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首页> 外文期刊>Applied computational intelligence and soft computing >Algo-Trading Strategy for Intraweek Foreign Exchange Speculation Based on Random Forest and Probit Regression
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Algo-Trading Strategy for Intraweek Foreign Exchange Speculation Based on Random Forest and Probit Regression

机译:基于随机林和探测回归的Introveek外汇探测的Ilgo交易策略

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摘要

In the Forex market, the price of the currencies increases and decreases rapidly based on many economic and political factors such as commercial balance, the growth index, the inflation rate, and the employment indicators. Having a good strategy to buy and sell can make a profit from the above changes. A successful strategy in Forex should take into consideration the relation between benefits and risks. In this work, we propose an intraweek foreign exchange speculation strategy for currency markets based on a combination of technical indicators. This system has a two-level decision and is composed of the Probit regression model and rules discovery using Random Forest. There are two minimum requirements for a trading strategy: a rule to enter the market and a rule to exit it. Our proposed system, to enter the currency market, should validate two conditions. First, it should validate Random Forest access rules over the following week while in the second one the predicted value of the next day using Probit should be positive. To exit the currency market just one negative warning from Probit or Random Forest is enough. This system was used to develop dynamic portfolio trading systems. The profitability of the model was examined for USD/(EUR, JYN, BRP) variation within the period from January 2014 to January 2016. The proposed system allows improving the prediction accuracy. This indicates a good prediction of the behavior market and it helps to identify the good times to enter it or to leave it.
机译:在外汇市场中,基于许多经济和政治因素,如商业平衡,增长指数,通货膨胀率和就业指标,货币的价格会增加和迅速下降。拥有良好的购买和销售策略可以从上述变化中获利。外汇的成功战略应考虑到福利与风险之间的关系。在这项工作中,我们提出了基于技术指标组合的货币市场的内部外汇拨款战略。该系统具有两个级别的决策,并由使用随机林的概率回归模型和规则发现组成。交易策略有两种最低要求:进入市场的规则以及退出它的规则。我们提出的系统,进入货币市场,应验证两个条件。首先,它应该在接下来的一周内验证随机森林访问规则,而使用概率应该是正的第二天预测值。退出货币市场只是探测或随机森林的一个负面警告就足够了。该系统用于开发动态投资组合交易系统。在2014年1月至2016年1月期间,审查了该模型的盈利能力为USD /(欧元,JYN,BRP)变体。拟议的系统允许提高预测准确性。这表明对行为市场的良好预测,它有助于确定进入它或离开它的美好时光。

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  • 来源
    《Applied computational intelligence and soft computing》 |2019年第1期|8342461.1-8342461.13|共13页
  • 作者单位

    Department of Computer Sciences Superior School of Technology Ibn Toufail University Kenitra Morocco;

    Department of Computer Sciences Faculty of Sciences and Techniques Cadi Ayyad University Marrakesh Morocco;

    Department of Computer Sciences Faculty of Sciences Med V University Rabat Morocco;

    Department of Computer Sciences Faculty of Sciences and Techniques Cadi Ayyad University Marrakesh Morocco;

    Department of Computer Sciences Faculty of Sciences Med V University Rabat Morocco;

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