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Supervised IAFC Neural Network Based on the Fuzzification of Learning Vector Quantization

机译:基于学习矢量量化模糊化的IAFC监督神经网络

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In this paper, a fuzzy LVQ(Learning Vector Quantization) is proposed which is based on the fuzzification of LVQ. The proposed FLVQ(Fuzzy Learning Vector Quantization) uses the different learning rate depending on the correctness of classification. When the classification is correct, the amount of update is determined by consideration of location of the input vector relative to the decision boundary. When the classification is not correct, the amount of update is determined by the degree of belongingness of the input vector to the winning class. The supervised IAFC(Integrated Adaptive Fuzzy Clustering) neural network 3, which uses FLVQ, is introduced in this paper. The supervised IAFC neural network 3 is both stable and plastic because it uses the control structure which is similar to that of Adaptive Resonance Theory(ART)-l neural network. We used iris data set to compare the performance of the supervised IAFC neural network 3 with those of LVQ algorithm and backpropagation neural network. The supervised IAFC neural network 3 yielded fewer misclassifications than LVQ algorithm and backpropagation neural network.
机译:本文提出了一种基于LVQ模糊化的模糊LVQ(Learning Vector Quantization,学习矢量量化)算法。提出的FLVQ(模糊学习矢量量化)根据分类的正确性使用不同的学习率。当分类正确时,通过考虑输入向量相对于决策边界的位置来确定更新量。当分类不正确时,更新量由输入向量对获胜类别的归属程度确定。介绍了使用FLVQ的有监督的IAFC(集成自适应模糊聚类)神经网络3。监督的IAFC神经网络3既稳定又可塑性,因为它使用的控制结构类似于自适应共振理论(ART)-1神经网络。我们使用虹膜数据集将监督的IAFC神经网络3与LVQ算法和反向传播神经网络的性能进行比较。与LVQ算法和反向传播神经网络相比,受监督的IAFC神经网络3产生的错误分类更少。

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