English

Truncated Linear Models for Functional Data

Methodology 2014-07-01 v1

Abstract

A conventional linear model for functional data involves expressing a response variable YY in terms of the explanatory function X(t)X(t), via the model: Y=a+Ib(t)X(t)dt+errorY=a+\int_I b(t)X(t)dt+\hbox{error}, where aa is a scalar, bb is an unknown function and I=[0,α]I=[0, \alpha] is a compact interval. However, in some problems the support of bb or XX, I1I_1 say, is a proper and unknown subset of II, and is a quantity of particular practical interest. In this paper, motivated by a real-data example involving particulate emissions, we develop methods for estimating I1I_1. We give particular emphasis to the case I1=[0,θ]I_1=[0,\theta], where θ(0,α]\theta \in(0,\alpha], and suggest two methods for estimating aa, bb and θ\theta jointly; we introduce techniques for selecting tuning parameters; and we explore properties of our methodology using both simulation and the real-data example mentioned above. Additionally, we derive theoretical properties of the methodology, and discuss implications of the theory. Our theoretical arguments give particular emphasis to the problem of identifiability.

Keywords

Cite

@article{arxiv.1406.7732,
  title  = {Truncated Linear Models for Functional Data},
  author = {Peter Hall and Giles Hooker},
  journal= {arXiv preprint arXiv:1406.7732},
  year   = {2014}
}
R2 v1 2026-06-22T04:51:19.995Z