Count data often exhibit overdispersion and/or require an adjustment for zero
outcomes with respect to a Poisson model. Zero-modified Poisson (ZMP) and zeromodified
generalized Poisson (ZMGP) regression models are useful classes of models for
such data. In the literature so far only score tests are used for testing the necessity of this
adjustment. We address this problem by using Wald and likelihood ratio tests. We show
how poor the performance of the score tests can be in comparison to the performance of
Wald and likelihood ratio (LR) tests through a simulation study. In particular, the score
test in the ZMP case results in a power loss of 47% compared to the Wald test in the
worst case, while in the ZMGP case the worst loss is 87%. Therefore, regardless of the
computational advantage of score tests, the loss in power compared to the Wald and LR
tests should not be neglected and these much more powerful alternatives should be used
instead. We prove consistency and asymptotic normality of the maximum likelihood
estimates in ZGMP regression models, on what Wald and likelihood ratio tests rely. The
usefulnes of ZGMP models is illustrated in a real data example.
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