Dimension Reduction for Fr\'echet Regression
Qi Zhang, Lingzhou Xue, and Bing Li

TL;DR
This paper introduces a flexible dimension reduction method for Fréchet regression that handles non-Euclidean responses, enabling better visualization and analysis of complex metric space-valued data.
Contribution
It extends existing SDR techniques to metric space-valued responses using a kernel-based approach, providing consistency and practical tools for complex data analysis.
Findings
Method performs well in simulations across various metric spaces.
Enables visualization of high-dimensional metric data.
Proven to be consistent with established asymptotic rates.
Abstract
With the rapid development of data collection techniques, complex data objects that are not in the Euclidean space are frequently encountered in new statistical applications. Fr\'echet regression model (Peterson & M\"uller 2019) provides a promising framework for regression analysis with metric space-valued responses. In this paper, we introduce a flexible sufficient dimension reduction (SDR) method for Fr\'echet regression to achieve two purposes: to mitigate the curse of dimensionality caused by high-dimensional predictors and to provide a visual inspection tool for Fr\'echet regression. Our approach is flexible enough to turn any existing SDR method for Euclidean (X,Y) into one for Euclidean X and metric space-valued Y. The basic idea is to first map the metric-space valued random object to a real-valued random variable using a class of functions, and then perform…
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Taxonomy
TopicsStatistical Methods and Inference · Face and Expression Recognition
