Journal of the Eastern Asia Society for Transportation Studies
Online ISSN : 1881-1124
ISSN-L : 1341-8521
Traffic Accident and Safety
A BASIC STUDY ON TRAFFIC ACCIDENT DATA ANALYSIS USING SUPPORT VECTOR MACHINE
Hironobu HASEGAWAMasaru FUJIIMikiharu ARIMURATohru TAMURA
Author information
JOURNAL FREE ACCESS

2007 Volume 7 Pages 2873-2880

Details
Abstract
In Japan, fatalities from traffic accidents are decreasing, but sacrifices of the traffic accidents are not negligible. So, traffic safety measures are still important. When considering the traffic safety measures, it is effective to extract dangerous locations with high fatality and injury accident rates and then analyze the details of the factors involved in such accidents. Due to numerous factors, however, it is difficult to effectively and efficiently process large quantities of traffic accident data. For this reason, previous traffic analyses are reviewed, and a Support Vector Machine (hereinafter referred to as "SVM"), which has become the focus of attention as a data mining method, is chosen. The SVM is applied to the traffic accident data analysis. The effectiveness of and problems surrounding a SVM are examined in this study. The classification rate of the SVM toward non-learning data was approximately 70%.
Content from these authors
© 2007 Eastern Asia Society for Transportation Studies
Previous article Next article
feedback
Top