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L-P FUZZY ARTMAP NEURAL NETWORK ARCHITECTURE

机译:L-P模糊艺术图神经网络架构

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摘要

In this paper, an L-p based Fuzzy ARTMAP Neural Network is presented. The category choice of this network is based on the L-p norm. Geometrical properties of this architecture are presented. Comparisons between this category choice and the category choice of the Fuzzy ARTMAP are illustrated. And simulation results on the databases taken from the UCI repository are performed. It will be shown that using the L-p norm is geometrically more attractive. It will operate directly on the input patterns without the need for doing any preprocessing. It should be noted that the Fuzzy ARTMAP architecture requires two preprocessing steps: normalization and complement coding. Simulation results on different databases show the good generalization performance of the L-p Fuzzy ARTMAP compared to the performance of Fuzzy ARTMAP.
机译:本文提出了一种基于L-P的模糊艺术图神经网络。该网络的类别选择基于L-P常态。提出了该架构的几何特性。说明了该类别选择与模糊艺术图的类别选择之间的比较。并执行从UCI存储库所采取的数据库上的仿真结果。将显示,使用L-P标准是几何上更具吸引力的。它将直接在输入模式上运行,而无需进行任何预处理。应注意,模糊艺术图架构需要两个预处理步骤:归一化和补充编码。不同数据库的仿真结果显示了L-P模糊艺术图的良好泛化性能与模糊艺术图的性能相比。

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