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Time series prediction of stock price using deep belief networks with Intrinsic Plasticity

机译:利用深度信仰网络的股价时间序列预测内在可塑性

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In recent years, the stock market plays an important role, which has attracted more and more attentions. The key problem of the stock market prediction is how to design a method to improve the prediction performance. As we know, the biggest challenge is that the stock time series is essentially dynamic, nonlinear, complicated, nonparametric and chaotic. In this paper, we propose a novel method to predict the stock closing price based on the deep belief networks (DBNs) with intrinsic plasticity. In the experiments, the stock in S&P 500 is used to examine the performance. The back propagation algorithm is used for output training to make minor adjustments of structure parameters. The intrinsic plasticity (IP) is also applied into the network to make it have adaptive ability. It is believed that IP learning for adaptive adjustment of neuronal response to external inputs is beneficial for maximizing the input-output mutual information. Our results show that the application of IP learning can remarkably improve the prediction performance. Moreover, the effects of two kinds of IP rules on the performance of prediction are examined. Compared with Triesch's IP and without IP, DBN with Li's IP learning has much better prediction performance than the others. These results may have important implications on the modeling of neural network for complex time series prediction.
机译:近年来,股市发挥着重要作用,吸引了越来越多的关注。股市预测的关键问题是如何设计一种提高预测性能的方法。正如我们所知,最大的挑战是库存时间序列基本上是动态的,非线性,复杂,非参数和混乱。在本文中,我们提出了一种基于深度信仰网络(DBNS)的新方法来预测股票闭合价格,具有内在的可塑性。在实验中,S&P 500中的库存用于检查性能。后传播算法用于输出培训,以进行次要结构参数的微小调整。内在塑性(IP)也应用于网络中以使其具有自适应能力。据信,IP学习用于对外部输入的神经元响应的自适应调整是有益的,是最大化输入输出相互信息。我们的研究结果表明,知识产权学习的应用可以显着提高预测性能。此外,检查了两种IP规则对预测性能的影响。与Triesch的IP和没有IP相比,DBN与Li的知识产权学习比其他人的预测性能更好。这些结果可能对复杂时间序列预测的神经网络建模具有重要意义。

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