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Penalized PCA approaches for B-spline expansions of smooth functional data

机译:惩罚性PCA方法用于平滑功能数据的B样条扩展

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摘要

Functional principal component analysis (FPCA) is a dimension reduction technique that explains the dependence structure of a functional data set in terms of uncorrelated variables. In many applications the data are a set of smooth functions observed with error. In these cases the principal components are difficult to interpret because the estimated weight functions have a lot of variability and lack of smoothness. The most common way to solve this problem is based on penalizing the roughness of a function by its integrated squared d-order derivative. Two alternative forms of penalized FPCA based on B-spline basis expansions of sample curves and a simpler discrete penalty that measures the roughness of a function by summing squared d-order differences between adjacent B-spline coefficients (P-spline penalty) are proposed in this paper. The main difference between both smoothed FPCA approaches is that the first uses the P-spline penalty in the least squares approximation of the sample curves in terms of a B-spline basis meanwhile the second introduces the P-spline penalty in the orthonormality constraint of the algorithm that computes the principal components. Leave-one-out cross-validation is adapted to select the smoothing parameter for these two smoothed FPCA approaches. A simulation study and an application with chemometric functional data are developed to test the performance of the proposed smoothed approaches and to compare the results with non penalized FPCA and regularized FPCA.
机译:功能主成分分析(FPCA)是一种降维技术,它以不相关的变量来解释功能数据集的依存结构。在许多应用中,数据是观察到的一组平滑函数,有误差。在这些情况下,主要成分难以解释,因为估计的权重函数具有很大的可变性且缺乏平滑度。解决此问题的最常见方法是基于对函数的粗糙度进行积分的平方d阶导数的惩罚。提出了两种基于样本曲线的B样条展开的惩罚FPCA形式,以及一种简单的离散罚分形式,它通过求和相邻B样条系数之间的平方d阶差(P样条罚分)来求和函数的粗糙度。这张纸。两种平滑的FPCA方法之间的主要区别在于,第一种方法以B样条为基础,在样本曲线的最小二乘近似中使用P样条罚分,而第二种方法在样本的正交正交约束中引入了P样条罚分。计算主要成分的算法。留一法交叉验证适用于为这两种平滑的FPCA方法选择平滑参数。开发了模拟研究和具有化学计量功能数据的应用程序,以测试所提出的平滑方法的性能,并将结果与​​非惩罚性FPCA和正规化FPCA进行比较。

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