisher准则和流形学习的恒星光谱子类分类

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摘要

Linear Discriminant Analysis (LDA) and Locality Preserving Projections (LPP) are two widely used feature extraction methods. The advantage of LDA is that it takes the global structure of the data into consideration by maximizing the ratio of the between-class scatter to the within-class scatter. LPP tries to preserve the local structure of the data. The global and local structure of the data are very important in dealing with feature extraction problems but it is regretful that the above two methods cannot fully utilize all the information. In view of this, Modified Discriminant Analysis based on Fisher Criterion and Manifold Learning (MDA) is proposed in this paper. Two important concepts are introduced: Manifold based Within-Class Scatter (MWCS) and Manifold based Between-Class Scatter (MBCS). MDA aims to find an optimal projection matrix by maximizing the ratio of MBCS to MWCS based on Fisher criterion. In this paper, we will investigate the performance of MDA in the stellar spectral subclasses classification. We first reduce the dimension of spectra data by PCA (Principal Component Analysis), LDA, LPP, and MDA, respectively. Then we apply support vector machine (SVM) to classify the four subclasses of K-type spectra, three subclasses of F-type spectra, and three subclasses of G-type spectra from Sloan Digital Sky Survey (SDSS). The comparative experiment results verify MDA can preserve both the local and global structure of the data when embed the original data into much lower dimensional space.
机译:线性判别分析(LDA)和局部保留投影(LPP)是两种广泛使用的特征提取方法。 LDA的优势在于,它通过最大化类间散布与类内散布的比率​​来考虑数据的全局结构。 LPP尝试保留数据的本地结构。数据的全局和局部结构对于处理特征提取问题非常重要,但遗憾的是,上述两种方法无法充分利用所有信息。有鉴于此,本文提出了基于Fisher准则和流形学习(MDA)的修正判别分析。引入了两个重要的概念:基于流形的类内散布(MWCS)和基于流形的类间散布(MBCS)。 MDA旨在通过基于Fisher准则最大化MBCS与MWCS的比率来找到最佳的投影矩阵。在本文中,我们将研究MDA在恒星光谱子类分类中的性能。我们首先分别通过PCA(主成分分析),LDA,LPP和MDA减小光谱数据的维数。然后,我们使用支持向量机(SVM)对来自斯隆数字天空测量(SDSS)的K型谱的四个子类,F型谱的三个子类和G型谱的三个子类进行分类。对比实验结果证明,将原始数据嵌入到低维空间中时,MDA可以保留数据的局部和全局结构。

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