Functional linear and single-index models: A unified approach via Gaussian Stein identity
Krishnakumar Balasubramanian, Hans-Georg M\"uller, Bharath K., Sriperumbudur

TL;DR
This paper introduces a unified Gaussian Stein identity-based framework for estimating indices in functional linear and single-index models, accommodating index misspecification and removing restrictive assumptions.
Contribution
It provides a novel, unified approach for estimating indices in functional models using Gaussian Stein's identity, applicable to both linear and single-index models without requiring link function specification.
Findings
Convergence rates characterized for both models
Method does not require covariance operator commutativity
Allows for index misspecification and quantification
Abstract
Functional linear and single-index models are core regression methods in functional data analysis and are widely used for performing regression in a wide range of applications when the covariates are random functions coupled with scalar responses. In the existing literature, however, the construction of associated estimators and the study of their theoretical properties is invariably carried out on a case-by-case basis for specific models under consideration. In this work, assuming the predictors are Gaussian processes, we provide a unified methodological and theoretical framework for estimating the index in functional linear, and its direction in single-index models. In the latter case, the proposed approach does not require the specification of the link function. In terms of methodology, we show that the reproducing kernel Hilbert space (RKHS) based functional linear least-squares…
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Taxonomy
TopicsRandom Matrices and Applications · Statistical Methods and Bayesian Inference · Statistical Methods and Inference
