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Real Time Updating Genetic Network Programming For Adapting To The Change Of Stock Prices

机译:适应股票价格变化的实时更新遗传网络程序设计

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摘要

The key in stock trading model is to take the right actions for trading at the right time, primarily based on the accurate forecast of future stock trends. Since an effective trading with given information of stock prices needs an intelligent strategy for the decision making, we applied Genetic Network Programming (GNP) to creating a stock trading model. In this paper, we propose a new method called Real Time Updating Genetic Network Programming (RTU-GNP) for adapting to the change of stock prices. There are three important points in this paper: First, the RTU-GNP method makes a stock trading decision considering both the recommendable information of technical indices and the candlestick charts according to the real time stock prices. Second, we combine RTU-GNP with a Sarsa learning algorithm to create the programs efficiently. Also, sub-nodes are introduced in each judgment and processing node to determine appropriate actions (buying/selling) and to select appropriate stock price information depending on the situation. Third, a Real Time Updating system has been firstly introduced in our paper considering the change of the trend of stock prices. The experimental results on the Japanese stock market show that the trading model with the proposed RTU-GNP method outperforms other models without real time updating. We also compared the experimental results using the proposed method with Buy&Hold method to confirm its effectiveness, and it is clarified that the proposed trading model can obtain much higher profits than Buy&Hold method.
机译:股票交易模型的关键是要在正确的时间采取正确的操作,主要是基于对未来股票趋势的准确预测。由于使用给定的股票价格信息进行有效的交易需要一个明智的决策策略,因此我们应用了遗传网络编程(GNP)来创建股票交易模型。在本文中,我们提出了一种新的方法,称为实时更新遗传网络编程(RTU-GNP),以适应股票价格的变化。本文有三点要点:首先,RTU-GNP方法根据实时股票价格同时考虑技术指标的推荐信息和烛台图来做出股票交易决策。其次,我们将RTU-GNP与Sarsa学习算法结合起来,可以高效地创建程序。此外,在每个判断和处理节点中都引入了子节点,以确定适当的操作(购买/出售)并根据情况选择适当的股票价格信息。第三,考虑到股价趋势的变化,本文首先引入了实时更新系统。在日本股票市场上的实验结果表明,采用RTU-GNP方法的交易模型在不进行实时更新的情况下优于其他模型。我们还比较了所提出的方法与“买入/持有”方法的实验结果,以证实其有效性,并澄清了所提出的交易模型比“买入/持有”方法可以获得更高的利润。

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