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Empirically Driven Orthonormal Bases for Functional Data Analysis

机译:功能数据分析的经验驱动的正交基础

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In implementations of the functional data methods, the effect of the initial choice of an orthonormal basis has not been properly studied. Typically, several standard bases such as Fourier, wavelets, splines, etc. are considered to transform observed functional data and a choice is made without any formal criteria indicating which of the bases is preferable for the initial transformation of the data. In an attempt to address this issue, we propose a strictly data-driven method of orthonormal basis selection. The method uses B-splines and utilizes recently introduced efficient orthornormal bases called the splinets. The algorithm learns from the data in the machine learning style to efficiently place knots. The optimality criterion is based on the average (per functional data point) mean square error and is utilized both in the learning algorithms and in comparison studies. The latter indicate efficiency that could be used to analyze responses to a complex physical system.
机译:在功能数据方法的实现中,初始选择正交基础的效果尚未得到适当研究。 通常,诸如傅立叶,小波,样条等的若干标准基础被认为是转换观察到的功能数据,并且在没有任何形式标准的情况下进行选择,该标准指示哪个基座优选用于数据的初始转换。 为了解决这个问题,我们提出了一个严格的数据驱动的正交选择方法。 该方法使用B样条曲线,并利用最近引入的高效矫正基座称为刀片。 该算法从机器学习风格中的数据学习,以有效地放置结。 最优标准基于平均值(每个功能数据点)均方误差,并且在学习算法和比较研究中使用。 后者表示可用于分析对复杂物理系统的响应的效率。

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