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Data density-based clustering for regularized fuzzy neural networks based on nullneurons and robust activation function

机译:基于Nullneurons的正规模糊神经网络基于数据密度的聚类

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This paper proposes the use of fuzzification functions based on clustering of data based on their density to perform the granularization of the input space. The neurons formed in this layer are built through the density centers obtained with the input data of the model. In the second layer, the nullneurons aggregate the generated neurons in the first layer and allow the creation of if/then fuzzy rules. Even in the second layer, a regularization function is activated to determine the essential nullneurons. The concepts of extreme learning machine generate the weights used in the third layer, but with a regularizing factor. Finally, in the third layer, represented by an artificial neural network, it has a single neuron that the activation function uses robust functions to carry out the model. To verify the new training approach for fuzzy neural networks, we performed real and synthetic database tests for the pattern classification, which led to the conclusion that the data density-based approach the use of regularization factors in the second model layer and neurons with more robust activation functions allowed better results compared to other classifiers that use the concepts of extreme learning machine.
机译:本文提出了基于基于数据的群体的基于数据的簇来执行输入空间的粒度的模糊功能。在该层中形成的神经元通过使用模型的输入数据获得的密度中心构成。在第二层中,排烟在第一层中聚集生成的神经元并允许创建IF /那么模糊规则。即使在第二层中,也会激活正则化功能以确定基本的空穴。极端学习机的概念生成第三层中使用的权重,但具有正则化因子。最后,在由人工神经网络表示的第三层中,它具有单个神经元,即激活函数使用鲁棒功能来执行模型。为了验证模糊神经网络的新培训方法,我们对模式分类进行了实际和合成的数据库测试,这导致了基于数据密度的方法在第二模型层和神经元中使用正则化因子的结论与使用极端学习机的概念的其他分类器相比,激活功能允许更好的结果。

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