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Fuzzy Inference Network with Mamdani Fuzzy Inference System

机译:具有Mamdani模糊推理系统的模糊推理网络

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In the modern era, the amount of data generated is increasing at an exponential rate. The generated data has both numeric as well as linguistic form. Learning or extracting relevant information from these types of data is a major challenge for researchers. In this chapter, we have proposed a generic architecture of a network built from Mamdani fuzzy inference system as its basic building blocks and it tries to learn the information from data. Each node of the network acts as a complete Mamdani fuzzy inference system mapping numeric as well as linguistic information of the data from input to output in terms of linguistic rule-based inference. Parameters of the input fuzzy membership functions appearing in the premise parts and output fuzzy membership functions appearing in consequent parts of the rules in the fuzzy rule base of each node in the network constitute overall parameters of the network. The proposed model is trained using advanced optimization techniques to optimize the network parameters for better performance. The effectiveness of the trained model is tested on two different datasets. The proposed approach is compared with the Takagi-Sugeno Fuzzy Inference Network and feed-forward artificial neural network with similar architecture.
机译:在现代时代,所产生的数据量以指数速率增加。生成的数据具有数字以及语言形式。从这些类型的数据学习或提取相关信息是研究人员的主要挑战。在本章中,我们提出了一种由Mamdani模糊推理系统构建的网络的通用架构作为其基本构建块,并且它试图从数据中学习信息。网络的每个节点充当完整的Mamdani模糊推理系统映射数字以及根据基于语言规则的推断的输入到输出的数据的语言信息。在网络中出现在网络中每个节点的模糊规则库中出现的前提部分和输出模糊会员函数中出现的输入模糊会员函数的参数构成了网络的整体参数。所提出的模型采用先进的优化技术培训,以优化网络参数以实现更好的性能。训练模型的有效性在两个不同的数据集上进行了测试。将所提出的方法与Takagi-Sugeno模糊推理网络和前馈人工神经网络进行比较,具有类似的架构。

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