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A Topological-Based Spatial Data Clustering

机译:基于拓扑的空间数据聚类

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An approach is presented that automatically discovers different cluster shapes that are hard to discover by traditional clustering methods (e.g., non-spherical shapes). This allows discover useful knowledge by dividing the datasets into sub clusters; in which each one have similar objects. The approach does not compute the distance between objects but instead the similarity information between objects is computed as needed while using the topological relations as a new similarity measure. An efficient tool was developed to support the approach and is applied to a multiple synthetic and real datasets. The results are evaluated and compared against different clustering methods using different comparison measures such as accuracy, number of parameters, and time complexity. The tool performs better than error-prone distance clustering methods in both the time complexity and the accuracy of the results.
机译:提出了一种方法,该方法自动发现传统聚类方法难以发现的不同聚类形状(例如,非球形)。通过将数据集划分为子类,可以发现有用的知识。其中每个对象都有相似的对象。该方法不计算对象之间的距离,而是根据需要计算对象之间的相似性信息,同时使用拓扑关系作为新的相似性度量。开发了一种有效的工具来支持该方法,并将其应用于多个综合和真实数据集。使用不同的比较措施(例如准确性,参数数量和时间复杂度)对结果进行评估并与不同的聚类方法进行比较。该工具在时间复杂度和结果准确性方面均比易错距离聚类方法表现更好。

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