We consider inference for high-dimensional separately and jointly exchangeable arrays where the dimensions may be much larger than the sample sizes. For both exchangeable arrays, we first derive high-dimensional central limit theorems over the rectangles and subsequently develop novel multiplier bootstraps with theoretical guarantees. These theoretical results rely on new technical tools such as Hoeffding-type decomposition and maximal inequalities for the degenerate components in the Hoeffiding-type decomposition for the exchangeable arrays. We exhibit applications of our methods to uniform confidence bands for density estimation under joint exchangeability and penalty choice for $\ell_1$-penalized regression under separate exchangeability. Extensive simulations demonstrate precise uniform coverage rates. We illustrate by constructing uniform confidence bands for international trade network densities.
翻译:我们考虑对高维和共同交换的阵列分别进行推论,这些阵列的尺寸可能比样本大小大得多。对于两个可交换的阵列,我们首先在矩形上得出高维中央限制的定理,然后在理论保障下开发新的乘数靴。这些理论结果依靠新的技术工具,如Hoffding型分解和Hoffiding型变形部件在可交换阵列中的最大不平等。我们展示了在可交换的阵列中采用统一信任带的方法,在可交换性下对密度进行统一估计,在可交换性下对$\ell_1$美元受罚回归分别选择罚款。广泛的模拟显示了精确的统一覆盖率。我们通过为国际贸易网络密度构建统一的信任带来说明这一点。