Knowledge discovery from road traffic accident data in Ethiopia: Data quality, ensembling and trend analysis for improving road safety

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Akademie věd České republiky, Ústav informatiky a České vysoké učení technické v Praze, Fakulta dopravní

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Není ve fondu ÚK

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Abstract

Descriptive analyses of the magnitude and situation of road safety in general and road accidents in particular is important, but understanding of data quality, factors related with dangerous situations and different interesting patterns in a data is of even greater importance. Under the umbrella of an information architecture research for road safety in developing countries, the objective of this machine learning experimental research is to explore data quality issues, analyze trends and predict the role of road users on possible injury risks. The research employed TreeNet, Classification and Adaptive Regression Trees (CART), Random Forest (RF) and hybrid ensemble approach. To identify relevant patterns and illustrate the performance of the techniques for the road safety domain, road accident data collected from Addis Ababa Traffic Office is exposed to several analyses. Empirical results illustrate that data quality is a major problem that needs architectural guideline and the prototype models could classify accidents with promising accuracy. In addition an ensemble technique proves to be better in terms of predictive accuracy in the domain under study.

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road safety, road accident, CART, RandomForest, TreeNet, data quality

Citation

Neural Network World. 2012, vol. 22, issue 3, p. 215-244.