Optimal Adaptive Inference in Random Design Binary Regression
Abstract
We construct confidence sets for the regression function in nonparametric binary regression with an unknown design density. These confidence sets are adaptive in L2 loss over a continuous class of Sobolev type spaces. Adaptation holds in the smoothness of the regression function, over the maximal parameter spaces where adaptation is possible, provided the design density is smooth enough. We identify two key regimes --- one where adaptation is possible, and one where some critical regions must be removed. We address related questions about goodness of fit testing and adaptive estimation of relevant parameters.
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