Functional Diffusion Maps
Abstract
Nowadays many real-world datasets can be considered as functional, in the sense that the processes which generate them are continuous. A fundamental property of this type of data is that in theory they belong to an infinite-dimensional space. Although in practice we usually receive finite observations, they are still high-dimensional and hence dimensionality reduction methods are crucial. In this vein, the main state-of-the-art method for functional data analysis is Functional PCA. Nevertheless, this classic technique assumes that the data lie in a linear manifold, and hence it could have problems when this hypothesis is not fulfilled. In this research, attention has been placed on a non-linear manifold learning method: Diffusion Maps. The article explains how to extend this multivariate method to functional data and compares its behavior against Functional PCA over different simulated and real examples.
Cite
@article{arxiv.2304.14378,
title = {Functional Diffusion Maps},
author = {María Barroso and Carlos María Alaíz and Ángela Fernández and Jose Luis Torrecilla},
journal= {arXiv preprint arXiv:2304.14378},
year = {2023}
}