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Road Accident Analysis and Hotspot Prediction using Clustering

机译:使用聚类的道路事故分析和热点预测

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Road accidents are a major cause of fatalities in India and other nations too. Fatality rate in developing nations is very high due to various aspects. In the past, it was assumed that road accidents and fatalities cannot be avoided, but now with this tech era, everything is almost becoming possible. Machine learning (ML) is used to analyze various algorithms through experience and improve results. It includes three major types of learning techniques, namely supervised, unsupervised, and reinforcement learning. Our study focuses on reducing mortality rate by setting up a prediction model by means of an unsupervised learning technique, i.e., k-means clustering, which analyzes road accidents by taking into consideration various aspects like potholes on roads, sharp turns, and weather conditions and then provides suitable and precautionary measures to avoid mishaps by representing it on map and creating an intelligible model for everyone. The predicted model achieved an accuracy of 81%.
机译:道路事故是印度和其他国家死亡的主要原因。 由于各个方面,发展中国家的死亡率非常高。 过去,假设无法避免道路事故和死亡事故,但现在与这个技术时代,一切都几乎是可能的。 机器学习(ML)用于通过经验分析各种算法,提高结果。 它包括三种主要类型的学习技巧,即监督,无人监督和加强学习。 我们的研究专注于通过通过无监督的学习技术建立预测模型,即K-means集群来降低死亡率,通过考虑道路,急转弯和天气条件等各个方面,分析了道路事故。 然后提供合适的和预防措施,以避免在地图上表示它并为每个人创建可理解的模型来避免Mishaps。 预测模型实现了81%的准确性。

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