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Kernel PCA for Supernovae Photometric Classification

机译:用于SuperNovae光度分类的内核PCA

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In this work, we propose the use of Kernel Principal Component Analysis (KPCA) combined with k = 1 nearest neighbor algorithm (1NN) as a framework for supernovae (SNe) photometric classification. It is specially recommended for analysis where the user is interested in high purity in the final SNe Ia sample. Our method provide good purity results in all data sample analyzed, when SNR≥5. As a consequence, we can state that if a sample as the Supernova Photometric Classification Challenge were available today, we would be able to classify ≈ 15% of the initial data set with purity higher than 90%. This makes our algorithm ideal for a first approach to an unlabeled data set or to be used as a complement in increasing the training sample for other algorithms. Results are sensitive to the information contained in each light curve, as a consequence, higher quality data (low noise) leads to higher successful classification rates.
机译:在这项工作中,我们提出了使用内核主成分分析(KPCA)与K = 1最近邻算法(1NN)相结合作为超新星(SNE)光度分类的框架。它特别推荐用于分析,其中用户对最终的SNE IA样本中的高纯度感兴趣。当SNR≥5时,我们的方法在分析的所有数据样本中提供良好的纯度。因此,我们可以说:如果今天可以使用作为超新星光度分类挑战的样本,我们将能够将≈15%的初始数据集分类为高于90%。这使得我们的算法成为未标记数据集的第一种方法或用作增加其他算法的训练样本的补充。结果对每个光曲线中包含的信息敏感,因此,更高质量的数据(低噪声)导致更高的成功分类速率。

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