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SELF-NORMALIZED CRAMER-TYPE MODERATE DEVIATIONS UNDER DEPENDENCE

机译:依赖情况下的自规范Cramer型中度偏差

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摘要

We establish a Cramer-type moderate deviation result for self-normalized sums of weakly dependent random variables, where the moment requirement is much weaker than the non-self-normalized counterpart. The range of the moderate deviation is shown to depend on the moment condition and the degree of dependence of the underlying processes. We consider three types of self-normalization: the equal-block scheme, the big-block-small-block scheme and the interlacing scheme. Simulation study shows that the latter can have a better finite-sample performance. Our result is applied to multiple testing and construction of simultaneous confidence intervals for ultra-high dimensional time series mean vectors.
机译:我们为弱相关随机变量的自归一化总和建立了Cramer型适度偏差结果,其中矩需求比非自归一化对应项弱得多。适度偏差的范围显示为取决于弯矩条件和基础过程的依存度。我们考虑三种自归一化类型:等块方案,大块小块方案和隔行方案。仿真研究表明,后者可以具有更好的有限样本性能。我们的结果应用于超高维时间序列均值向量的多重测试和同时置信区间的构建。

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