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A Stock Trend Forecast Algorithm Based on Deep Neural Networks

机译:基于深神经网络的股票趋势预测算法

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As a recognized complex dynamic system, the stock market has many influencing factors, such as nonstationarity, nonlinearity, high noise, and long memory. It is difficult to explain it simply through mathematical models. Therefore, the analysis and prediction of the stock market have been a very challenging job since long time. Therefore, this paper adopts an encoder-decoder model of attention mechanism, adding attention mechanism from two aspects of feature and time. Both encoder and decoder use LSTM neural network. This method solves two problems in time series prediction; the first problem is that multiple input features have different degrees of influence on the target sequence, the feature attention mechanism is used to deal with this problem, and the weights of different input features can be obtained. A more robust feature association relationship is obtained; the second problem is that the data before and after the sequence have a strong time correlation. The time attention mechanism is used to deal with this problem, and the weights at different time points can be obtained to obtain more robustness and good timing dependencies. The simulation and experimental results show that the introduction of the attention mechanism can obtain lower forecast errors, which proves the effectiveness of the model in dealing with stock forecasting problems.
机译:作为一个公认的复杂动态系统,股票市场具有许多影响因素,如非运动,非线性,高噪音和长记忆。很难通过数学模型来解释它。因此,股市的分析和预测很长一段时间以来一直是一个非常具有挑战性的工作。因此,本文采用了一种注意力机制的编码器 - 解码器模型,从特征和时间的两个方面增加了注意力机制。编码器和解码器都使用LSTM神经网络。该方法在时间序列预测中解决了两个问题;第一问题是多个输入特征对目标序列具有不同程度的影响,使用注意机制来处理该问题,并且可以获得不同输入特征的权重。获得更强大的特征关联关系;第二个问题是序列之前和之后的数据具有很强的时间相关性。注意机制用于处理该问题的时间,可以获得不同时间点的权重以获得更多的鲁棒性和良好的时序依赖性。仿真和实验结果表明,引入注意机制可以获得较低的预测误差,这证明了该模型在处理库存预测问题方面的有效性。

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