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A Fast Algorithm for Identifying Density-Based Clustering Structures Using a Constraint Graph

机译:使用约束图识别基于密度的聚类结构的快速算法

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OPTICS is a state-of-the-art algorithm for visualizing density-based clustering structures of multi-dimensional datasets. However, OPTICS requires iterative distance computations for all objects and is thus computed in O ( n 2 ) time, making it unsuitable for massive datasets. In this paper, we propose constrained OPTICS (C-OPTICS) to quickly create density-based clustering structures that are identical to those by OPTICS. C-OPTICS uses a bi-directional graph structure, which we refer to as the constraint graph, to reduce unnecessary distance computations of OPTICS. Thus, C-OPTICS achieves a good running time to create density-based clustering structures. Through experimental evaluations with synthetic and real datasets, C-OPTICS significantly improves the running time in comparison to existing algorithms, such as OPTICS, DeLi-Clu, and Speedy OPTICS (SOPTICS), and guarantees the quality of the density-based clustering structures.
机译:OPTICS是用于可视化多维数据集基于密度的聚类结构的最新算法。但是,OPTICS需要对所有对象进行迭代距离计算,因此需要O(n 2)时间来计算,这使其不适用于海量数据集。在本文中,我们提出了约束OPTICS(C-OPTICS),以快速创建与OPTICS相同的基于密度的聚类结构。 C-OPTICS使用双向图结构(我们称为约束图)来减少OPTICS的不必要距离计算。因此,C-OPTICS获得了良好的运行时间来创建基于密度的聚类结构。通过对合成数据集和真实数据集进行的实验评估,与现有算法(例如OPTICS,DeLi-Clu和Speedy OPTICS(SOPTICS))相比,C-OPTICS大大缩短了运行时间,并保证了基于密度的聚类结构的质量。

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