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Main Authors: Xu, Fuzhi, Liang, Weijuan, Ma, Shuangge, Zhang, Qingzhao
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.15070
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author Xu, Fuzhi
Liang, Weijuan
Ma, Shuangge
Zhang, Qingzhao
author_facet Xu, Fuzhi
Liang, Weijuan
Ma, Shuangge
Zhang, Qingzhao
contents Incorporation of external information into high-dimensional modeling for gene expression data has been shown, both theoretically and empirically, to substantially enhance performance. Such external information, sometimes referred to as prior information or priors, has become increasingly accessible from multiple sources, yet its reliability may vary considerably. Existing approaches often integrate these priors without sufficiently accounting for their quality, which may result in unsatisfactory or even misleading results. To effectively and selectively exploit such priors, we propose adaptive Multi-Prior Lasso, a novel regularization approach that simultaneously identifies reliable prior sources and integrates them to improve model performance. For high-dimensional generalized linear models (GLMs), an adaptive data-driven weight is assigned to each prior, so that more reliable sources are emphasized while less credible ones are downweighted. Theoretical guarantees are established, and the proposed method is shown through extensive simulations to improve estimation, prediction, and variable selection. An application to TCGA breast cancer gene expression data further illustrates the practical value of the proposed method, showing that incorporating prior information from PubMed published studies improves model performance.
format Preprint
id arxiv_https___arxiv_org_abs_2604_15070
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Adaptive Multi-Prior Lasso for High-Dimensional Generalized Linear Models
Xu, Fuzhi
Liang, Weijuan
Ma, Shuangge
Zhang, Qingzhao
Methodology
G.3
Incorporation of external information into high-dimensional modeling for gene expression data has been shown, both theoretically and empirically, to substantially enhance performance. Such external information, sometimes referred to as prior information or priors, has become increasingly accessible from multiple sources, yet its reliability may vary considerably. Existing approaches often integrate these priors without sufficiently accounting for their quality, which may result in unsatisfactory or even misleading results. To effectively and selectively exploit such priors, we propose adaptive Multi-Prior Lasso, a novel regularization approach that simultaneously identifies reliable prior sources and integrates them to improve model performance. For high-dimensional generalized linear models (GLMs), an adaptive data-driven weight is assigned to each prior, so that more reliable sources are emphasized while less credible ones are downweighted. Theoretical guarantees are established, and the proposed method is shown through extensive simulations to improve estimation, prediction, and variable selection. An application to TCGA breast cancer gene expression data further illustrates the practical value of the proposed method, showing that incorporating prior information from PubMed published studies improves model performance.
title Adaptive Multi-Prior Lasso for High-Dimensional Generalized Linear Models
topic Methodology
G.3
url https://arxiv.org/abs/2604.15070