vuong {pscl}R Documentation

Vuong's non-nested hypothesis test

Description

Compares two models fit to the same data that do not nest via Vuong's non-nested test.

Usage

vuong(m1, m2, digits = getOption("digits"))

Arguments

m1 model 1, an object inheriting from class glm, negbin or zeroinfl
m2 model 2, as for model 1
digits significant digits in printed result

Details

The Vuong non-nested test is based on a comparison of the predicted probabilities of two models that do not nest. Examples include comparisons of zero-inflated count models with their non-zero-inflated analogs (e.g., zero-inflated Poisson versus ordinary Poisson, or zero-inflated negative-binomial versus ordinary negative-binomial). A large, positive test statistic provides evidence of the superiority of model 1 over model 2, while a large, negative test statistic is evidence of the superiority of model 2 over model 1. Under the null that the models are indistinguishable, the test statistic is asymptotically distributed standard normal.

The function will fail if the models do not contain identical values in their respective components named y (the value of the response being modeled).

Value

nothing returned, prints the test-statistic and p value and exits silently.

Author(s)

Simon Jackman jackman@stanford.edu

References

Vuong, Q.H. 1989. "Likelihood ratio tests for model selection and non-nested hypotheses." Econometrica. 57:307-333.

Examples

data("bioChemists")
## compare Poisson GLM and ZIP
glm1 <- glm(art ~ ., data = bioChemists, family = poisson)
zip <- zeroinfl(art ~ . | ., data = bioChemists, EM = TRUE)
vuong(glm1, zip)

## compare negbin with zero-inflated negbin
nb1 <- glm.nb(art ~ ., data=bioChemists)
zinb <- zeroinfl(art ~ . | ., data = bioChemists, dist = "negbin", EM = TRUE)
vuong(nb1, zinb)

[Package pscl version 1.03 Index]