Article ID Journal Published Year Pages File Type
7547286 Journal of Statistical Planning and Inference 2018 27 Pages PDF
Abstract
We study a nonparametric regression model for sample data which is defined on an N-dimensional lattice structure and which is assumed to be strong spatial mixing: we use design adapted multidimensional Haar wavelets which form an orthonormal system w.r.t. the empirical measure of the sample data. For such orthonormal systems, we consider a nonparametric hard thresholding estimator. We give sufficient criteria for the consistency of this estimator and we derive rates of convergence. The theorems reveal that our estimator is able to adapt to the local smoothness of the underlying regression function and the design distribution. We illustrate our results with simulated examples.
Related Topics
Physical Sciences and Engineering Mathematics Applied Mathematics
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