Optimal Confidence Bands for Shape-restricted Regression in Multidimensions

In this paper, we propose and study construction of confidence bands for shape-constrained regression functions when the predictor is multivariate. In particular, we consider the continuous multidimensional white noise model given by , where is the observed stochastic process on (), is the standard Brownian sheet on , and is the unknown function of interest assumed to belong to a (shape-constrained) function class, e.g., coordinate-wise monotone functions or convex functions. The constructed confidence bands are based on local kernel averaging with bandwidth chosen automatically via a multivariate multiscale statistic. The confidence bands have guaranteed coverage for every and for every member of the underlying function class. Under monotonicity/convexity constraints on , the proposed confidence bands automatically adapt (in terms of width) to the global and local (H\"{o}lder) smoothness and intrinsic dimensionality of the unknown ; the bands are also shown to be optimal in a certain sense. These bands have (almost) parametric () widths when the underlying function has ``low-complexity'' (e.g., piecewise constant/affine).
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