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Bibliographic Details
Main Author: Shu, Hai
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.00730
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author Shu, Hai
author_facet Shu, Hai
contents A typical approach to the joint analysis of multiple high-dimensional data views is to decompose each view's data matrix into three parts: a low-rank common-source matrix generated by common latent factors of all data views, a low-rank distinctive-source matrix generated by distinctive latent factors of the corresponding data view, and an additive noise matrix. Existing decomposition methods often focus on the uncorrelatedness between the common latent factors and distinctive latent factors, but inadequately address the equally necessary uncorrelatedness between distinctive latent factors from different data views. We propose a novel decomposition method, called Decomposition of Common and Distinctive Latent Factors (D-CDLF), to effectively achieve both types of uncorrelatedness for two-view data. We also discuss the estimation of the D-CDLF under high-dimensional settings.
format Preprint
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publishDate 2024
record_format arxiv
spellingShingle D-CDLF: Decomposition of Common and Distinctive Latent Factors for Multi-view High-dimensional Data
Shu, Hai
Machine Learning
A typical approach to the joint analysis of multiple high-dimensional data views is to decompose each view's data matrix into three parts: a low-rank common-source matrix generated by common latent factors of all data views, a low-rank distinctive-source matrix generated by distinctive latent factors of the corresponding data view, and an additive noise matrix. Existing decomposition methods often focus on the uncorrelatedness between the common latent factors and distinctive latent factors, but inadequately address the equally necessary uncorrelatedness between distinctive latent factors from different data views. We propose a novel decomposition method, called Decomposition of Common and Distinctive Latent Factors (D-CDLF), to effectively achieve both types of uncorrelatedness for two-view data. We also discuss the estimation of the D-CDLF under high-dimensional settings.
title D-CDLF: Decomposition of Common and Distinctive Latent Factors for Multi-view High-dimensional Data
topic Machine Learning
url https://arxiv.org/abs/2407.00730