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The Application of Imperialist Competitive Algorithm based on Chaos Theory in Perceptron Neural Network

机译:帝国主义竞争算法在寒武系统神经网络中的混沌理论中的应用

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In this paper, the weights of a Neural Network using Chaotic Imperialist Competitive Algorithm are updated. A three-layered Perseptron Neural Network applied for prediction of the maximum worth of the stocks changed in TEHRAN'S bourse market. We trained this neural network with CICA, ICA, PSO and GA algorithms and compared the results with each other. The consideration of the results showed that the training and test error of the network trained by the CICA algorithm has been reduced in comparison to the other three methods.
机译:本文更新了使用混沌帝国主义竞争算法的神经网络的权重。在德黑兰的交易市场中申请了一种用于预测股票最大价值的三层有眩光神经网络。我们用CICA,ICA,PSO和GA算法培训了这种神经网络,并将结果与​​彼此进行了比较。结果表明,与其他三种方法相比,由CICA算法训练的网络的训练和测试误差已经减少。

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