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A New Hybrid Clustering Method for Reducing Very Large Spatio-temporal Dataset

机译:减少时空数据集的新混合聚类方法

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Spatio-temporal datasets are often very large and difficult to analyse. Recently a lot of interest has arisen towards data-mining techniques to reduce very large spatio-temporal datasets into relevant subsets as well as to help visualisation tools to effectively display the results. Cluster-based mining methods have proven to be successful at reducing the large size of raw data by extracting useful knowledge as representatives. As a consequence, instead of dealing with a large size of raw data, we can use these representatives to visualise or to analyse the data without losing important information. In this paper, we present a new hybrid approach for reducing large spatio-temporal datasets. This approach is based on the combination of density-based and graph-based clustering. Drawing on the Shared Nearest Neighbour concept, it applies the Euclidean metric distance to determine the nearest neighbour similarity. We also present and discuss the evaluation of the results for this approach.
机译:时空数据集通常非常大,难以分析。最近,人们对数据挖掘技术产生了浓厚的兴趣,该技术将非常大的时空数据集缩减为相关的子集,并帮助可视化工具有效地显示结果。事实证明,基于集群的挖掘方法通过提取有用的知识作为代表,可以成功减少大量原始数据。因此,我们可以使用这些代表来可视化或分析数据,而不用丢失大量的原始数据,而不会丢失重要的信息。在本文中,我们提出了一种减少大型时空数据集的新混合方法。此方法基于基于密度的聚类和基于图的聚类的组合。利用共享最近邻居概念,它应用欧几里德度量距离来确定最近邻居相似性。我们还将介绍并讨论这种方法的结果评估。

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