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Unsupervised and supervised data clustering with competitive neural networks

机译:具有竞争性神经网络的无监督和监督数据聚类

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The authors discuss objective functions for unsupervised and supervised data clustering and the respective competitive neural networks which implement these clustering algorithms. They propose a cost function for unsupervised and supervised data clustering which comprises distortion costs, complexity costs and supervision costs. A maximum entropy estimation of the clustering cost function yields an optimal number of clusters, their positions and their cluster probabilities. A three-layer neural network with a winner-take-all connectivity in the clustering layer implements the proposed algorithm.
机译:作者讨论了非监督和监督数据聚类的目标函数,以及实现这些聚类算法的各个竞争性神经网络。他们提出了用于无监督和有监督的数据聚类的成本函数,其中包括失真成本,复杂性成本和监管成本。聚类成本函数的最大熵估计产生最佳数目的聚类,它们的位置和它们的聚类概率。在聚类层中具有赢家通吃的连通性的三层神经网络实现了所提出的算法。

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