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Fully robust one-sided cross-validation for regression functions

Author

Listed:
  • Olga Y. Savchuk

    (University of South Florida)

  • Jeffrey D. Hart

    (Texas A&M University)

Abstract

Fully robust OSCV is a modification of the OSCV method that produces consistent bandwidths in the cases of smooth and nonsmooth regression functions. We propose the practical implementation of the method based on the robust cross-validation kernel $$H_I$$ H I in the case when the Gaussian kernel $$\phi $$ ϕ is used in computing the resulting regression estimate. The kernel $$H_I$$ H I produces practically unbiased bandwidths in the smooth and nonsmooth cases and performs adequately in the data examples. Negative tails of $$H_I$$ H I occasionally result in unacceptably wiggly OSCV curves in the neighborhood of zero. This problem can be resolved by selecting the bandwidth from the largest local minimum of the curve. Further search for the robust kernels with desired properties brought us to consider the quartic kernel for the cross-validation purposes. The quartic kernel is almost robust in the sense that in the nonsmooth case it substantially reduces the asymptotic relative bandwidth bias compared to $$\phi $$ ϕ . However, the quartic kernel is found to produce more variable bandwidths compared to $$\phi $$ ϕ . Nevertheless, the quartic kernel has an advantage of producing smoother OSCV curves compared to $$H_I$$ H I . A simplified scale-free version of the OSCV method based on a rescaled one-sided kernel is proposed.

Suggested Citation

  • Olga Y. Savchuk & Jeffrey D. Hart, 2017. "Fully robust one-sided cross-validation for regression functions," Computational Statistics, Springer, vol. 32(3), pages 1003-1025, September.
  • Handle: RePEc:spr:compst:v:32:y:2017:i:3:d:10.1007_s00180-017-0713-7
    DOI: 10.1007/s00180-017-0713-7
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    References listed on IDEAS

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    1. Max Köhler & Anja Schindler & Stefan Sperlich, 2014. "A Review and Comparison of Bandwidth Selection Methods for Kernel Regression," International Statistical Review, International Statistical Institute, vol. 82(2), pages 243-274, August.
    2. Mammen, Enno & Martínez Miranda, María Dolores & Nielsen, Jens Perch & Sperlich, Stefan, 2011. "Do-Validation for Kernel Density Estimation," Journal of the American Statistical Association, American Statistical Association, vol. 106(494), pages 651-660.
    3. Savchuk, Olga Y. & Hart, Jeffrey D. & Sheather, Simon J., 2010. "Indirect Cross-Validation for Density Estimation," Journal of the American Statistical Association, American Statistical Association, vol. 105(489), pages 415-423.
    4. Hart, Jeffrey D. & Lee, Cherng-Luen, 2005. "Robustness of one-sided cross-validation to autocorrelation," Journal of Multivariate Analysis, Elsevier, vol. 92(1), pages 77-96, January.
    5. Olga Y. Savchuk & Jeffrey D. Hart & Simon P. Sheather, 2013. "One-sided cross-validation for nonsmooth regression functions," Journal of Nonparametric Statistics, Taylor & Francis Journals, vol. 25(4), pages 889-904, December.
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    Cited by:

    1. Olga Y. Savchuk, 2020. "One-sided cross-validation for nonsmooth density functions," Computational Statistics, Springer, vol. 35(3), pages 1253-1272, September.

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