Computer intelligent quantitative transaction decision model based on GRU network

Yuyang He, Yuxin Yang, Deming Lei
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Abstract

We build a model that gives the best daily trading strategy only based on the day's price data. Firstly, we use the RNN neural network model as the basic model. However, we find that there will be problems such as gradient disappearance or gradient explosion when training the network due to the cumulative rise of information. So we have made improvements to use the GRU (Gated Recurrent Unit) network, which can predict the next day's price. Then, we use the Apriori data mining algorithm to preprocess data and establish a Quantitative transaction decision model. However, the obtained solution is too complex, and we carry out nonlinear fitting into an exponential trading formula. The fitting effect is better than previous results.
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基于GRU网络的计算机智能定量交易决策模型
我们建立了一个模型,该模型仅基于当天的价格数据给出最佳的每日交易策略。首先,我们使用RNN神经网络模型作为基本模型。然而,我们发现在训练网络时,由于信息的累积上升,会出现梯度消失或梯度爆炸等问题。因此,我们改进了GRU(门控循环单元)网络,它可以预测第二天的价格。然后,利用Apriori数据挖掘算法对数据进行预处理,建立定量交易决策模型。然而,所得到的解过于复杂,我们对指数交易公式进行了非线性拟合。拟合效果优于以往的结果。
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