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COUNT (version 1.3.2)

nb2.obs.pred: Table of negative binomial counts: observed vs predicted proportions and difference

Description

nb2.obs.pred is used to produce a table of a negative binomial model count response with mean observed vs mean predicted proportions, and their difference.

Usage

nb2.obs.pred(len, model)

Arguments

len
highest count for the table
model
name of the negative binomial model created

Value

  • Countcount value
  • obsPropFreqObserved proportion of counts
  • avgpPredicted proportion of counts
  • DiffDifference in observed vs predicted

Details

nb2.obs.pred is used to determine where disparities exist in the mean observed and predicted proportions in the range of model counts. nb2.obs.pred is used in Table 9.28 and other places in Hilbe (2011). nb2.obs.pred follows glm.nb(), where both y=TRUE and model=TRUE options must be used.

References

Hilbe, J.M. (2011), Negative Binomial Regression, second edition, Cambridge University Press.

See Also

myTable

Examples

Run this code
library(MASS)

data(medpar)
mdpar <- glm.nb(los ~ hmo+white+type2+type3, data=medpar, y=TRUE, model=TRUE)
nb2.obs.pred(len=25, model=mdpar)

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