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Main Authors: Ouyang, Shuge, Tang, Yunxuan, Agyare, Benjamin Osafo
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.04765
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author Ouyang, Shuge
Tang, Yunxuan
Agyare, Benjamin Osafo
author_facet Ouyang, Shuge
Tang, Yunxuan
Agyare, Benjamin Osafo
contents Low-rank matrix factorization is a powerful tool for understanding the structure of 2-way data, and is usually accomplished by minimizing a sum of squares criterion. Expectile analysis generalizes squared-error loss by introducing asymmetry, allowing tail behavior to be elicited. Here we present a framework for low-rank expectile analysis of a data matrix that incorporates both additive and multiplicative effects, utilizing expectile loss, and accommodating arbitrary patterns of missing data. The representation can be fit with gradient-descent. Simulation studies demonstrate the accuracy of the structure recovery. Using diurnal heart rate data indexed by person-days versus minutes within a day, we find divergent behavior for lower versus upper expectiles, with the lower expectiles being much more stable within subjects across days, while the upper expectiles are much more variable, even within subjects.
format Preprint
id arxiv_https___arxiv_org_abs_2412_04765
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Low-Rank Expectile Representations of a Data Matrix, with Application to Diurnal Heart Rates
Ouyang, Shuge
Tang, Yunxuan
Agyare, Benjamin Osafo
Applications
Low-rank matrix factorization is a powerful tool for understanding the structure of 2-way data, and is usually accomplished by minimizing a sum of squares criterion. Expectile analysis generalizes squared-error loss by introducing asymmetry, allowing tail behavior to be elicited. Here we present a framework for low-rank expectile analysis of a data matrix that incorporates both additive and multiplicative effects, utilizing expectile loss, and accommodating arbitrary patterns of missing data. The representation can be fit with gradient-descent. Simulation studies demonstrate the accuracy of the structure recovery. Using diurnal heart rate data indexed by person-days versus minutes within a day, we find divergent behavior for lower versus upper expectiles, with the lower expectiles being much more stable within subjects across days, while the upper expectiles are much more variable, even within subjects.
title Low-Rank Expectile Representations of a Data Matrix, with Application to Diurnal Heart Rates
topic Applications
url https://arxiv.org/abs/2412.04765