Intuitionistic fuzzy neural network with filtering functions. An index matrix interpretation

S. Sotirov, M. Krawczak, Diana Petkova, K. Atanassov
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Abstract

Biological neurons and their connection in neural networks have motivated the creation of the architecture of artificial neural networks. In the previously considered cases, the description of the neural networks and their connections are described with standard matrices where the values for the weighting coefficients and biases are placed. By recalculating them, the artificial neural network is trained. The paper presents an approach for describing multilayer neural networks with Intuitionistic Fuzzy Index Matrix (IFIM). The neural network input was described in IFIM form, then the weight coefficients of the connections between the nodes of the input vector, and then activation functions of the neurons. The use of IFIM extends the understanding and description as well as the structure and use of multilayer neural networks.
带有过滤函数的直觉模糊神经网络。指标矩阵解释
生物神经元及其在神经网络中的联系推动了人工神经网络体系结构的产生。在前面考虑的情况下,神经网络及其连接的描述是用标准矩阵描述的,其中权重系数和偏差的值是放置的。通过重新计算,训练人工神经网络。提出了一种用直觉模糊指数矩阵(IFIM)描述多层神经网络的方法。神经网络输入以IFIM形式描述,然后是输入向量节点间连接的权重系数,最后是神经元的激活函数。IFIM的使用扩展了对多层神经网络的理解和描述,以及多层神经网络的结构和使用。
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