Root-n convergent transformation-kernel density estimation

@inproceedings{Taylor1995RootnCT,
  title={Root-n convergent transformation-kernel density estimation},
  author={P. Taylor and Lijian Yang},
  year={1995}
}
This article may be used for research, teaching and private study purposes. Any substantial or systematic reproduction, redistribution , reselling , loan or sub-licensing, systematic supply or distribution in any form to anyone is expressly forbidden. The publisher does not give any warranty express or implied or make any representation that the contents will be complete or accurate or up to date. The accuracy of any instructions, formulae and drug doses should be independently verified with… CONTINUE READING

From This Paper

Topics from this paper.

References

Publications referenced by this paper.
Showing 1-10 of 16 references

Semiparametric Comparison of Regression Curves

W. H ardle, J. S. Marron
The Annals of Statistics • 1990
View 10 Excerpts
Highly Influenced

and L

L. Devroye
Gyor , Nonparametric Density Estimation : The L1 View, John Wiley, New York • 1985
View 9 Excerpts
Highly Influenced

Transformation-Density Estimation

L. Yang
Ph. D. Dissertation, University of North Carolina, Institute of Statistics Mimeo Series #2337 • 1995
View 3 Excerpts
Highly Influenced

Estimation of Integrated Squared Density Derivatives

P. Hall, J. S. Marron
Statistics and Probability Letters 6 • 1987
View 6 Excerpts
Highly Influenced

Kernel Smoothing

M. P. Wand, M. C. Jones
Chapman and Hall, London • 1995
View 1 Excerpt

Asymptotically best bandwidth selectors in kernel density estimation

W. C. Kim, B. U. Park, J. S. Marron
Statistics and Probability Letters 19 • 1994
View 1 Excerpt

Bias Reduction in Kernel Density Estimation

D. Ruppert, D.B.H. Cline
The Annals of Statistics, 22 • 1994

An Empirical Investigation of the Shifted Power Transformation Method in Density Estimation

B. U. Park, S. S. Chung, K. H. Seog
Computational Statistics & Data Analysis, North Holland 14 • 1992

Similar Papers

Loading similar papers…