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degreenet (version 1.2)

bswar: Calculate Bootstrap Estimates and Confidence Intervals for the Waring Distribution

Description

Uses the parametric bootstrap to estimate the bias and confidence interval of the MLE of the Waring Distribution.

Usage

bswar(x, cutoff=1, m=200, np=2, alpha=0.95, v=NULL,
                   hellinger=FALSE)
bootstrapwar(x,cutoff=1,cutabove=1000,
             m=200,alpha=0.95,guess=c(3.31, 0.1),file="none",
             conc = FALSE)

Arguments

x
A vector of counts (one per observation).
cutoff
Calculate estimates conditional on exceeding this value.
m
Number of bootstrap samples to draw.
np
Number of parameters in the model (1 by default).
alpha
Type I error for the confidence interval.
v
Parameter value to use for the bootstrap distribution. By default it is the MLE of the data.
hellinger
Minimize Hellinger distance of the parametric model from the data instead of maximizing the likelihood.
cutabove
Calculate estimates conditional on not exceeding this value.
guess
Guess at the parameter value.
file
Name of the file to store the results. By default do not save the results.
conc
Calculate the concentration index of the distribution?

Value

  • distmatrix of sample CDFs, one per row.
  • obsmleThe Waring MLE of the PDF exponent.
  • bsmlesVector of bootstrap MLE.
  • quantilesQuantiles of the bootstrap MLEs.
  • pvaluep-value of the Anderson-Darling statistics relative to the bootstrap MLEs.
  • obsmandsObserved Anderson-Darling Statistic.
  • meanmlesMean of the bootstrap MLEs.
  • guessInitial estimate at the MLE.
  • mle.methMethod to use to compute the MLE.

References

Jones, J. H. and Handcock, M. S. "An assessment of preferential attachment as a mechanism for human sexual network formation," Proceedings of the Royal Society, B, 2003, 270, 1123-1128.

See Also

anbmle, simwar, llwar

Examples

Run this code
# Now, simulate a Waring distribution over 100
# observations with expected count 1 and probability of another
# of 0.2

set.seed(1)
s4 <- simwar(n=100, v=c(5,0.2))
table(s4)

#
# Calculate the MLE and an asymptotic confidence
# interval for the parameter.
#

s4est <- awarmle(s4)
s4est

#
# Use the bootstrap to compute a confidence interval rather than using the 
# asymptotic confidence interval for the parameter.
#

bswar(s4, m=20)

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