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Generalization of Quadratic Regularized and Standard Fuzzy c-Means Clustering with Respect to Regularization of Hard c-Means

机译:关于硬c均值正则化的二次正则化和标准模糊c均值聚类的推广

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In this paper, the quadratic regularized and standard fuzzy c-means clustering algorithms (qFCM and sFCM) are generalized with respect to hard c-means (HCM) regularization. First, qFCM is generalized from quadratic regularization to power regularization. The relation between this generalization and sFCM is then compared to the relation between other pairs of methods from the perspective of HCM regularization, and, based on this comparison, sFCM is generalized through the addition of a fuzzification parameter. In this process, we see that other methods can be constructed by combining HCM and a regularization term that can either be weighted by data-cluster dissimilarity or not. Furthermore, we see numerically that the existence or nonexistence of this weighting determines the property of these methods' classification rules for an extremely large datum. We also note that the problem of non-convergence in some methods can be avoided through further modification.
机译:本文针对硬c均值(HCM)正则化,归纳了二次正则化和标准模糊c均值聚类算法(qFCM和sFCM)。首先,将qFCM从二次正则化推广到幂正则化。然后,从HCM正则化的角度,将该泛化和sFCM之间的关系与其他方法对之间的关​​系进行比较,并基于此比较,通过添加模糊化参数来泛化sFCM。在这个过程中,我们看到可以通过组合HCM和可以由数据集群不相似加权的正则化项来构造其他方法。此外,从数字上我们可以看到,此加权的存在或不存在决定了这些方法的分类规则对于一个非常大的基准的性质。我们还注意到,通过进一步修改可以避免某些方法中的不收敛问题。

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