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Design of Genetic Fuzzy Set-Based Polynomial Neural Networks with the Aid of Information Granulation

机译:基于遗传模糊集基多项式神经网络的设计借助于信息造粒

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In this paper, we introduce new fuzzy-neural networks -Fuzzy Set -based Polynomial Neural Networks (FSPNN) with a new fuzzy set-based polynomial neuron (FSPN) whose fuzzy rules include the information granules obtained through Information Granulation. We investigate the proposed networks from two different aspects to improve the performance of the fuzzy-neural networks. First, We have developed genetic optimization using Genetic Algorithms to find the optimal structure for fuzzy-neural networks. Second, we have been interested in the architecture of fuzzy rules that mimic the real world, namely sub-model composing the fuzzy-neural networks. We adopt fuzzy set-based fuzzy rules as substitute for fuzzy relation-based fuzzy rules and apply the concept of Information Granulation to the proposed fuzzy set-based rules. The performance of genetically optimized FSPNN (gFSPNN) with fuzzy set-based neural neuron (FSPN) involving information granules is quantified through experimentation.
机译:在本文中,我们引入了新的模糊神经网络 - 基于基于模糊的多项式神经网络(FSPNN)的新模糊神经网络 - 基于基于模糊的多项式神经元(FSPN),其模糊规则包括通过信息造粒获得的信息颗粒。我们调查了两个不同方面的建议网络,以提高模糊神经网络的性能。首先,我们利用遗传算法开发了遗传优化,以找到模糊神经网络的最佳结构。其次,我们一直对模糊规则的架构感兴趣,模仿现实世界,即组成模糊神经网络的子模型。我们采用基于模糊的模糊的模糊规则作为基于模糊关系的模糊规则,并将信息造粒的概念应用于所提出的模糊集的规则。通过实验量化了涉及信息颗粒的模糊基于基于基于神经神经元(FSPN)的遗传优化FSPNN(GFSPNN)的性能。

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