Sliced Inverse Regression in Metric Spaces

06/23/2022
by   Joni Virta, et al.
0

In this article, we propose a general nonlinear sufficient dimension reduction (SDR) framework when both the predictor and response lie in some general metric spaces. We construct reproducing kernel Hilbert spaces whose kernels are fully determined by the distance functions of the metric spaces, then leverage the inherent structures of these spaces to define a nonlinear SDR framework. We adapt the classical sliced inverse regression of <cit.> within this framework for the metric space data. We build the estimator based on the corresponding linear operators, and show it recovers the regression information unbiasedly. We derive the estimator at both the operator level and under a coordinate system, and also establish its convergence rate. We illustrate the proposed method with both synthetic and real datasets exhibiting non-Euclidean geometry.

READ FULL TEXT
research
07/01/2020

Fréchet Sufficient Dimension Reduction for Random Objects

We in this paper consider Fréchet sufficient dimension reduction with re...
research
04/21/2019

Total Variation Regularized Fréchet Regression for Metric-Space Valued Data

Non-Euclidean data that are indexed with a scalar predictor such as time...
research
10/28/2020

Bridging linearity-based and kernel-based sufficient dimension reduction

There has been a lot of interest in sufficient dimension reduction (SDR)...
research
09/05/2019

A new reproducing kernel based nonlinear dimension reduction method for survival data

Based on the theories of sliced inverse regression (SIR) and reproducing...
research
07/24/2023

Functional Slicing-free Inverse Regression via Martingale Difference Divergence Operator

Functional sliced inverse regression (FSIR) is one of the most popular a...
research
11/16/2022

Learning linear operators: Infinite-dimensional regression as a well-behaved non-compact inverse problem

We consider the problem of learning a linear operator θ between two Hilb...
research
04/07/2023

Representer Theorems for Metric and Preference Learning: A Geometric Perspective

We explore the metric and preference learning problem in Hilbert spaces....

Please sign up or login with your details

Forgot password? Click here to reset