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Predictability and forecasting automotive price based on a hybrid train algorithm of MLP neural network

机译:基于MLP神经网络混合训练算法的汽车价格可预测性与预测。

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In this paper, using the Hurst exponent value H, we first show that the automotive price in Iran Khodro Company (IRAN) is predictable and therefore a good forecasting can be done using neural networks. We then introduce a new global and fast hybrid multilayer perceptron neural network (MLP-NN) in order to forecast the automotive price. In our new framework, we hybridize the genetic algorithm (GA) and least square (LS) method in order to train the connected weights of the network, which leads us to have a global and fast network. To do so, the connected weights between input and hidden layers are trained by GA and the connected weights between the hidden and output layers are trained by LS method. We finally apply our new MLP-NN to forecast the automotive price in Iran Khodro Company, which is the biggest automotive manufacturing in IRAN. The results are well promising compared with the cases when we apply the GA and LS individually. We also compare the results with the case when we employ the gradient-based optimization techniques such as Levenberg–Marquardt method as well as some heuristic algorithms such as extended tabu search algorithm instead of LS method and hybridization of MLP-LM with GA.
机译:在本文中,我们首先使用Hurst指数值H证明了伊朗Khodro公司(IRAN)的汽车价格是可预测的,因此可以使用神经网络进行良好的预测。然后,我们引入了一个新的全球快速混合多层感知器神经网络(MLP-NN),以预测汽车价格。在我们的新框架中,我们混合了遗传算法(GA)和最小二乘(LS)方法,以训练网络的连接权重,从而使我们拥有一个快速的全局网络。为此,GA训练输入层和隐藏层之间的连接权重,而LS方法训练隐藏层和输出层之间的连接权重。最后,我们使用新的MLP-NN预测伊朗Khodro公司的汽车价格,该公司是伊朗最大的汽车制造业。与我们分别应用GA和LS的情况相比,结果是很有希望的。我们还将结果与使用基于梯度的优化技术(如Levenberg-Marquardt方法)以及一些启发式算法(如扩展禁忌搜索算法而不是LS方法)以及MLP-LM与GA混合的启发式算法进行比较。

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