| Literature DB >> 33557296 |
Almudena Sanjurjo-de-No1, Blanca Arenas-Ramírez1, José Mira2, Francisco Aparicio-Izquierdo1.
Abstract
An accurate estimation of exposure is essential for road collision rate estimation, which is key when evaluating the impact of road safety measures. The quasi-induced exposure method was developed to estimate relative exposure for different driver groups based on its main hypothesis: the not-at-fault drivers involved in two-vehicle collisions are taken as a random sample of driver populations. Liability assignment is thus crucial in this method to identify not-at-fault drivers, but often no liability labels are given in collision records, so unsupervised analysis tools are required. To date, most researchers consider only driver and speed offences in liability assignment, but an open question is if more information could be added. To this end, in this paper, the visual clustering technique of self-organizing maps (SOM) has been applied to better understand the multivariate structure in the data, to find out the most important variables for driver liability, analyzing their influence, and to identify relevant liability patterns. The results show that alcohol/drug use could be influential on liability and further analysis is required for disability and sudden illness. More information has been used, given that a larger proportion of the data was considered. SOM thus appears as a promising tool for liability assessment.Entities:
Keywords: Self-Organizing Maps (SOM); driver liability assignment; pattern identification; quasi-induced exposure; road safety; vehicle collisions
Year: 2021 PMID: 33557296 PMCID: PMC7915838 DOI: 10.3390/ijerph18041475
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390