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Activity Number: 55 - Complex Functional and Non-Euclidean Data Analysis
Type: Topic Contributed
Date/Time: Sunday, August 7, 2022 : 4:00 PM to 5:50 PM
Sponsor: Section on Nonparametric Statistics
Abstract #322095
Title: Functional Sufficient Dimension Reduction Through Average Fréchet Derivatives
Author(s): Kuang-Yao Lee* and Lexin Li
Companies: Temple University and University of California, Berkeley
Keywords: Functional central mean subspace; Functional central subspace; Function-on-function regression; Unbiasedness; Consistency; Reproducing kernel Hilbert space
Abstract:

In this work, we propose a new method for nonparametric function-on-function SDR, where both the response and the predictor are a function. We first develop the notions of functional central mean subspace and functional central subspace, which form the population targets of our functional SDR. We then introduce an average Fréchet derivative estimator, which extends the gradient of the regression function to the operator level and enables us to develop estimators for our functional dimension reduction spaces. We show the resulting functional SDR estimators are unbiased and exhaustive, and more importantly, without imposing any distributional assumptions such as the linearity or the constant variance conditions that are commonly imposed by all existing functional SDR methods. We establish the uniform convergence of the estimators for the functional dimension reduction spaces, while allowing both the number of Karhunen-Loève expansions and the intrinsic dimension to diverge with the sample size. We demonstrate the efficacy of the proposed methods through both simulations and real data examples. (This is joint work with Lexin Li (UC Berkeley)).


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