Penalized spatial function-on-function regression
Ufuk Beyaztas, Han Lin Shang, Gizel Bakicierler Sezer

TL;DR
This paper introduces a penalized spatial function-on-function regression model that accounts for spatial dependencies in functional data, improving estimation accuracy and interpretability.
Contribution
It extends the generalized spatial two-stage least-squares estimator to functional data with a novel penalization approach, ensuring smoothness and robustness.
Findings
Outperforms existing estimators in simulations with spatial dependence.
Proves $\
asymptotic normality of the estimator.
Abstract
The function-on-function regression model is fundamental for analyzing relationships between functional covariates and responses. However, most existing function-on-function regression methodologies assume independence between observations, which is often unrealistic for spatially structured functional data. We propose a novel penalized spatial function-on-function regression model to address this limitation. Our approach extends the generalized spatial two-stage least-squares estimator to functional data, while incorporating a roughness penalty on the regression coefficient function using a tensor product of B-splines. This penalization ensures optimal smoothness, mitigating overfitting, and improving interpretability. The proposed penalized spatial two-stage least-squares estimator effectively accounts for spatial dependencies, significantly improving estimation accuracy and…
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Taxonomy
TopicsSpatial and Panel Data Analysis · Statistical Methods and Inference · Soil Geostatistics and Mapping
