Smoothness: bias and effciency of nonparametric kernel estimators

Kotlyarova, Y., Schafgans, M. M. A.ORCID logo & Zinde-Walsh, V. (2016). Smoothness: bias and effciency of nonparametric kernel estimators. In Gonzalez-Rivera, G., Hill, C. R. & Lee, T. (Eds.), Essays in Honor of Aman Ullah . Emerald Group Publishing.
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For kernel-based estimators, smoothness conditions ensure that the asymptotic rate at which the bias goes to zero is determined by the kernel order. In a finite sample, the leading term in the expansion of the bias may provide a poor approximation. We explore the relation between smoothness and bias and provide estimators for the degree of the smoothness and the bias. We demonstrate the existence of a linear combination of estimators whose trace of the asymptotic mean squared error is reduced relative to the individual estimator at the optimal bandwidth. We examine the finite-sample performance of a combined estimator that minimizes the trace of the MSE of a linear combination of individual kernel estimators for a multimodal density. The combined estimator provides a robust alternative to individual estimators that protects against uncertainty about the degree of smoothness.

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