Trading Strategies Optimization by Genetic Algorithm under the Directional Changes Paradigm

Ozgur Salman, Michael Kampouridis, D. Jarchi
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引用次数: 2

Abstract

The subject of financial forecasting has been re-searched for decades, and the driver behind its measured data has been fuelled by the selection of physical time series, which summarize data using fixed time intervals. For instance, time-series for daily stock data would be profiled at 252 points in one year. However, this episodic style neglects the important events, or price changes that occur between two intervals. Thus, we use Directional Changes (DC) as an event-based series, which is an alternative way to record price movements. In DC, unlike time-series methods, time intervals are constituted by price changes. The unique feature that decides the price change to be considered as a significant is called a threshold θ. The objective of our paper is to create DC-based trading strategies, and then optimize them using a Genetic Algorithm (GA). To construct such strategies, we use DC-based indicators and scaling laws that have been empirically identified under DC summaries. We first propose four novel DC-based trading strategies and then combine them with existing DC-based strategies and finally optimize them via the GA. We conduct trading experiments over 44 stocks. Results show that the GA-optimized strategies are able to generate new and profitable trading strategies, significantly outperforming the individual DC-based strategies, as well as a buy and sell benchmark.
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方向性变化范式下遗传算法的交易策略优化
金融预测这一主题已经被研究了几十年,其测量数据背后的驱动力一直受到物理时间序列选择的推动,物理时间序列使用固定的时间间隔来总结数据。例如,每日股票数据的时间序列将在一年内的252点进行分析。然而,这种情节式的风格忽略了重要的事件,或者两个间隔之间发生的价格变化。因此,我们使用方向性变化(DC)作为基于事件的系列,这是记录价格变动的另一种方式。在DC中,与时间序列方法不同,时间间隔由价格变化构成。决定价格变化是否显著的唯一特征称为阈值θ。本文的目标是创建基于dc的交易策略,然后使用遗传算法(GA)对其进行优化。为了构建这样的策略,我们使用基于DC的指标和标度定律,这些指标和标度定律已经在DC摘要下得到了经验鉴定。我们首先提出了四种新的基于dc的交易策略,然后将它们与现有的基于dc的交易策略相结合,最后通过遗传算法对它们进行优化。我们对44只股票进行了交易实验。结果表明,ga优化策略能够产生新的和有利可图的交易策略,显著优于单个基于dc的策略,以及买入和卖出基准。
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