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首页> 外文期刊>Astronomy and astrophysics >Photometric identification of blue horizontal branch stars
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Photometric identification of blue horizontal branch stars

机译:蓝色水平分支星的光度识别

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We investigate the performance of some common machine learning techniques in identifying blue horizontal branch (BHB) stars from photometric data. To?train the machine learning algorithms, we use previously published spectroscopic identifications of BHB?stars from Sloan digital sky survey (SDSS) data. We investigate the performance of three different techniques, namely?k nearest neighbour classification, kernel density estimation for discriminant analysis and a support vector machine (SVM). We discuss the performance of the methods in terms of both completeness (what fraction of input BHB?stars are successfully returned as BHB stars) and contamination (what fraction of contaminating sources end up in the output BHB sample). We discuss the prospect of trading off these values, achieving lower contamination at the expense of lower completeness, by?adjusting probability thresholds for the classification. We also discuss the role of prior probabilities in the classification performance, and we assess via simulations the reliability of the dataset used for training. Overall it seems that no-prior gives the best completeness, but adopting a prior lowers the contamination. We find that the support vector machine generally delivers the lowest contamination for a given level of completeness, and so is our method of choice. Finally, we classify a large sample of SDSS Data Release?7 (DR7) photometry using the SVM trained on the spectroscopic sample. We identify 27?074?probable BHB?stars out of a sample of 294?652?stars. We derive photometric parallaxes and demonstrate that our results are reasonable by comparing to known distances for a selection of globular clusters. We attach our classifications, including probabilities, as?an electronic table, so?that they can be used either directly as a?BHB?star catalogue, or?as priors to a spectroscopic or other classification method. We also provide our final models so that they can be directly applied to new data.
机译:我们调查了一些常见的机器学习技术在从光度数据中识别蓝色水平分支(BHB)星的性能。为了训练机器学习算法,我们使用了先前发布的来自斯隆数字天空测量(SDSS)数据的BHB星的光谱识别。我们研究了三种不同技术的性能,即k最近邻分类,判别分析的核密度估计和支持向量机(SVM)。我们从完整性(成功地将输入的BHB星中的几部分成功返回为BHB星)和污染(污染的源中,最终输出的BHB样本中占最后的部分)的角度讨论了方法的性能。我们讨论了通过调整分类的概率阈值来权衡这些值,以较低的完整性为代价实现较低的污染的前景。我们还讨论了先验概率在分类性能中的作用,并通过模拟评估了用于训练的数据集的可靠性。总体而言,似乎没有先例可以提供最佳的完整性,但是采用先验可以降低污染。我们发现,在给定的完整性水平下,支持向量机通常提供最低的污染,因此也是我们的选择方法。最后,我们使用在光谱样本上训练的SVM对SDSS Data Release?7(DR7)光度法的大型样本进行分类。我们从294?652?星的样本中识别出27?074?可能的BHB星。我们推导了光度视差,并通过与选择球状星团的已知距离进行比较证明了我们的结果是合理的。我们将分类(包括概率)附加为电子表格,以使它们可以直接用作“ BHB”星级目录,也可以在光谱或其他分类方法之前使用。我们还提供了最终模型,以便可以将其直接应用于新数据。

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