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Research on the Estimating Model of the Stock Market Price Based on the LM-BP Neural Network

机译:基于LM-BP神经网络的股票市场价格估计模型研究

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Standard BP neural network is a most representative algorithm in the neural network model. But shortcomings exist in its process of application. For example: itȁ9;s hard to reach global optima, but can easily form local minimum, Low study efficiency and slow convergence rate appear because of the excessive training, the selection of the hidden layer nodes lack of theoretical guidance, in training, there is a tendency of forgetting the old samples while learning the new ones. The Levenbergȁ4;Marquardt algorithm refers to an optimization algorithm aiming at the global, whichȁ9;s very suitable for neural network training. This paper has built an estimating model of the stock market price, based on the LM-BP neural network, and carries out a prediction on the stock market price. Also this paper has made a comparison of the prediction results with the standard BP neural network model. And this has reached a profound estimating effect.
机译:标准BP神经网络是神经网络模型中最具代表性的算法。但是其应用过程中存在缺陷。例如:ȁ9;难以达到全局最优值,但很容易形成局部最小值;由于过度训练,学习效率低,收敛速度慢,隐藏层节点的选择缺乏理论指导,在训练中存在在学习新样本时会忘记旧样本的趋势。 Levenbergȁ4; Marquardt算法是针对全局的优化算法,ȁ9;非常适合于神经网络训练。本文基于LM-BP神经网络,建立了股票价格的估计模型,并对股票价格进行了预测。本文还对预测结果与标准BP神经网络模型进行了比较。这已经达到了深刻的估计效果。

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