Background
Type: Article

Analysis of over-dispersed count data with extra zeros using the Poisson log-skew-normal distribution

Journal: Journal of Statistical Computation and Simulation (15635163)Year: 1 September 2016Volume: 86Issue: Pages: 2644 - 2662
Hassanzadeh F.Kazemi I.a
DOI:10.1080/00949655.2015.1117086Language: English

Abstract

Mixed Poisson distributions are widely used in various applications of count data mainly when extra variation is present. This paper introduces an extension in terms of a mixed strategy to jointly deal with extra-Poisson variation and zero-inflated counts. In particular, we propose the Poisson log-skew-normal distribution which utilizes the log-skew-normal as a mixing prior and present its main properties. This is directly done through additional hierarchy level to the lognormal prior and includes the Poisson lognormal distribution as its special case. Two numerical methods are developed for the evaluation of associated likelihoods based on the Gauss–Hermite quadrature and the Lambert's W function. By conducting simulation studies, we show that the proposed distribution performs better than several commonly used distributions that allow for over-dispersion or zero inflation. The usefulness of the proposed distribution in empirical work is highlighted by the analysis of a real data set taken from health economics contexts. © 2015 Informa UK Limited, trading as Taylor & Francis Group.