|
Title: Using Complimentary Set Analysis to Validate the Underlying Assumptions of Quasi-induced Exposure
Accession Number: 01504255
Record Type: Component
Abstract: In the recent decades quasi-induced exposure has enjoyed increasing popularity with applications in the traffic safety analysis. However, issues have been raised that the majority of the relevant studies do not particularly attempt to verify the validity of the induced exposure technique prior to its adoption. In an effort to validate the critical not-at-fault assumption at the core of the applications, complimentary set analysis (a technique to test whether a driving cohort is randomly selected by its complimentary set of drivers of the same classification) is used and tested. The paper supplements the technique with a comprehensive statistical testing framework, which will enable the validation of the assumption to be conducted for various driver-vehicle characteristics (>2) at much more finely-disaggregated levels. The main findings of the research include: 1) at the most aggregated level, statistical testing does not support the hypothesis that one innocent driver-vehicle combination in the driving population is randomly impacted by the culpable parties of the same classification, mainly due to data aggregation and exposure data irregularities; 2) statistical results demonstrate an increasing trend of p-values when data are finely disaggregated in a stepwise manner, confirming the random-selection assumption of quasi-induced exposure; and 3) an important phenomenon inherent in the exposure matrix is that a driving cohort has a higher probability to collide with the same driving type as opposed to others of the same classification. Though the study it has been verified that complementary set analysis is a straightforward, convenient, and effective technique to check the validity of quasi-induced exposure.
Supplemental Notes: Distribution, posting, or copying of this PDF is strictly prohibited without written permission of the Transportation Research Board of the National Academy of Sciences. Unless otherwise indicated, all materials in this PDF are copyrighted by the National Academy of Sciences. Copyright © National Academy of Sciences. All rights reserved
Monograph Title: Monograph Accession #: 01501394
Language: English
Corporate Authors: Transportation Research Board 500 Fifth Street, NW Authors: Jiang, XinguoQiu, YanjunLyles, Richard WZheng, HaitaoLiu, LishangPagination: 15p
Publication Date: 2011
Conference:
3rd International Conference on Road Safety and Simulation
Location:
Indianapolis Indiana, United States Media Type: Digital/other
Features: Figures; References; Tables
TRT Terms: Subject Areas: Highways; Safety and Human Factors; I80: Accident Studies
Files: TRIS, TRB, ATRI
Created Date: Jan 9 2014 3:09PM
|