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The New Measure of Robust Principal Component Analysis

机译:鲁棒主成分分析的新措施

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Principal Component Analysis (PCA) is a technique to transform the original set of variables into a smaller set of linear combinations that account for most of the original set variance. The data reduction based on the classical PCA is fruitless if outlier is present in the data. The decomposed classical covariance matrix is very sensitive to outlying observations. ROBPCA is an effective PCA method combining two advantages of both projection pursuit and robust covariance estimation. The estimation is computed with the idea of minimum covariance determinant (MCD) of covariance matrix. The limitation of MCD is when covariance determinant almost equal zero. This paper proposes PCA using the minimum vector variance (MVV) as new measure of robust PCA to enhance the result. MVV is defined as a minimization of sum of square length of the diagonal of a parallelotope to determine the location estimator and covariance matrix. The usefulness of MVV is not limited to small or low dimension data set and to non-singular or singular covariance matrix. The MVV algorithm, compared with FMCD algorithm, has a lower computational complexity; the complexity of VV is of order O(p~2).
机译:主成分分析(PCA)是一种将原始变量集转换为较小线性组合集的技术,该组合占了大多数原始集合方差。如果数据中存在异常值,则基于经典PCA的数据缩减将毫无结果。分解后的经典协方差矩阵对异常观测非常敏感。 ROBPCA是一种有效的PCA方法,结合了投影追踪和鲁棒协方差估计这两个优点。该估计是通过协方差矩阵的最小协方差决定因素(MCD)的思想来计算的。 MCD的局限性是当协方差行列式几乎等于零时。本文提出了一种使用最小矢量方差(MVV)作为鲁棒PCA新方法的PCA,以增强结果。 MVV定义为平行六边形对角线平方长度的总和最小,以确定位置估计量和协方差矩阵。 MVV的用途不仅限于小尺寸或低维数据集以及非奇异或奇异协方差矩阵。与FMCD算法相比,MVV算法具有较低的计算复杂度; VV的复杂度为O(p〜2)。

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