Intelligence in the Era of Big Data

Human loss due to road traffic accident (RTA) in developing countries is a big challenge. It becomes more serious in those developing countries where road conditions are not good and due to several reasons government is not able to maintain roads on regular basis. Additionally, increasing number of vehicles, inefficient driving and environmental conditions are also some of the factors which are responsible for RTA. In this work we present architecture of a data mining model. The proposed model is applied on real data set of RTAs from a developing country. The analysis of data gives several useful results, which can be used for future planning to reduce RTAs in developing countries. This paper also presents that how data mining model is better than other models.

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