2018
DOI: 10.48550/arxiv.1809.02497
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Sparse Kernel PCA for Outlier Detection

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“…( 15) instead of K, and β is not involved in the framework. As baseline kernel-DR methods, we choose the supervised algorithm K-FDA, LDR [9], SDR [25], KDR [26], and unsupervised DR algorithms JSE [27], SKPCA [28], and KEDR [8]. The classification results are reported in Table 2.…”
Section: Dimensionality Reductionmentioning
confidence: 99%
“…( 15) instead of K, and β is not involved in the framework. As baseline kernel-DR methods, we choose the supervised algorithm K-FDA, LDR [9], SDR [25], KDR [26], and unsupervised DR algorithms JSE [27], SKPCA [28], and KEDR [8]. The classification results are reported in Table 2.…”
Section: Dimensionality Reductionmentioning
confidence: 99%