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EnvStats (version 2.1.0)

eqnbinom: Estimate Quantiles of a Negative Binomial Distribution

Description

Estimate quantiles of a negative binomial distribution.

Usage

eqnbinom(x, size = NULL, p = 0.5, method = "mle/mme", digits = 0)

Arguments

x
vector of non-negative integers indicating the number of trials that took place before size successes occurred (the total number of trials that took place is x+1), or an object resulting from
size
vector of positive integers indicating the number of successes that must be observed before the trials are stopped. Missing (NA), undefined (NaN), and infinite (Inf, -Inf) value
p
numeric vector of probabilities for which quantiles will be estimated. All values of p must be between 0 and 1. The default value is p=0.5.
method
character string specifying the method of estimating the probability parameter. Possible values are "mle/mme" (maximum likelihood and method of moments; the default) and "mvue" (minimum variance unbiased). You canno
digits
an integer indicating the number of decimal places to round to when printing out the value of 100*p. The default value is digits=0.

Value

  • If x is a numeric vector, eqnbinom returns a list of class "estimate" containing the estimated quantile(s) and other information. See estimate.object for details. If x is the result of calling an estimation function, eqnbinom returns a list whose class is the same as x. The list contains the same components as x, as well as components called quantiles and quantile.method.

Details

The function eqnbinom returns estimated quantiles as well as estimates of the prob parameter. Quantiles are estimated by 1) estimating the prob parameter by calling enbinom, and then 2) calling the function qnbinom and using the estimated value for prob.

References

Forbes, C., M. Evans, N. Hastings, and B. Peacock. (2011). Statistical Distributions. Fourth Edition. John Wiley and Sons, Hoboken, NJ. Johnson, N. L., S. Kotz, and A. Kemp. (1992). Univariate Discrete Distributions. Second Edition. John Wiley and Sons, New York, Chapter 5.

See Also

enbinom, NegBinomial, egeom, Geometric, estimate.object.

Examples

Run this code
# Generate an observation from a negative binomial distribution with 
  # parameters size=2 and prob=0.2, then estimate the parameter prob 
  # and the 90th percentile. 
  # Note: the call to set.seed simply allows you to reproduce this example. 
  # Also, the only parameter that is estimated is prob; the parameter 
  # size is supplied in the call to enbinom.  The parameter size is printed in 
  # order to show all of the parameters associated with the distribution.

  set.seed(250) 
  dat <- rnbinom(1, size = 2, prob = 0.2) 
  dat
  #[1] 5

  eqnbinom(dat, size = 2, p = 0.9)

  #Results of Distribution Parameter Estimation
  #--------------------------------------------
  #
  #Assumed Distribution:            Negative Binomial
  #
  #Estimated Parameter(s):          size = 2.0000000
  #                                 prob = 0.2857143
  #
  #Estimation Method:               mle/mme for 'prob'
  #
  #Estimated Quantile(s):           90'th %ile = 11
  #
  #Quantile Estimation Method:      Quantile(s) Based on
  #                                 mle/mme for 'prob' Estimators
  #
  #Data:                            dat, 2
  #
  #Sample Size:                     1


  #----------
  # Clean up

  rm(dat)

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