Functional Regression with Nonstationarity and Error Contamination: Application to the Economic Impact of Climate Change
Published: Sep 10, 2025
Last Updated: Sep 10, 2025
Authors:Kyungsik Nam, Won-Ki Seo
Abstract
This paper studies a functional regression model with nonstationary dependent and explanatory functional observations, in which the nonstationary stochastic trends of the dependent variable are explained by those of the explanatory variable, and the functional observations may be error-contaminated. We develop novel autocovariance-based estimation and inference methods for this model. The methodology is broadly applicable to economic and statistical functional time series with nonstationary dynamics. To illustrate our methodology and its usefulness, we apply it to the evaluation of the global economic impact of climate change, an issue of intrinsic importance.