| bsyule | R Documentation | 
Uses the parametric bootstrap to estimate the bias and confidence interval of the MLE of the Yule Distribution.
bsyule(x, cutoff=1, m=200, np=1, alpha=0.95, v=NULL,
                   hellinger=FALSE, cutabove=1000)
bootstrapyule(x,cutoff=1,cutabove=1000,
                          m=200,alpha=0.95,guess=3.31,hellinger=FALSE,
                          mle.meth="ayulemle")
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 | 
 Initial estimate at the MLE.  | 
mle.meth | 
 Method to use to compute the MLE.  | 
dist | 
 matrix of sample CDFs, one per row.  | 
obsmle | 
 The Yule MLE of the PDF exponent.  | 
bsmles | 
 Vector of bootstrap MLE.  | 
quantiles | 
 Quantiles of the bootstrap MLEs.  | 
pvalue | 
 p-value of the Anderson-Darling statistics relative to the bootstrap MLEs.  | 
obsmands | 
 Observed Anderson-Darling Statistic.  | 
meanmles | 
 Mean of the bootstrap MLEs.  | 
See the papers on https://handcock.github.io/?q=Holland for details
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.
ayulemle, simyule, llyule
# Now, simulate a Yule distribution over 100
# observations with rho=4.0
set.seed(1)
s4 <- simyule(n=100, rho=4)
table(s4)
#
# Calculate the MLE and an asymptotic confidence
# interval for rho
#
s4est <- ayulemle(s4)
s4est
#
# Use the bootstrap to compute a confidence interval rather than using the 
# asymptotic confidence interval for rho.
#
bsyule(s4, m=20)
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