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首页> 外文期刊>Biometrika >Replicates in high dimensions, with applications to latent variable graphical models
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Replicates in high dimensions, with applications to latent variable graphical models

机译:高维度复制,并应用于潜在的可变图形模型

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摘要

In classical statistics, much thought has been put into experimental design and data collection. In the high-dimensional setting, however, experimental design has been less of a focus. In this paper, we stress the importance of collecting multiple replicates for each subject in the high-dimensional setting. We consider learning the structure of a graphical model with latent variables, under the assumption that these variables take a constant value across replicates within each subject. By collecting multiple replicates for each subject, we can estimate the conditional dependence relationships among the observed variables given the latent variables. To test the hypothesis of conditional independence between two observed variables, we propose a pairwise decorrelated score test. Theoretical guarantees are established for parameter estimation and for this test. We show that our method is able to estimate latent variable graphical models more accurately than some existing methods, and we apply it to a brain imaging dataset.
机译:在古典统计学中,人们对实验设计和数据收集投入了很多思考。但是,在高维环境中,实验设计已成为重点。在本文中,我们强调在高维环境中为每个主题收集多个重复的重要性。我们假设在每个主题的重复样本中这些变量取恒定值的前提下,考虑学习具有潜在变量的图形模型的结构。通过为每个主题收集多个重复项,我们可以在给定潜在变量的情况下估计观察变量之间的条件依赖关系。为了检验两个观察到的变量之间的条件独立性的假设,我们提出了成对的去相关得分检验。为参数估计和该测试建立了理论保证。我们证明了我们的方法比某些现有方法能够更准确地估计潜在变量图形模型,并将其应用于脑成像数据集。

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