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STATISTICAL INFERENCE BASED ON ROBUST LOW-RANK DATA MATRIX APPROXIMATION

机译:基于鲁棒低秩数据矩阵逼近的统计推断

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The singular value decomposition is widely used to approximate data matrices with lower rank matrices. Feng and He [Ann. Appl. Stat. 3 (2009) 1634-1654] developed tests on dimensionality of the mean structure of a data matrix based on the singular value decomposition. However, the first singular values and vectors can be driven by a small number of outlying measurements. In this paper, we consider a robust alternative that moderates the effect of outliers in low-rank approximations. Under the assumption of random row effects, we provide the asymptotic representations of the robust low-rank approximation. These representations may be used in testing the adequacy of a low-rank approximation. We use oligonucleotide gene microarray data to demonstrate how robust singular value decomposition compares with the its traditional counterparts. Examples show that the robust methods often lead to a more meaningful assessment of the dimensionality of gene intensity data matrices.
机译:奇异值分解被广泛用于近似具有较低秩矩阵的数据矩阵。冯和何[Ann。应用统计3(2009)1634-1654]开发了基于奇异值分解的数据矩阵平均结构维数测试。但是,第一奇异值和矢量可以通过少量的外围测量值来驱动。在本文中,我们考虑了一种鲁棒的替代方案,该替代方案可以缓解低秩近似中离群值的影响。在随机行效应的假设下,我们提供了鲁棒低秩逼近的渐近表示。这些表示可以用于测试低秩近似的适当性。我们使用寡核苷酸基因微阵列数据来证明鲁棒的奇异值分解与其传统对等物相比。实例表明,健壮的方法通常可以更有意义地评估基因强度数据矩阵的维数。

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