In this paper we consider aggregated functional data composed by a linear combination of component curves and the problem of estimating these component curves. We propose the application of a bayesian wavelet shrinkage rule based on a mixture of a point mass function at zero and the logistic distribution as prior to wavelet coefficients to estimate mean curves of components. This procedure has the advantage of estimating component functions with important local characteristics such as discontinuities, spikes and oscillations for example, due the features of wavelet basis expansion of functions. Simulation studies were done to evaluate the performance of the proposed method and its results are compared with a spline-based method. An application on the so called tecator dataset is also provided.
翻译:在本文中,我们考虑了由各组成部分曲线的线性组合和估计这些组成部分曲线的问题构成的综合功能数据;我们提议根据零点质量函数和后勤分布的混合法,采用海湾波子缩减规则,以波子系数之前的逻辑分布法来估计各组成部分的平均曲线;这一程序的好处是,由于波子基功能扩展的特点,估计具有不连续、峰值和振荡等重要当地特点的部件功能;进行了模拟研究,以评价拟议方法的性能,其结果与以浮点法为基础的方法进行比较;还提供了所谓电动数据集的应用。