Applying crash data to injury claims - an investigation of determinant factors in severe motor vehicle accidents
•An MLR is used to determine compensations costs for road traffic injuries.•6 variables were identified as significantly influencing expected compensation cost.•The 6-variable linear model attained an adjusted-R2 fit of 20.6% (p > .001).•The linear model outperformed ordered and unordered models...
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Veröffentlicht in: | Accident analysis and prevention 2018-04, Vol.113, p.244-256 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | •An MLR is used to determine compensations costs for road traffic injuries.•6 variables were identified as significantly influencing expected compensation cost.•The 6-variable linear model attained an adjusted-R2 fit of 20.6% (p > .001).•The linear model outperformed ordered and unordered models in terms of fit.•Model indicates potential for an on-board, economic-risk based trajectory system.
An extensive number of research studies have attempted to capture the factors that influence the severity of vehicle impacts. The high number of risks facing all traffic participants has led to a gradual increase in sophisticated data collection schemes linking crash characteristics to subsequent severity measures. This study serves as a departure from previous research by relating injuries suffered in road traffic accidents to expected trauma compensation payouts and deriving a quantitative cost function. Data from the National Highway Traffic Safety Administration’s (NHTSA) Crash Injury Research (CIREN) database for the years 2005–2014 is combined with the Book of Quantum, an Irish governmental document that offers guidelines on the appropriate compensation to be awarded for injuries sustained in accidents. A multiple linear regression is carried out to identify the crash factors that significantly influence expected compensation costs and compared to ordered and multinomial logit models. The model offers encouraging results given the inherent variation expected in vehicular incidents and the subjectivity influencing compensation payout judgments, attaining an adjusted-R2 fit of 20.6% when uninfluential factors are removed. It is found that relative speed at time of impact and dark conditions increase the expected costs, while rear-end incidents, incident sustained in van-based trucks and incidents sustained while turning result in lower expected compensations. The number of airbags available in the vehicle is also a significant factor. The scalar-outcome approach used in this research offers an alternative methodology to the discrete-outcome models that dominate traffic safety analyses. The results also raise queries on the future development of claims reserving (capital allocations earmarked for future expected claims payments) as advanced driver assistant systems (ADASs) seek to eradicate the most frequent types of crash factors upon which insurance mathematics base their assumptions. |
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ISSN: | 0001-4575 1879-2057 |
DOI: | 10.1016/j.aap.2018.01.037 |