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Large multi-response linear regression estimation based on low-rank pre-smoothing

Large multi-response linear regression estimation based on low-rank pre-smoothing

来源:Arxiv_logoArxiv
英文摘要

Pre-smoothing is a technique aimed at increasing the signal-to-noise ratio in data to improve subsequent estimation and model selection in regression problems. Motivated by the many scientific applications in which multi-response regression problems arise, particularly when the number of responses is large, we propose here to extend pre-smoothing methods to the multiple outcomne setting. Specifically, we introduce and study a simple technique for pre-smoothing based on low-rank approximation. We establish theoretical results on the performance of the proposed methodology, which show that in the large-response setting, the proposed technique outperforms ordinary least squares estimation with the mean squared error criterion, whilst being computationally more efficient than alternative approaches such as reduced rank regression. We quantify our estimator's benefit empirically in a number of simulated experiments. We also demonstrate our proposed low-rank pre-smoothing technique on real data arising from the environmental and biological sciences.

Xinle Tian、Sandipan Roy、Matthew Nunes、Alex Gibberd

数学环境生物学生物科学研究方法、生物科学研究技术

Xinle Tian,Sandipan Roy,Matthew Nunes,Alex Gibberd.Large multi-response linear regression estimation based on low-rank pre-smoothing[EB/OL].(2025-07-09)[2025-08-02].https://arxiv.org/abs/2411.18334.点此复制

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