Pal S K, Mitra S
Electron and Commun. Sci. Unit, Indian Stat. Inst., Calcutta.
IEEE Trans Neural Netw. 1992;3(5):683-97. doi: 10.1109/72.159058.
A fuzzy neural network model based on the multilayer perceptron, using the backpropagation algorithm, and capable of fuzzy classification of patterns is described. The input vector consists of membership values to linguistic properties while the output vector is defined in terms of fuzzy class membership values. This allows efficient modeling of fuzzy uncertain patterns with appropriate weights being assigned to the backpropagated errors depending upon the membership values at the corresponding outputs. During training, the learning rate is gradually decreased in discrete steps until the network converges to a minimum error solution. The effectiveness of the algorithm is demonstrated on a speech recognition problem. The results are compared with those of the conventional MLP, the Bayes classifier, and other related models.
描述了一种基于多层感知器的模糊神经网络模型,该模型使用反向传播算法,能够对模式进行模糊分类。输入向量由语言属性的隶属度值组成,而输出向量则根据模糊类隶属度值来定义。这使得能够对模糊不确定模式进行有效建模,根据相应输出处的隶属度值为反向传播误差分配适当的权重。在训练期间,学习率以离散步骤逐渐降低,直到网络收敛到最小误差解。该算法的有效性在一个语音识别问题上得到了证明。将结果与传统多层感知器、贝叶斯分类器及其他相关模型的结果进行了比较。