Low-Rank Regularization of Global Fr\'{e}chet Regression Models for Distributional Responses
Low-Rank Regularization of Global Fr\'{e}chet Regression Models for Distributional Responses
Fr\'echet regression has emerged as a useful tool for modeling non-Euclidean response variables associated with Euclidean covariates. In this work, we propose a global Fr\'echet regression estimation method that incorporates low-rank regularization. Focusing on distribution function responses, we demonstrate that leveraging the low-rank structure of the model parameters enhances both the efficiency and accuracy of model fitting. Through theoretical analysis of the large-sample properties, we show that the proposed method enables more robust modeling and estimation than standard dimension reduction techniques. To support our findings, we also present numerical experiments that evaluate the finite-sample performance.
Kyunghee Han、Hsin-Hsiung Huang
数学
Kyunghee Han,Hsin-Hsiung Huang.Low-Rank Regularization of Global Fr\'{e}chet Regression Models for Distributional Responses[EB/OL].(2025-05-07)[2025-06-06].https://arxiv.org/abs/2505.04926.点此复制
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