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Predictive Probability Models of Road Traffic Human Deaths with Demographic Factors in Ghana

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  • Christian Akrong Hesse
  • Dominic Buer Boyetey
  • Albert Ayi Ashiagbor
  • Lucia Valentina Gambuzza

Abstract

Road traffic carnages are global concerns and seemingly on the rise in Ghana. Several risk factors have been studied as associated with road traffic fatalities. However, inadequate road traffic fatality (RTF) data and inconsistent probability outcomes for RTF remain major challenges. The objective of this study was to illustrate and estimate probability models that can predict road traffic fatalities. We relied on 66,159 recorded casualties who were involved in road traffic accidents (RTAs) in Ghana from 2015 to 2019. Three generalized linear models, namely, logistic regression, probit regression, and linear probability model, were used for the analysis. We found that gender and age groups have significant effects in predicting the probability of road traffic fatality for all three models. Through a likelihood ratio test, however, it was determined that the logit regression model produced consistent probabilities of traffic fatalities which are very close to the actual probability values across the age groups and gender, compared to the other two models. Thus, we recommend intensified campaign for the use of seat belts in vehicles, targeted at the aged and male users of road transport, to reduce the possibility of death in any RTA.

Suggested Citation

  • Christian Akrong Hesse & Dominic Buer Boyetey & Albert Ayi Ashiagbor & Lucia Valentina Gambuzza, 2022. "Predictive Probability Models of Road Traffic Human Deaths with Demographic Factors in Ghana," Complexity, Hindawi, vol. 2022, pages 1-10, July.
  • Handle: RePEc:hin:complx:1906533
    DOI: 10.1155/2022/1906533
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