Modelling road traffic crashes using spatial autoregressive model with additional endogenous variable

Road traffic crashes have become a global issue of concern because of the number of deaths and injuries. The model of interest is a linear cross sectional Spatial Autoregressive (SAR) model with additional endogenous variables, exogenous variables and SAR disturbances. The focus is on RTC in Oyo sta...

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Veröffentlicht in:Statistics in transition : journal of the Polish Statistical Association 2016-12, Vol.17 (4), p.659-670
Hauptverfasser: Olubusoye, Olusanya Elisa, Oluwatoyin Korter, Grace, Adebare Salisu, Afees
Format: Artikel
Sprache:eng
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Zusammenfassung:Road traffic crashes have become a global issue of concern because of the number of deaths and injuries. The model of interest is a linear cross sectional Spatial Autoregressive (SAR) model with additional endogenous variables, exogenous variables and SAR disturbances. The focus is on RTC in Oyo state, Nigeria. The number of RTC in each LGA of the state is the dependent variable. A 33×33 weights matrix; travel density; land area and major road length of each LGA were used as exogenous variables and population was the IV. The objective is to determine the hotspots and examine whether the number of RTC cases in a given LGA is affected by the number of RTC cases of neighbouring LGAs and an instrumental variable. The hotspots include Oluyole, Ido, Akinyele, Egbeda, Atiba, Oyo East, and Ogbomosho South LGAs. The study concludes that the number of RTC in a given LGA is affected by the number of RTC in contiguous LGAs. The policy implication is that road safety and security measures must be administered simultaneously to LGAs with high concentration of RTC and their neighbours to achieve significant remedial effect.
ISSN:1234-7655
2450-0291
DOI:10.59170/stattrans-2016-036