Using hybrid Data Mining algorithm for Analysing road accidents Data Set

G. Parathasarathy, T. Soumya, Y. Das, J. Saravanakumar, A. Merjora
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引用次数: 3

Abstract

Nowadays, road safety has become an important issue in the urban areas due to the high vehicle density. Road safety can be improved by reducing the accidents. Road accident causes traffic hindrance which has become intolerable especially in big-cities. Therefore, analyzing the road accidents accurately can help to solve the problem of traffic crashes. In our project, we propose a hybrid model that combines both K-Nearest Neighbor and Support Vector Machines algorithm for road accident analysis and prediction of accident type, which is based on the hierarchical-learning approach. The accident types are classified as crash, drunk & drive, fire and skid. Our proposed model uses the combination of both KNN and SVM algorithms with the historical datasets collected from UCI Repository. This analyzed data will be more useful to suggest better safety measures to avoid traffic crashes. We experimentally analyze the performance of both KNN and SVM algorithms using R programming with large accident datasets. Results show that our hybrid model enhances the accuracy of road accident analysis.
基于混合数据挖掘算法的道路交通事故数据集分析
如今,由于车辆密度高,道路安全已成为城市地区的一个重要问题。道路安全可以通过减少事故来改善。道路交通事故造成的交通障碍已经变得无法忍受,特别是在大城市。因此,准确分析道路交通事故有助于解决交通事故问题。在我们的项目中,我们提出了一种基于分层学习方法的混合模型,该模型结合了k -最近邻和支持向量机算法,用于道路事故分析和事故类型预测。事故类型分为撞车、酒后驾车、火灾和打滑。我们提出的模型将KNN和SVM算法与从UCI Repository收集的历史数据集相结合。这些经过分析的数据将更有助于提出更好的安全措施,以避免交通事故。我们使用R编程在大型事故数据集上实验分析了KNN和SVM算法的性能。结果表明,该混合模型提高了道路交通事故分析的准确性。
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