Feasibility of "subjective" engineering assessments of road safety improvements : Bayesian analysis development


Autoria(s): Melcher, Daniel J.; Dixon, Karen K.; Washington, Simon; Wu, Chi-Hung
Data(s)

2001

Resumo

Regional safety program managers face a daunting challenge in the attempt to reduce deaths, injuries, and economic losses that result from motor vehicle crashes. This difficult mission is complicated by the combination of a large perceived need, small budget, and uncertainty about how effective each proposed countermeasure would be if implemented. A manager can turn to the research record for insight, but the measured effect of a single countermeasure often varies widely from study to study and across jurisdictions. The challenge of converting widespread and conflicting research results into a regionally meaningful conclusion can be addressed by incorporating "subjective" information into a Bayesian analysis framework. Engineering evaluations of crashes provide the subjective input on countermeasure effectiveness in the proposed Bayesian analysis framework. Empirical Bayes approaches are widely used in before-and-after studies and "hot-spot" identification; however, in these cases, the prior information was typically obtained from the data (empirically), not subjective sources. The power and advantages of Bayesian methods for assessing countermeasure effectiveness are presented. Also, an engineering evaluation approach developed at the Georgia Institute of Technology is described. Results are presented from an experiment conducted to assess the repeatability and objectivity of subjective engineering evaluations. In particular, the focus is on the importance, methodology, and feasibility of the subjective engineering evaluation for assessing countermeasures.

Identificador

http://eprints.qut.edu.au/37605/

Publicador

Transportation Research Board of the National Academies

Relação

DOI:10.3141/1758-06

Melcher, Daniel J., Dixon, Karen K., Washington, Simon, & Wu, Chi-Hung (2001) Feasibility of "subjective" engineering assessments of road safety improvements : Bayesian analysis development. Transportation Research Record, 1758, pp. 36-43.

Fonte

Centre for Accident Research & Road Safety - Qld (CARRS-Q); Faculty of Built Environment and Engineering; School of Urban Development

Palavras-Chave #010401 Applied Statistics #111799 Public Health and Health Services not elsewhere classified #120506 Transport Planning
Tipo

Journal Article