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A LOW RANK-BASED ESTIMATION-TESTING PROCEDURE FOR MATRIX-COVARIATE REGRESSION

机译:基于矩阵的估计测试程序,用于矩阵 - 协变量回归

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摘要

Matrix-covariate is now frequently encountered in many biomedical researches. It is common to fit conventional statistical models by vectorizing matrix-covariate. This strategy results in a large number of parameters, while the available sample size is relatively too small to have reliable analysis results. To overcome the problem of high-dimensionality in hypothesis testing, a variance-component test has been proposed with superior detection power, but it is not straightforward to provide estimates of effect size. In this work, we overcome the problem of high-dimensionality by utilizing the inherent structure of the matrix-covariate. One advantage of our method is that estimation and hypothesis testing can be conducted simultaneously, as in the conventional case, while the estimation efficiency and detection power can be largely improved. Another merit is that, unlike existing methods, the proposed method avoids the problem of choosing identifiability constraints for the model parameters. Our method is applied to test the significance of gene-gene interactions in the PSQI data, and to test the association between electroencephalography and the alcoholic status in the EEG data.
机译:在许多生物医学研究中,现在经常遇到Matrix-Covariate。通过矢量化矩阵 - 协变量来符合常规统计模型。该策略导致大量参数,而可用的样本大小相对太小以具有可靠的分析结果。为了克服假设检测中的高维品的问题,已经提出了具有卓越的检测功率的方差 - 组件测试,但提供了效果大小的估计并不简单。在这项工作中,我们通过利用矩阵 - 协变量的固有结构来克服高维的问题。我们的方法的一个优点是,可以同时进行估计和假设测试,如在传统情况下,虽然可以在很大程度上提高估计效率和检测功率。另一个优点是,与现有方法不同,所提出的方法避免了为模型参数选择可识别性约束的问题。我们的方法用于测试基因 - 基因相互作用在PSQI数据中的重要性,并在EEG数据中测试脑电图与含酒精状态之间的关联。

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