Analyzing Traffic Accident Causations in China Based on Neural Network Combined

2008-01-0533

4/14/2008

Authors
Abstract
Content
Clarifying accident causations can provide a strong foundation to prevent traffic accidents and reduce severities. This paper uses Chinese government census data from 1996-2003[1∼8] and models a relationship between various kinds of traffic accident causations and the severities of the traffic accidents based on neural network combined (NNC). The paper adapts multi-folder cross validation concept to enhance the properties of NNC. It then conducts sensitivity analysis on the trained NNC to identify the prioritized importance of traffic accident causations as they are to the severities of traffic accident. Lastly, the results are validated and compared by the findings of previous researches.
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DOI
https://doi.org/10.4271/2008-01-0533
Citation
Jun, X. and Yibing, L., "Analyzing Traffic Accident Causations in China Based on Neural Network Combined," SAE World Congress & Exhibition, Detroit, Michigan, United States, April 14, 2008, https://doi.org/10.4271/2008-01-0533.
Additional Details
Publisher
Published
4/14/2008
Product Code
2008-01-0533
Content Type
Technical Paper
Language
English