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Assessing the pattern of covariance matrices via an augmentation multiple testing procedure

机译:通过扩充多重测试程序评估协方差矩阵的模式

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This paper extends the scedasticity comparison among several groups of observations, usually complying with the homoscedastic and the heteroscedastic cases, in order to deal with data sets laying in an intermediate situation. As is well known, homoscedasticity corresponds to equality in orientation, shape and size of the group scatters. Here our attention is focused on two weaker requirements: scatters with the same orientation, but with different shape and size, or scatters with the same shape and size but different orientation. We introduce a multiple testing procedure that takes into account each of the above conditions. This approach discloses a richer information on the data underlying structure than the classical method only based on homo/heteroscedasticity. At the same time, it allows a more parsimonious parame-trization, whenever the patterned model is appropriate to describe the real data. The new inferential methodology is then applied to some well-known data sets, chosen in the multivariate literature, to show the real gain in using this more informative approach. Finally, a wide simulation study illustrates and compares the performance of the proposal using data sets with gradual departure from homoscedasticity.
机译:本文将通常在同调和异调情况下的几组观测值之间的平稳性比较扩展,以处理处于中间情况的数据集。众所周知,均方差性对应于组散布的方向,形状和大小相等。在这里,我们的注意力集中在两个较弱的需求上:具有相同方向但形状和大小不同的散射,或具有相同形状和大小但方向不同的散射。我们引入了考虑到上述每个条件的多重测试程序。与仅基于同质/异方差性的经典方法相比,此方法公开了有关数据底层结构的更丰富的信息。同时,只要模式化模型适合描述真实数据,它就可以进行更简约的参数化。然后,将新的推论方法应用于在多元文献中选择的一些众所周知的数据集,以显示使用这种信息量更大的方法的实际收益。最后,广泛的模拟研究说明并比较了使用数据集的提议的效果,并逐渐偏离了均方差。

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