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Classification Using an Efficient Neuro-Fuzzy Classifier Based on Adaptive Fuzzy Reasoning Method

机译:基于自适应模糊推理方法的高效神经模糊分类器进行分类

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In this paper, a recurrent neuron-fuzzy classifier (RNFC) is proposed for use in classification applications. The compensatory fuzzy reasoning method uses adaptive fuzzy operations of neuro-fuzzy systems makes fuzzy logic systems more adaptive and effective. The recurrent network is embedded in the RNFC by adding feedback connections in the second layer, where the feedback units act as memory elements. Moreover, an online learning algorithm is proposed which can automatically construct the RNFC. There are no rules initially in the RNFC. They are created and adapted as online learning proceeds via simultaneous structure and parameter learning. Structure learning is based on the degree measure while parameter learning is based on the back propagation algorithm. The simulation results of the dynamic system modeling have shown that 1) the RNFC model converges quickly, and 2) the RNFC model improves correct classification rates.
机译:本文提出了一种经常性神经元模糊分类器(RNFC)用于分类应用。补偿模糊推理方法使用神经模糊系统的自适应模糊操作使模糊逻辑系统更加自适应和有效。通过在第二层中添加反馈连接,反馈单元充当存储器元件,通过添加反馈网络在RNFC中嵌入RNFC中。此外,提出了一种在线学习算法,其可以自动构建RNFC。 RNFC最初没有规则。它们是在线学习通过同时结构和参数学习进行的。结构学习基于学位测量,而参数学习基于后传播算法。动态系统建模的仿真结果表明,RNFC型号快速收敛,2)RNFC模型提高了正确的分类速率。

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