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Wavelet-based estimators for mixture regression

机译:基于小波的混合回归估计器

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We consider a process that is observed as a mixture of two random distributions, where the mixing probability is an unknown function of time. The setup is built upon a wavelet-based mixture regression. Two linear wavelet estimators are proposed. Furthermore, we consider three regularizing procedures for each of the two wavelet methods. We also discuss regularity conditions under which the consistency of the wavelet methods is attained and derive rates of convergence for the proposed estimators. A Monte Carlo simulation study is conducted to illustrate the performance of the estimators. Various scenarios for the mixing probability function are used in the simulations, in addition to a range of sample sizes and resolution levels. We apply the proposed methods to a data set consisting of array Comparative Genomic Hybridization from glioblastoma cancer studies.
机译:我们考虑观察到的过程是两个随机分布的混合,其中混合概率是时间的未知函数。该设置基于基于小波的混合回归。提出了两种线性小波估计器。此外,我们针对两种小波方法分别考虑三种正则化程序。我们还讨论了规则性条件,在该条件下可以获得小波方法的一致性,并为所提出的估计量导出收敛速度。进行了蒙特卡洛模拟研究,以说明估计器的性能。除了一系列样本大小和分辨率级别之外,模拟中还使用了各种混合概率函数方案。我们将提出的方法应用于由胶质母细胞瘤癌症研究组成的阵列比较基因组杂交数据集。

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