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A Top-Down Approach for Hierarchical Cluster Exploration by Visualization

机译:通过可视化进行分层群集探索的自上而下方法

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With the much increased capability of data collection and storage in the past decade, data miners have to deal with much larger datasets in knowledge discovery tasks. Very large observations may cause traditional clustering methods to break down and not be able to cope with such large volumes of data. To enable data miners effectively detect the hierarchical cluster structure of a very large dataset, we introduce a visualization technique HOV3 to plot the dataset into clear and meaningful subsets by using its statistical summaries. Therefore, data miners can focus on investigating a relatively smaller-sized subset and its nested clusters. In such a way, data miners can explore clusters of any subset and its offspring subsets in a top-down fashion. As a consequence, HOV3 provides data miners an effective method on the exploration of clusters in a hierarchy by visualization.
机译:在过去十年中,数据收集和存储能力大大,数据矿工必须在知识发现任务中处理更大的数据集。非常大的观察可能导致传统的聚类方法分解,不能应对这种大量的数据。为了使数据挖养机能够有效地检测非常大的数据集的分层集群结构,我们引入了一种可视化技术Hov3,通过使用其统计摘要将数据集绘制成明确和有意义的子集。因此,数据矿工可以专注于调查相对较小尺寸的子集及其嵌套群集。以这样的方式,数据矿工可以以自上而下的方式探索任何子集及其后代子集的集群。因此,HOV3通过可视化提供数据矿工在层次结构中探索群集的有效方法。

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