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Feature Extraction Using Discriminant Graph Laplacian Principal Component Analysis with Application to Biomedical Datasets

机译:使用判别图拉普拉斯主成分分析与应用到生物医学数据集的特征提取

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In this paper, we propose a manifold learning method called discriminant graph Laplacian principal component analysis (DGLPCA) for feature extraction. The proposed method projects high dimensional data into a lower dimensional subspace while preserving much of the intrinsic structure of the data. Moreover, DGLPCA integrates maximum margin criterion into its objection function to improve class separability in the lower dimensional space. The effectiveness of the proposed method is demonstrated on two publicly available biomedical datasets taken from UCI machine learning repository. The results show that our proposed method provides more discriminative power compared to other similar approaches.
机译:在本文中,我们提出了一种称为判别图拉普拉斯主成分分析(DGLPCA)的歧管学习方法,用于特征提取。 该方法将高维数据投影到较低的维子空间,同时保留了大部分数据的内在结构。 此外,DGLPCA将最大裕度标准集成到其异议功能中,以提高较低尺寸空间中的阶级可分离性。 所提出的方法的有效性在从UCI机器学习存储库中取出的两个公共生物医学数据集上。 结果表明,与其他类似的方法相比,我们所提出的方法提供了更多的歧视力。

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