L2正则化与l1正则化容错模糊c均值聚类的比较

Y. Hamasuna, Y. Endo, S. Miyamoto
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引用次数: 7

摘要

在本文中,我们将提出两种带有正则化项的容错模糊c均值聚类。一个是l2正则化项,另一个是l1正则化项。引入聚类容忍的概念,从更灵活地处理数据的角度提出了容忍模糊c均值聚类。在容差模糊c均值聚类中,利用容差向量约束约束容差向量的上界。本文用正则化项来代替约束条件。首先,介绍了集群容忍的概念。其次,提出了带有正则化项的容忍模糊c均值聚类的优化问题。第三,导出了这些优化问题的最优解。第四,基于显式最优解构造新的聚类算法。最后,通过数值算例验证了算法的有效性。
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Comparison of tolerant fuzzy c-means clustering with L2- and L1-regularization
In this paper, we will propose two types of tolerant fuzzy c-means clustering with regularization terms. One is L2-regularization term and the other is L1-regularization one for tolerance vector. Introducing a concept of clusterwise tolerance, we have proposed tolerant fuzzy c-means clustering from the viewpoint of handling data more flexibly. In tolerant fuzzy c-means clustering, a constraint for tolerance vector which restricts the upper bound of tolerance vector is used. In this paper, regularization terms for tolerance vector are used instead of the constraint. First, the concept of clusterwise tolerance is introduced. Second, optimization problems for tolerant fuzzy c-means clustering with regularization term are formulated. Third, optimal solutions of these optimization problems are derived. Fourth, new clustering algorithms are constructed based on the explicit optimal solutions. Finally, effectiveness of proposed algorithms is verified through numerical examples.
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