English

Measure Selection for Functional Linear Model

Methodology 2025-09-03 v1

Abstract

Advancements in modern science have led to an increased prevalence of functional data, which are usually viewed as elements of the space of square-integrable functions L2L^2. Core methods in functional data analysis, such as functional principal component analysis, are typically grounded in the Hilbert structure of L2L^2 and rely on inner products based on integrals with respect to the Lebesgue measure over a fixed domain. A more flexible framework is proposed, where the measure can be arbitrary, allowing natural extensions to unbounded domains and prompting the question of optimal measure choice. Specifically, a novel functional linear model is introduced that incorporates a data-adaptive choice of the measure that defines the space, alongside an enhanced function principal component analysis. Selecting a good measure can improve the model's predictive performance, especially when the underlying processes are not well-represented when adopting the default Lebesgue measure. Simulations, as well as applications to COVID-19 data and the National Health and Nutrition Examination Survey data, show that the proposed approach consistently outperforms the conventional functional linear model.

Keywords

Cite

@article{arxiv.2509.00583,
  title  = {Measure Selection for Functional Linear Model},
  author = {Su I Iao and Hans-Georg Müller},
  journal= {arXiv preprint arXiv:2509.00583},
  year   = {2025}
}