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Self-organizing leader clustering in a neural network using a fuzzy learning rule

机译:使用模糊学习规则的神经网络中自组织领导者聚类

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Abstract: This paper describes a modular, unsupervised neural network architecture that can be used for data clustering and classification. The adaptive fuzzy leader clustering (AFLC) architecture is a hybrid neural-fuzzy system that learns on-line in a stable and efficient manner. The system consists of a fuzzy K-means learning rule embedded within a control structure similar to that found in the adaptive resonance theory (ART-1) network. AFLC adaptively clusters analog inputs into classes without a priori knowledge of the entire data set or of the number of clusters present in the data. The classification of an input takes place in a two stage process: a simple competitive stage and a euclidean metric comparison stage. Due to the modular design of AFLC, the euclidean metric can be replaced with various other metric for improved performance in a particular problem. The AFLC algorithm and operating characteristics are described, and the algorithm is compared to fuzzy K-means for both computer generated and real data. !12
机译:摘要:本文介绍了一种可用于数据聚类和分类的模块化,无监督的神经网络体系结构。自适应模糊领导者聚类(AFLC)体系结构是一种混合的神经模糊系统,可以稳定高效地进行在线学习。该系统由嵌入在类似于自适应共振理论(ART-1)网络中发现的控制结构内的模糊K均值学习规则组成。 AFLC将模拟输入自适应地分为类,而无需先验知识整个数据集或数据中存在的簇数。输入的分类分为两个阶段:简单竞争阶段和欧氏度量比较阶段。由于AFLC的模块化设计,欧几里得度量可以用其他各种度量代替,以改善特定问题中的性能。描述了AFLC算法和操作特性,并将该算法与模糊K均值进行了比较,用于计算机生成的数据和实际数据。 !12

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