Many real-life applications involve estimation of curves that exhibit complicated shapes including jumps or varying-frequency oscillations. Practical methods have been devised that can adapt to a locally varying complexity of an unknown function (e.g. variable-knot splines, sparse wavelet reconstructions, kernel methods or trees/forests). However, the overwhelming majority of existing asymptotic minimaxity theory is predicated on homogeneous smoothness assumptions. Focusing on locally Holderian functions, we provide new locally adaptive posterior concentration rate results under the supremum loss for widely used Bayesian machine learning techniques in white noise and non-parametric regression. In particular, we show that popular spike-and-slab priors and Bayesian CART are uniformly locally adaptive. In addition, we propose a new class of repulsive partitioning priors which relate to variable knot splines and which are exact-rate adaptive. For uncertainty quantification, we construct locally adaptive confidence bands whose width depends on the local smoothness and which achieve uniform asymptotic coverage under local self-similarity. To illustrate that spatial adaptation is not at all automatic, we provide lower-bound results showing that popular hierarchical Gaussian process priors fall short of spatial adaptation.
翻译:许多实际应用都涉及到对呈现复杂形状的曲线进行估计,包括跳动或不同频度振荡。已经设计了实用方法,能够适应一个未知功能(例如,变式-斜纹样、稀散的波状重建、内核方法或树木/森林)的当地复杂复杂复杂情况(例如,变式-斜纹样、稀疏的波子重建、树/森林),然而,现有绝大多数无症状微缩缩微轴理论都以同质平滑假设为基础。侧重于当地控点功能,我们为白噪和非对称回归中广泛使用的巴伊西亚机械学习技术在超光亮度损失下提供了新的当地适应性后后视集浓度率结果。我们特别展示了流行的峰值和悬浮前置和巴耶西亚CART是统一的当地适应性。此外,我们提出了一个新的令人厌恶的偏移偏移偏移前置前置理论,该理论与变量结晶线和精确的适应性假设有关。关于不确定性的量化,我们构建当地适应性信任波段的宽度取决于当地的平滑度,并且在当地自近度下取得统一的湿度覆盖。为了显示之前的地面的地面的高度调整结果。