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U-DBSCAN : A density-based clustering algorithm for uncertain objects

机译:U-DBSCAN:一种基于密度的不确定对象聚类算法

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In recent years, uncertain data have gained increasing research interests due to its natural presence in many applications such as location based services and sensor services. In this paper, we study the problem of clustering uncertain objects. We propose a new deviation function that approximates the underlying uncertain model of objects and a new density-based clustering algorithm, U-DBSCAN, that utilizes the proposed deviation. Since, there is no cluster quality measurement of density-based clustering at present. Thus, we also propose a metric which specifically measures the density quality of clustering solution. Finally, we perform a set of experiments to evaluate the quality effectiveness of our algorithm using our metric. The results reveal that U-DBSCAN gives better clustering quality while having comparable running time compared to a traditional approach of using representative points of objects with DBSCAN.
机译:近年来,由于不确定性数据在基于位置的服务和传感器服务等许多应用中的天然存在,因此越来越引起人们的研究兴趣。在本文中,我们研究了对不确定对象进行聚类的问题。我们提出了一种新的偏差函数,该函数可以近似对象的潜在不确定模型,以及一种新的基于密度的聚类算法U-DBSCAN,它利用了所提出的偏差。由于目前没有基于密度的聚类的聚类质量度量。因此,我们还提出了一种度量,该度量专门测量聚类解决方案的密度质量。最后,我们执行了一组实验,以使用度量标准来评估算法的质量有效性。结果表明,与传统的将对象的代表点与DBSCAN结合使用的传统方法相比,U-DBSCAN具有更好的聚类质量,同时具有可比的运行时间。

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