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Acceleration of DBSCAN-Based Clustering with Reduced Neighborhood Evaluations

机译:基于DBSCAN的聚类加速,减少了邻里评估

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DBSCAN is a density-based clustering technique, well appropriate to discover clusters of arbitrary shape, and to handle noise. The number of clusters does not have to be known in advance. Its performance is limited by calculating the e-neighborhood of each point of the data set. Besides methods that reduce the query complexity of nearest neighbor search, other approaches concentrate on the reduction of necessary e-neighborhood evaluations. In this paper we propose a heuristic that selects a reduced number of points for the nearest neighborhood search, and uses efficient data structures and algorithms to reduce the runtime significantly. Unlike previous approaches, the number of necessary evaluations is independent of the data space dimensionality. We evaluate the performance of the new approach experimentally on artificial test cases and problems from the UCI machine learning repository.
机译:DBSCAN是一种基于密度的聚类技术,适合发现任意形状的簇,处理噪声。群集的数量不必提前知道。它的性能是通过计算数据集的每个点的e邻域来限制的。除了降低最近邻搜索的查询复杂性的方法外,其他方法集中在减少必要的电子街区评估。在本文中,我们提出了一个启发式,它为最近的邻域搜索选择了减少的点数,并使用高效的数据结构和算法显着降低运行时。与以前的方法不同,必要的评估数量与数据空间维度无关。我们在实验上通过实验对人工测试用例的表现和来自UCI机器学习存储库的问题。

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