Main Statistical Inference Based on Kernel Distribution Function Estimators
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Statistical Inference Based on Kernel Distribution Function Estimators

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This book presents a study of statistical inferences based on the kernel-type estimators of distribution functions. The inferences involve matters such as quantile estimation, nonparametric tests, and mean residual life expectation, to name just some. Convergence rates for the kernel estimators of density functions are slower than ordinary parametric estimators, which have root-n consistency. If the appropriate kernel function is used, the kernel estimators of the distribution functions recover the root-n consistency, and the inferences based on kernel distribution estimators have root-n consistency. Further, the kernel-type estimator produces smooth estimation results. The estimators based on the empirical distribution function have discrete distribution, and the normal approximation cannot be improved―that is, the validity of the Edgeworth expansion cannot be proved. If the support of the population density function is bounded, there is a boundary problem, namely the estimator [...]does not have consistency near the boundary. The book also contains a study of the mean squared errors of the estimators and the Edgeworth expansion for quantile estimators.
Request Code : ZLIB.IO17388375
Categories:
Year:
2022
Publisher:
Springer-JSS City: Tokyo
Language:
English
ISBN 10:
9819918618
ISBN 13:
9789819918614
ISBN:
9819918618, 9789819918614
Series:
SpringerBriefs in Statistics: JSS Research Series in Statistics
This book is not available due to the complaint of the copyright holder.

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