TY - JOUR
T1 - Models for zero-inflated count data using the Neyman type A distribution
AU - Dobbie, Melissa
AU - Welsh, Alan
PY - 2001/7
Y1 - 2001/7
N2 - We explore the possibility of modelling zero-inflated count data using the Neyman type A distribution. We extend three parameterizations of the Neyman type A distribution to allow their parameters to depend on covariates. We develop models which relate counts of Leadbeater’s possum to various habitat variables to illustrate the methodology. Half-normal plots are constructed for each model to explore the quality of the fit. We then formally compare the Neyman type A models using the method of Cox to test non-nested hypotheses. Finally, we compare each of the Neyman type A models with a model from a competing family, the conditional Poisson model.
AB - We explore the possibility of modelling zero-inflated count data using the Neyman type A distribution. We extend three parameterizations of the Neyman type A distribution to allow their parameters to depend on covariates. We develop models which relate counts of Leadbeater’s possum to various habitat variables to illustrate the methodology. Half-normal plots are constructed for each model to explore the quality of the fit. We then formally compare the Neyman type A models using the method of Cox to test non-nested hypotheses. Finally, we compare each of the Neyman type A models with a model from a competing family, the conditional Poisson model.
KW - Neyman type A distribution
KW - contagious distributions
KW - covariate adjustment
KW - non-nested hypothesis
KW - parameterization
KW - zero-inflated counts
UR - http://www.scopus.com/inward/record.url?scp=84993660144&partnerID=8YFLogxK
U2 - 10.1177/1471082X0100100106
DO - 10.1177/1471082X0100100106
M3 - Article
SN - 1471-082X
VL - 1
SP - 65
EP - 80
JO - Statistical Modelling
JF - Statistical Modelling
IS - 1
ER -