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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Cooperative and penalized competitive learning with application to kernel-based clustering
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Cooperative and penalized competitive learning with application to kernel-based clustering

机译:合作和惩罚性竞争学习及其在基于内核的聚类中的应用

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摘要

Competitive learning approaches with individual penalization or cooperation mechanisms have the attractive ability of automatic cluster number selection in unsupervised data clustering. In this paper, we further study these two mechanisms and propose a novel learning algorithm called Cooperative and Penalized Competitive Learning (CPCL), which implements the cooperation and penalization mechanisms simultaneously in a single competitive learning process. The integration of these two different kinds of competition mechanisms enables the CPCL to locate the cluster centers more quickly and be insensitive to the number of seed points and their initial positions. Additionally, to handle nonlinearly separable clusters, we further introduce the proposed competition mechanism into kernel clustering framework. Correspond- ingly, a new kernel-based competitive learning algorithm which can conduct nonlinear partition without knowing the true cluster number is presented. The promising experimental results on real data sets demonstrate the superiority of the proposed methods.
机译:具有个体惩罚或协作机制的竞争性学习方法在无监督数据聚类中具有自动选择聚类数的吸引力。在本文中,我们将进一步研究这两种机制,并提出一种称为合作与惩罚性竞争学习(CPCL)的新型学习算法,该算法在单个竞争性学习过程中同时实现合作和惩罚机制。这两种不同竞争机制的集成使CPCL能够更快地定位群集中心,并且对种子点的数量及其初始位置不敏感。另外,为了处理非线性可分簇,我们将所提出的竞争机制进一步引入内核聚类框架。相应地,提出了一种新的基于内核的竞争学习算法,该算法可以在不知道真实簇数的情况下进行非线性划分。在真实数据集上有希望的实验结果证明了所提出方法的优越性。

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