vkgmss.sd.estim: Kernel estimation of the standard deviation function

Description Usage Arguments Details Author(s) References Examples

View source: R/vkgmss.R

Description

This function computes the kernel (Nadaraya-Watson) estimation of the standard deviation function.

Usage

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vkgmss.sd.estim(x, data.X, data.Y, bandwidth,
		kernel.function = kernel.function.epan)

Arguments

x

a numeric vector.

data.X

a numeric data vector used to obtain the kernel estimator of the standard deviation function.

data.Y

a numeric data vector used to obtain the kernel estimator of the standard deviation function.

bandwidth

bandwidth used to obtain the kernel estimator of the standard deviation function.

kernel.function

kernel function used to obtain the kernel estimator of the standard deviation function. Default option is "kernel.function.epan" which corresponds to the Epanechnikov kernel function.

Details

Inappropriate bandwidth or x choices can produce "NaN" values in function estimates.

Author(s)

Romain Azais, Sandie Ferrigno and Marie-Jose Martinez

References

I. Van Keilegom, W. Gonzalez Manteiga, and C. Sanchez Sellero. Goodness-of-fit tests in parametric regression based on the estimation of the error distribution. Test, 17, 401:415, 2008.

R. Azais, S. Ferrigno and M-J Martinez. cvmgof: An R package for Cramer-von Mises goodness-of-fit tests in regression models. Submitted. January 2021.hal-03101612

Examples

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# Uncomment the following code block
#
# set.seed(1)
#
# # Data simulation
# n = 25 # Dataset size
# data.X = runif(n,min=0,max=5) # X
# data.Y = 0.2*data.X^2-data.X+2+rnorm(n,mean=0,sd=0.3) # Y
#
# ########################################################################
#
# # Estimation of residuals standard deviation
#
# bandwidth = 0.75 # Here, the bandwidth is arbitrarily fixed
#
# xgrid = seq(0,5,by=0.1)
# sd = vkgmss.sd.estim(xgrid,data.X,data.Y,bandwidth)
#
# plot(xgrid,sd , type='l',xlab='X',ylab='SD(X)')
# abline(h=0.3)

cvmgof documentation built on Jan. 16, 2021, 5:40 p.m.