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Comparing BP and RBF Neural Network for Forecasting the Resident Consumer Level by MATLAB

机译:BP与RBF神经网络的比较,通过MATLAB预测居民消费水平

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This paper introduced BP neural network and RBF Network's basic theory, compared these two characteristics of the network structure, and applied to the resident consumer level forecasts. In RBF neural network forecasting, by changing the size of the distribution density of RBF, adjusted the forecast accuracy of the network. Compared the two neural network forecast results by MATLAB simulation. From the quantitative point proved that the RBF neural network is more efficient and accurate than BP neural network in forecasting the resident consumer level, and thus more suitable for practical application in guiding the design of neural network.
机译:本文介绍了BP神经网络和RBF网络的基本理论,比较了网络结构的这两个特征,并将其应用于居民消费水平的预测。在RBF神经网络预测中,通过更改RBF的分布密度的大小,调整了网络的预测精度。通过MATLAB仿真比较了两个神经网络的预测结果。从定量的角度证明,RBF神经网络在预测居民消费水平方面比BP神经网络更有效,更准确,因此更适合于指导神经网络设计的实际应用。

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