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An improved path-based clustering algorithm

机译:一种改进的基于路径的聚类算法

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Path-based clustering algorithms usually generate clusters by optimizing a criterion function. Most of state-of-the-art optimization methods give a solution close to the global optimum. By analyzing the minimax distance, we find that cluster centers have the minimum density in their own clusters. Inspired by this, we propose an improved path-based clustering algorithm (IPC) by mining the cluster centers of the dataset. IPC solves this problem by the process of elimination since it is difficult to mine these cluster centers directly. The algorithm can achieve the global optimum withinO(n2). Experimental results on synthetic datasets show that IPC not only can recognize all kinds of clusters regardless of their shapes, sizes and densities, but also is robust against noises and outliers in the data. More importantly, IPC needs only one parameter (i.e., the number of clusters). Comparing IPC with other clustering algorithms on the real datasets, the experimental results show that IPC outperforms compared clustering algorithms.
机译:基于路径的聚类算法通常通过优化标准函数来生成聚类。大多数最先进的优化方法都能提供接近全局最优的解决方案。通过分析最小最大距离,我们发现聚类中心在自己的聚类中具有最小的密度。受此启发,我们通过挖掘数据集的聚类中心,提出了一种改进的基于路径的聚类算法(IPC)。 IPC通过消除过程解决了这个问题,因为很难直接开采这些集群中心。该算法可以在O(n2)内实现全局最优。综合数据集上的实验结果表明,IPC不仅可以识别各种类型的簇,无论它们的形状,大小和密度如何,而且对于数据中的噪声和异常值都具有较强的鲁棒性。更重要的是,IPC只需要一个参数(即群集数)。将IPC与真实数据集上的其他聚类算法进行比较,实验结果表明IPC优于聚类算法。

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