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Model-Based Clustering by Probabilistic Self-Organizing Maps

机译:概率自组织映射的基于模型的聚类

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In this paper, we consider the learning process of a probabilistic self-organizing map (PbSOM) as a model-based data clustering procedure that preserves the topological relationships between data clusters in a neural network. Based on this concept, we develop a coupling-likelihood mixture model for the PbSOM that extends the reference vectors in Kohonen's self-organizing map (SOM) to multivariate Gaussian distributions. We also derive three expectation-maximization (EM)-type algorithms, called the SOCEM, SOEM, and SODAEM algorithms, for learning the model (PbSOM) based on the maximum-likelihood criterion. SOCEM is derived by using the classification EM (CEM) algorithm to maximize the classification likelihood; SOEM is derived by using the EM algorithm to maximize the mixture likelihood; and SODAEM is a deterministic annealing (DA) variant of SOCEM and SOEM. Moreover, by shrinking the neighborhood size, SOCEM and SOEM can be interpreted, respectively, as DA variants of the CEM and EM algorithms for Gaussian model-based clustering. The experimental results show that the proposed PbSOM learning algorithms achieve comparable data clustering performance to that of the deterministic annealing EM (DAEM) approach, while maintaining the topology-preserving property.
机译:在本文中,我们将概率自组织图(PbSOM)的学习过程视为一种基于模型的数据聚类过程,该过程保留了神经网络中数据聚类之间的拓扑关系。基于此概念,我们为PbSOM开发了一个耦合似然混合模型,该模型将Kohonen的自组织映射(SOM)中的参考向量扩展到了多元高斯分布。我们还推导了三种期望最大化(EM)类型的算法,分别称为SOCEM,SOEM和SODAEM算法,用于基于最大似然准则来学习模型(PbSOM)。 SOCEM是通过使用分类EM(CEM)算法来最大化分类可能性而得出的; SOEM通过使用EM算法来最大化混合可能性; SODAEM是SOCEM和SOEM的确定性退火(DA)变体。此外,通过缩小邻域大小,可以将SOCEM和SOEM分别解释为用于基于高斯模型聚类的CEM和EM算法的DA变体。实验结果表明,所提出的PbSOM学习算法在保持拓扑保留特性的同时,可以达到与确定性退火EM(DAEM)方法相当的数据聚类性能。

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