Author
Listed:
- Hande Konşuk Ünlü
- Derek S. Young
- Ayten Yiğiter
- L. Hilal Özcebe
Abstract
The analysis of traffic accident data is crucial to address numerous concerns, such as understanding contributing factors in an accident's chain-of-events, identifying hotspots, and informing policy decisions about road safety management. The majority of statistical models employed for analyzing traffic accident data are logically count regression models (commonly Poisson regression) since a count – like the number of accidents – is used as the response. However, features of the observed data frequently do not make the Poisson distribution a tenable assumption. For example, observed data rarely demonstrate an equal mean and variance and often times possess excess zeros. Sometimes, data may have heterogeneous structure consisting of a mixture of populations, rather than a single population. In such data analyses, mixtures-of-Poisson-regression models can be used. In this study, the number of injuries resulting from casualties of traffic accidents registered by the General Directorate of Security (Turkey, 2005–2014) are modeled using a novel mixture distribution with two components: a Poisson and zero-truncated-Poisson distribution. Such a model differs from existing mixture models in literature where the components are either all Poisson distributions or all zero-truncated Poisson distributions. The proposed model is compared with the Poisson regression model via simulation and in the analysis of the traffic data.
Suggested Citation
Hande Konşuk Ünlü & Derek S. Young & Ayten Yiğiter & L. Hilal Özcebe, 2022.
"A mixture model with Poisson and zero-truncated Poisson components to analyze road traffic accidents in Turkey,"
Journal of Applied Statistics, Taylor & Francis Journals, vol. 49(4), pages 1003-1017, March.
Handle:
RePEc:taf:japsta:v:49:y:2022:i:4:p:1003-1017
DOI: 10.1080/02664763.2020.1843610
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