Although much progress has been made in the theory and application of bootstrap approximations for max statistics in high dimensions, the literature has largely been restricted to cases involving light-tailed data. To address this issue, we propose an approach to inference based on robust max statistics, and we show that their distributions can be accurately approximated via bootstrapping when the data are both high-dimensional and heavy-tailed. In particular, the data are assumed to satisfy an extended version of the well-established $L^{4}$-$L^2$ moment equivalence condition, as well as a weak variance decay condition. In this setting, we show that near-parametric rates of bootstrap approximation can be achieved in the Kolmogorov metric, independently of the data dimension. Moreover, this theoretical result is complemented by encouraging empirical results involving both Euclidean and functional data.
翻译:尽管在高维情形下最大值统计量的自助法近似理论与应用已取得长足进展,但现有文献主要局限于涉及轻尾数据的情形。为解决这一问题,我们提出了一种基于稳健最大值统计量的推断方法,并证明当数据同时具有高维性和重尾性时,其分布可通过自助法获得精确近似。特别地,我们假设数据满足经典$L^{4}$-$L^2$矩等价条件的扩展形式,以及弱方差衰减条件。在此设定下,我们证明在Kolmogorov度量下可达到近乎参数化的自助法近似速率,且该速率与数据维度无关。此外,这一理论结果得到了涉及欧几里得数据与函数型数据的鼓舞性实证结果的支持。