Theoretical Properties and Practical Performance of Fully Robust One-Sided Cross-Validation
Abstract
Fully robust OSCV is a modification of the OSCV method that produces consistent bandwidth in the cases of smooth and nonsmooth regression functions. The current implementation of the method uses the kernel HI that is almost indistinguishable from the Gaussian kernel on the interval [-4,4], but has negative tails. The theoretical properties and practical performances of the HI- and φ-based OSCV versions are compared. The kernel HI tends to produce too low bandwidths in the smooth case. The HI-based OSCV curves are shown to have wiggles appearing in the neighborhood of zero. The kernel HI uncovers sensitivity of the OSCV method to a tiny modification of the kernel used for the cross-validation purposes. The recently found robust bimodal kernels tend to produce OSCV curves with multiple local minima. The problem of finding a robust unimodal nonnegative kernel remains open.
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