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sm (version 2.0-2)

hnorm: Normal optimal choice of smoothing parameter in density estimation

Description

This functions evaluates the smoothing parameter which is asymptotically optimal for estimating a density function when the underlying distribution is Normal. Data in one, two or three dimensions can be handled.

Usage

hnorm(x, weights)

Arguments

x
a vector, or matrix with two or three columns, containing the data.
weights
a vector which allows the kernel functions over the observations to take different weights when they are averaged to produce a density estimate. This is useful, in particular, for censored data and to construct an estimate from binned data.

Value

  • the value of the Normal optimal smoothing parameter.

Details

See Section 2.4.2 of the reference below.

References

Bowman, A.W. and Azzalini, A. (1997). Applied Smoothing Techniques for Data Analysis: the Kernel Approach with S-Plus Illustrations. Oxford University Press, Oxford.

See Also

hcv, hsj

Examples

Run this code
x <- rnorm(50)
hnorm(x)

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