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Cascade Architectures of Fuzzy Neural Networks

机译:模糊神经网络的级联架构

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摘要

This study is concerned with cascade architectures of fuzzy neural networks. These networks exhibit three interesting and practically appealing features: (i) come with sound and transparent logic characteristics by being developed with the aid of AND and OR fuzzy neurons and subsequently logic processors (LPs), (ii) possess significant learning abilities and in this way fall in the realm of neuro-fuzzy architectures, and (iii) exhibit an evident hierarchical structure owing to the cascade of the LPs. We discuss main functional properties of the model and relate them to its form of cascade-type of systems formed as a stack of LPs. The construction of the systems of this form calls for some structural optimization that is realized in the realm of genetic optimization. The structure of the network that deals with a selection of a subset of input variables and their distribution across the individual LPs is optimized with the use of genetic algorithms (GAs). The chromosomes encode the order of the variables as well as include the parameters (connections) of the neurons. We discuss various schemes of genetic optimization (both a two-level and single-level GA) and gradient-based learning aimed at further refinement of the connections of the neurons. We elaborate on the interpretation aspects of the network and show how this leads to a Boolean or multivalued logic description of the experimental data. A number of numeric data sets are discussed with respect to the performance of the constructed networks and their interpretability.
机译:这项研究与模糊神经网络的级联体系结构有关。这些网络展现出三个有趣且实用的特征:(i)通过借助AND和OR模糊神经元及其后的逻辑处理器(LP)进行开发而具有健全且透明的逻辑特征,(ii)具有重要的学习能力,并且在此方面这种方式落入了神经模糊架构的领域,并且(iii)由于LP的级联,表现出明显的层次结构。我们讨论了模型的主要功能属性,并将它们与以LP堆栈形式形成的级联类型系统的形式相关联。这种形式的系统的构建需要在遗传优化领域中实现的一些结构优化。使用遗传算法(GA)优化处理输入变量子集的选择及其在各个LP中的分布的网络结构。染色体对变量的顺序进行编码,并包括神经元的参数(连接)。我们讨论了各种遗传优化方案(两级和单级GA)和基于梯度的学习,旨在进一步细化神经元的连接。我们详细介绍了网络的解释方面,并说明了它如何导致对实验数据进行布尔或多值逻辑描述。关于构造的网络的性能及其可解释性,讨论了许多数字数据集。

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