figshare
Browse
1/1
3 files

Estimating the Covariance of Fragmented and Other Related Types of Functional Data

Version 2 2020-03-12, 13:43
Version 1 2020-02-13, 14:56
dataset
posted on 2020-03-12, 13:43 authored by Aurore Delaigle, Peter Hall, Wei Huang, Alois Kneip

We consider the problem of estimating the covariance function of functional data which are only observed on a subset of their domain, such as fragments observed on small intervals or related types of functional data. We focus on situations where the data enable to compute the empirical covariance function or smooth versions of it only on a subset of its domain which contains a diagonal band. We show that estimating the covariance function consistently outside that subset is possible as long as the curves are sufficiently smooth. We establish conditions under which the covariance function is identifiable on its entire domain and propose a tensor product series approach for estimating it consistently. We derive asymptotic properties of our estimator and illustrate its finite sample properties on simulated and real data. Supplementary materials for this article are available online.

Funding

Delaigle’s research was supported by a Future Fellowship (FT130100098) and a Discovery Project (DP170102434) of the Australian Research Council. Huang’s research was supported by the Australian Research Council Centre of Excellence for Mathematical and Statistical Frontiers (ACEMS).

History