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On the strengths of the self-updating process clustering algorithm

机译:关于自更新过程聚类算法的优势

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The self-updating process (SUP) is a clustering algorithm that stands from the viewpoint of data points and simulates the process how data points move and perform self-clustering. It is an iterative process on the sample space and allows for both time-varying and time-invariant operators. By simulations and comparisons, this paper shows that SUP is particularly competitive in clustering (i) data with noise, (ii) data with a large number of clusters, and (iii) unbalanced data. When noise is present in the data, SUP is able to isolate the noise data points while performing clustering simultaneously. The property of the local updating enables SUP to handle data with a large number of clusters and data of various structures. In this paper, we showed that the blurring mean-shift is a static SUP. Therefore, our discussions on the strengths of SUP also apply to the blurring mean-shift.
机译:自更新过程(SUP)是一种从数据点的角度出发的聚类算法,它模拟数据点如何移动和执行自聚簇的过程。这是在样本空间上进行的迭代过程,并且允许时变和时不变的运算符。通过仿真和比较,本文表明SUP在聚类(i)有噪声的数据,(ii)具有大量聚类的数据和(iii)不平衡的数据方面具有特别的竞争力。当数据中存在噪声时,SUP能够隔离噪声数据点,同时执行聚类。本地更新的属性使SUP可以处理具有大量群集的数据和各种结构的数据。在本文中,我们表明模糊均值漂移是静态SUP。因此,我们对SUP强度的讨论也适用于模糊均值漂移。

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