A wavelet-based method in aggregated functional data analysis

Conference: Symposium on Data Science and Statistics (SDSS) 2023
05/24/2023: 11:25 AM - 11:50 AM CDT
Refereed 

Description

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.

Keywords

wavelets

wavelet shrinkage

functional data analysis 

Presenting Author

Alex Sousa

First Author

Alex Sousa

Target Audience

Expert

Tracks

Computational Statistics
Symposium on Data Science and Statistics (SDSS) 2023