A Data Coding and Screening System for Accident Risk Patterns: A Learning System
Loading...
Files
Date
2011
Journal Title
Journal ISSN
Volume Title
Publisher
Open Access Color
BRONZE
Green Open Access
Yes
OpenAIRE Downloads
OpenAIRE Views
Publicly Funded
No
Abstract
Accidents on urban roads can occur for many reasons, and the contributing factors together pose some complexity in the analysis of the casualties. In order to simplify the analysis and track changes from one accident to another for comparability, an authentic data coding and category analysis methods are developed, leading to data mining rules. To deal with a huge number of parameters, first, most qualitative data are converted into categorical codes (alpha-numeric), so that computing capacity would also be increased. Second, the whole data entry per accident are turned into ID codes, meaning each crash is possibly unique in attributes, called 'accident combination', reducing the large number of similar value accident records into smaller sets of data. This genetical code technique allows us to learn accident types with its solid attributes. The learning (output averages) provides a decision support mechanism for taking necessary cautions for similar combinations. The results can be analyzed by inputs, outputs (attributes), time (years) and the space (streets). According to Izmir's case results; sampled data and its accident combinations are obtained for 3 years (2005 - 2007) and their attributes are learned. © 2011 WIT Press.
Description
WIT Transactions on the Built Environment
17th International Conference on Urban Transport and the Environment - UT 2011 -- 6 June 2011 through 8 June 2011 -- Pisa -- 95895
17th International Conference on Urban Transport and the Environment - UT 2011 -- 6 June 2011 through 8 June 2011 -- Pisa -- 95895
Keywords
Data mining, Learning systems, Similarity index, Traffic accidents, Accident types, Analysis method, Computing capacity, Contributing factor, Decision supports, Qualitative data, Screening system, Similarity indices, Data mining, Decision support systems, Highway accidents, Learning systems, Urban transportation, Accidents, accident, complexity, data mining, decision support system, learning, motorway, risk factor, transportation safety, Izmir [Turkey], Turkey, Similarity index, Learning systems, Traffic accidents, Data mining
Fields of Science
Citation
WoS Q
N/A
Scopus Q
Q4

OpenCitations Citation Count
N/A
Source
WIT Transactions on the Built Environment
Volume
116
Issue
Start Page
505
End Page
516
PlumX Metrics
Citations
Scopus : 0
Captures
Mendeley Readers : 5
Google Scholar™


