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Implementation of neuro-fuzzy systems through interval mathematics

机译:通过区间数学实现神经模糊系统

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Neural network performance is dependent on the quality and quantity of training samples presented to the network. In cases where training data is sparse or not fully representative of the range of values possible, incorporation of fuzzy techniques optimizes performance. That is, while neural networks are excellent classifiers, introducing fuzzy techniques allows the classification of imprecise data. The neuro-fuzzy system presented here is a neural network that processes fuzzy numbers. It uses interval mathematics in its implementation. The neuro-fuzzy system uses a standard feedforward network as its basis. The novelty lies in the fact that it processes fuzzy numbers. Specifically, /spl alpha/-cuts of the fuzzy numbers are represented by interval vectors. The backpropagation with momentum learning rule is derived for interval variables. The resulting equations are then employed for training of the system. Thus, the input and output vectors are interval vectors, and the neuronal operations are modified to deal with the interval numbers. Summation of the resultant /spl alpha/-cuts (interval numbers) provide the final fuzzy valued output. Experimental results show that the neuro-fuzzy system's performance is vastly improved over a standard neural network and other existing methods for speaker-independent speech recognition, an extremely difficult classification problem.
机译:神经网络的性能取决于呈现给网络的训练样本的质量和数量。如果训练数据稀疏或不能完全代表可能的取值范围,则采用模糊技术可以优化性能。也就是说,虽然神经网络是出色的分类器,但是引入模糊技术可以对不精确的数据进行分类。这里介绍的神经模糊系统是一个处理模糊数的神经网络。它在实现中使用区间数学。神经模糊系统使用标准的前馈网络作为基础。新颖之处在于它处理模糊数。具体来说,模糊数的/ spl alpha / -cuts由间隔向量表示。利用动量学习规则进行反向传播是针对区间变量的。然后将所得方程式用于系统训练。因此,输入和输出向量是间隔向量,并且修改了神经元操作以处理间隔号。所得的/ spl alpha / -cuts(区间数)的总和提供最终的模糊值输出。实验结果表明,与标准的神经网络和其他现有的独立于说话者的语音识别方法相比,神经模糊系统的性能得到了极大的提高,这是一个非常困难的分类问题。

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