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Strong convergence of multivariate maxima

机译:多变量最大值的强烈收敛性

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It is well known and readily seen that the maximum of n independent and uniformly on [0, 1] distributed random variables, suitably standardised, converges in total variation distance, as n increases, to the standard negative exponential distribution. We extend this result to higher dimensions by considering copulas. We show that the strong convergence result holds for copulas that are in a differential neighbourhood of a multivariate generalised Pareto copula. Sklar's theorem then implies convergence in variational distance of the maximum of n independent and identically distributed random vectors with arbitrary common distribution function and (under conditions on the marginals) of its appropriately normalised version. We illustrate how these convergence results can be exploited to establish the almost-sure consistency of some estimation procedures for max-stable models, using sample maxima.
机译:众所周知,很容易看出,N独立和均匀的最大值在[0,1]分布式随机变量,适当标准化,在总变化距离中收敛于标准负指数分布。 通过考虑Copulas,我们将此结果扩展到更高的维度。 我们表明,在多变量广义帕累托族谱中的差分邻域中的Copulas的强烈收敛结果存在强烈的收敛结果。 然后,Sklar的定理将在其适当归一化版本的任意公共分布函数的最大和相同分布的随机向量的变分距离中的变化距离的变化距离。 我们说明了如何利用这些收敛结果来建立一些使用样本Maxima的MAX稳定模型的几乎肯定的一致性。

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