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학술논문Journal of the Korean Statistical Society2012.06 발행

Wavelet based estimation for the derivative of a density by block thresholding under random censorship

Wavelet based estimation for the derivative of a density by block thresholding under random censorship

Esmaeil Shirazi(Ferdowsi University); Yogendra P. Chaubey(Concordia University); Hassan Doosti(Tarbiat Moallem University); Hossein Ali Nirumand(Ferdowsi University)

41권 2호, 199~211쪽

초록

We consider wavelet based method for estimating derivatives of a density via block thresholding when the data obtained are randomly right censored. The proposed method is analogous to that of Hall and Patil (1995) for density estimation in the complete data case that has been extended recently by Li (2003, 2008). We find bounds for the L2-loss over a large range of Besov function classes for the resulting estimators. The results of Hall and Patil (1995), Prakasa Rao (1996) and Li (2003, 2008) are obtained as special cases and the performance of the proposed estimator is investigated by a numerical study.

Abstract

We consider wavelet based method for estimating derivatives of a density via block thresholding when the data obtained are randomly right censored. The proposed method is analogous to that of Hall and Patil (1995) for density estimation in the complete data case that has been extended recently by Li (2003, 2008). We find bounds for the L2-loss over a large range of Besov function classes for the resulting estimators. The results of Hall and Patil (1995), Prakasa Rao (1996) and Li (2003, 2008) are obtained as special cases and the performance of the proposed estimator is investigated by a numerical study.

발행기관:
한국통계학회
DOI:
http://dx.doi.org/
분류:
통계학

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Wavelet based estimation for the derivative of a density by block thresholding under random censorship | Journal of the Korean Statistical Society 2012 | AskLaw | 애스크로 AI