Integrative Learning of Structured High-Dimensional Data from Multiple Datasets.

IF 2.1 4区 数学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Statistical Analysis and Data Mining Pub Date : 2023-04-01 Epub Date: 2022-11-08 DOI:10.1002/sam.11601
Changgee Chang, Zongyu Dai, Jihwan Oh, Qi Long
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Abstract

Integrative learning of multiple datasets has the potential to mitigate the challenge of small n and large p that is often encountered in analysis of big biomedical data such as genomics data. Detection of weak yet important signals can be enhanced by jointly selecting features for all datasets. However, the set of important features may not always be the same across all datasets. Although some existing integrative learning methods allow heterogeneous sparsity structure where a subset of datasets can have zero coefficients for some selected features, they tend to yield reduced efficiency, reinstating the problem of losing weak important signals. We propose a new integrative learning approach which can not only aggregate important signals well in homogeneous sparsity structure, but also substantially alleviate the problem of losing weak important signals in heterogeneous sparsity structure. Our approach exploits a priori known graphical structure of features and encourages joint selection of features that are connected in the graph. Integrating such prior information over multiple datasets enhances the power, while also accounting for the heterogeneity across datasets. Theoretical properties of the proposed method are investigated. We also demonstrate the limitations of existing approaches and the superiority of our method using a simulation study and analysis of gene expression data from ADNI.

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从多个数据集整合学习结构化高维数据
在分析基因组学数据等大型生物医学数据时,经常会遇到小 n 大 p 的难题。通过联合选择所有数据集的特征,可以增强对微弱但重要信号的检测。然而,重要特征集在所有数据集中可能并不总是相同的。虽然现有的一些整合学习方法允许异构稀疏结构,即数据集子集的某些选定特征的系数可以为零,但它们往往会降低效率,再次出现丢失微弱重要信号的问题。我们提出了一种新的整合学习方法,它不仅能在同质稀疏性结构中很好地聚合重要信号,还能大大缓解在异质稀疏性结构中丢失弱重要信号的问题。我们的方法利用先验已知的特征图结构,鼓励联合选择图中有关联的特征。将这些先验信息整合到多个数据集中,既能增强功能,又能考虑到数据集之间的异质性。我们研究了拟议方法的理论特性。我们还通过模拟研究和对 ADNI 基因表达数据的分析,证明了现有方法的局限性和我们方法的优越性。
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来源期刊
Statistical Analysis and Data Mining
Statistical Analysis and Data Mining COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCEC-COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
CiteScore
3.20
自引率
7.70%
发文量
43
期刊介绍: Statistical Analysis and Data Mining addresses the broad area of data analysis, including statistical approaches, machine learning, data mining, and applications. Topics include statistical and computational approaches for analyzing massive and complex datasets, novel statistical and/or machine learning methods and theory, and state-of-the-art applications with high impact. Of special interest are articles that describe innovative analytical techniques, and discuss their application to real problems, in such a way that they are accessible and beneficial to domain experts across science, engineering, and commerce. The focus of the journal is on papers which satisfy one or more of the following criteria: Solve data analysis problems associated with massive, complex datasets Develop innovative statistical approaches, machine learning algorithms, or methods integrating ideas across disciplines, e.g., statistics, computer science, electrical engineering, operation research. Formulate and solve high-impact real-world problems which challenge existing paradigms via new statistical and/or computational models Provide survey to prominent research topics.
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