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Structured Matrix Completion with Applications to Genomic Data Integration

机译:结构化矩阵完成及其在基因组数据集成中的应用

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摘要

Matrix completion has attracted significant recent attention in many fields including statistics, applied mathematics and electrical engineering. Current literature on matrix completion focuses primarily on independent sampling models under which the individual observed entries are sampled independently. Motivated by applications in genomic data integration, we propose a new framework of structured matrix completion (SMC) to treat structured missingness by design. Specifically, our proposed method aims at efficient matrix recovery when a subset of the rows and columns of an approximately low-rank matrix are observed. We provide theoretical justification for the proposed SMC method and derive lower bound for the estimation errors, which together establish the optimal rate of recovery over certain classes of approximately low-rank matrices. Simulation studies show that the method performs well in finite sample under a variety of configurations. The method is applied to integrate several ovarian cancer genomic studies with different extent of genomic measurements, which enables us to construct more accurate prediction rules for ovarian cancer survival.
机译:矩阵完成最近在许多领域引起了极大的关注,包括统计,应用数学和电气工程。当前有关矩阵完成度的文献主要集中在独立的采样模型上,在该模型下,对观察到的各个条目进行独立采样。受基因组数据集成中应用程序的推动,我们提出了一种结构化矩阵完成(SMC)的新框架,以通过设计处理结构化缺失。具体而言,当观察到近似低秩矩阵的行和列的子集时,我们提出的方法旨在有效地恢复矩阵。我们为所提出的SMC方法提供了理论依据,并推导出了估计误差的下限,它们共同为某些类别的近似低秩矩阵建立了最佳的恢复率。仿真研究表明,该方法在多种配置下的有限样本中表现良好。该方法适用于整合具有不同程度的基因组测量结果的多个卵巢癌基因组研究,这使我们能够构建更准确的卵巢癌生存预测规则。

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