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Clustering the driving features based on data streams

机译:根据数据流对驾驶功能进行聚类

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This paper presents an innovative idea for the classification of individual drivers. The classification is based on each driver's driving features like, ratio of indicators to turns, number of brakes, number of time horn used, average gear, average speed, maximum speed and gear. K-means and hierarchical clustering is used to separate out the slow, normal and fast driving styles based on recorded data. Experimental result shows that k-means outperformed hierarchical clustering for recorded multi-attribute data.
机译:本文提出了一种创新的思路,用于单个驾驶员的分类。该分类基于每个驾驶员的驾驶功能,例如,指示器与转弯的比率,制动器的数量,使用的喇叭声的数量,平均档位,平均速度,最大速度和档位。 K均值和分层聚类用于根据记录的数据区分慢速,正常和快速驾驶方式。实验结果表明,对于记录的多属性数据,k均值优于分层聚类。

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