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Novel Kernel Orthogonal Partial Least Squares for Dominant Sensor Data Extraction

机译:用于主导传感器数据提取的新型核正交部分最小二乘

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Orthogonal Partial Least Squares (OPLS) methods are aimed at finding the dominant factors from predictor variables that can maximize cross-covariance between the factors themselves and response variables while a high correlation between them should also be satisfied at the same time. Compared with discriminant analysis like Linear Discriminant Analysis, OPLS simultaneously considers covariance maximization and data fitting. However, unlike discriminant analysis that focuses on between-group discriminability, OPLS concentrates on cross-covariance that already contains no discriminant information. This deepens the difficulty of finding effective dominant factors. To rectify such a drawback of OPLS, this study proposes 1) successively orthogonal deflation in constrained noisy subspace and 2) isotropic space transform for enhancing OPLS. The former explores successively orthogonal projective vectors in subspace and iteratively updates the weighted signal space. The latter converts the dimensions with unequal influences into those with equal ones for correcting distortions. The two proposed rectifications are implemented in three types of Maximum Covariance Analysis (MCA) for examining the gradually changing functionalities, respectively - i) Successive Subspace-MCA, ii) Isotropic Subspace-MCA, and iii) Successive Isotropic Subspace-MCA. Experiments on open datasets were carried out to compare the proposed approaches with the baseline. The experimental results showed that the proposed rectifications maximized cross-covariance while fitting data well, thereby substantiating the effectiveness of the proposed idea.
机译:正交部分最小二乘(OPL)方法旨在寻找来自预测变量的主导因素,这些变量可以最大化因素本身和响应变量之间的交叉协方差,而它们之间的高相关同时也应该满足。与线性判别分析等判别分析相比,OPL同时考虑协方差最大化和数据配件。然而,与专注于群体之间的判别分析不同,OPLS专注于已经不包含判别信息的交叉协方差。这加深了寻找有效的主导因素的难度。为了纠正OPL的这种缺点,本研究提出了1)在受约束的噪声子空间和2)各向同性的噪声中的正交放气,用于增强OPL。前者探讨了子空间中的连续正交的投影矢量,迭代地更新加权信号空间。后者将尺寸转化为具有相同校正扭曲的人的影响。这两个提出的整流在三种类型的最大协方差分析(MCA)中实施,用于检查逐渐改变的功能,分别为I)连续子空间-MCA,II)各向同性子空间-MCA和III)连续各向同性亚空间 - MCA。开放数据集的实验进行了进行,以将提出的方法与基线进行比较。实验结果表明,所提出的整流最大化的交叉协方差,同时拟合数据井,从而提高了提出的想法的有效性。

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