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Structural learning and integrative decomposition of multi‐view data

机译:多视图数据的结构学习和集成分解

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Abstract The increased availability of multi‐view data (data on the same samples from multiple sources) has led to strong interest in models based on low‐rank matrix factorizations. These models represent each data view via shared and individual components, and have been successfully applied for exploratory dimension reduction, association analysis between the views, and consensus clustering. Despite these advances, there remain challenges in modeling partially‐shared components and identifying the number of components of each type (shared/partially‐shared/individual). We formulate a novel linked component model that directly incorporates partially‐shared structures. We call this model SLIDE for Structural Learning and Integrative DEcomposition of multi‐view data. The proposed model‐fitting and selection techniques allow for joint identification of the number of components of each type, in contrast to existing sequential approaches. In our empirical studies, SLIDE demonstrates excellent performance in both signal estimation and component selection. We further illustrate the methodology on the breast cancer data from The Cancer Genome Atlas repository.
机译:摘要多视图数据的可用性增加(来自多个来源的相同样本的数据)导致基于低秩矩阵分解的模型的强烈兴趣。这些模型代表每个数据视图通过共享和各个组件,并已成功应用于探索性尺寸减少,视图之间的关联分析和共识群集。尽管有这些进步,但在建模部分共享组件并识别每种类型的组件数量(共享/部分共享/个人),仍存在挑战。我们制定了一种新颖的链接组件模型,可直接包含部分共享结构。我们称该模型滑动用于结构学习和多视图数据的集成分解。与现有的连续方法相比,所提出的模型拟合和选择技术允许联合识别每种类型的组分数。在我们的实证研究中,SLIDE在信号估计和组件选择中显示出优异的性能。我们进一步阐述了来自癌症基因组Atlas储存库的乳腺癌数据的方法。

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