Inverse regression for spatially distributed functional data
Suneel Babu Chatla, Ruiqi Liu

TL;DR
This paper develops a comprehensive inverse regression framework for spatially distributed functional data, providing asymptotic theory, estimation methods, and validation through simulations and real data analysis.
Contribution
It introduces a novel spatial asymptotics framework (DEI) for inverse regression with irregularly observed functional data, including convergence results and optimal eigen-direction estimation.
Findings
Asymptotic convergence rates are established for various sampling schemes.
The proposed methods perform well in simulations and real data applications.
The DEI framework effectively addresses limitations of traditional spatial asymptotics.
Abstract
Spatially distributed functional data are prevalent in many statistical applications such as meteorology, energy forecasting, census data, disease mapping, and neurological studies. Given their complex and high-dimensional nature, functional data often require dimension reduction methods to extract meaningful information. Inverse regression is one such approach that has become very popular in the past two decades. We study the inverse regression in the framework of functional data observed at irregularly positioned spatial sites. The functional predictor is the sum of a spatially dependent functional effect and a spatially independent functional nugget effect, while the relation between the scalar response and the functional predictor is modeled using the inverse regression framework. For estimation, we consider local linear smoothing with a general weighting scheme, which includes as…
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Taxonomy
TopicsStatistical Methods and Inference · Data-Driven Disease Surveillance
