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Input space selective fuzzification in intuitionistic semi fuzzy-neural network

机译:直觉半模糊神经网络中的输入空间选择性模糊化

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In this paper, the influence of the selective fuzzification of the input space in Intuitionistic Semi-Fuzzy Neural Network (ISFNN) is investigated. The ISFNN represents a structure modification of the classical fuzzy-neural approach where selective fuzzification as a means to reduce the number of the generated fuzzy rules is proposed, thus expected to reduce the number of the associated learning parameters and to achieve a degree of computational simplicity. On the other hand, the potentials of the network are supplemented by intuitionistic fuzzy logic, in order to handle uncertain data variations. As a learning procedure for the proposed structure, a two-step gradient descent algorithm is employed. To investigate the influence of input space fuzzificaton, several test experiments in modeling of a two benchmark chaotic systems - Mackey-Glass and Rossler chaotic time series are made.
机译:本文研究了直觉式半模糊神经网络(ISFNN)中输入空间的选择性模糊化的影响。 ISFNN代表经典模糊神经方法的结构修改,其中提出了选择性模糊化方法,以减少生成的模糊规则的数量,因此有望减少相关学习参数的数量并实现一定程度的计算简单性。另一方面,直觉模糊逻辑补充了网络的潜力,以便处理不确定的数据变化。作为提出的结构的学习过程,采用了两步梯度下降算法。为了研究输入空间模糊化的影响,在两个基准混沌系统(Mackey-Glass和Rossler混沌时间序列)的建模中进行了一些测试实验。

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