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Generating Long-Term Trading System Rules Using a Genetic Algorithm Based on Analyzing Historical Data

机译:使用基于分析历史数据的遗传算法生成长期交易系统规则

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In current times, trading success depends on choosing a correct strategy. Algorithmic trading is often based on technical analysis - an approach where the values of one or several technical indicators are translated into buy or sell signals. Thus, every trader's main challenge is the choice and use of the most fitting trading rules. In our work, we suggest an evolutionary algorithm for generating and selecting the most fitting trading rules for interday trading, which are presented in the form of binary decision trees. A distinctive feature of this approach is the interpretation of the evaluation of the current state of technical indicators with the help of dynamic ranges that are recalculated on a daily basis. This allows to create long-term trading rules. We demonstrate the effectiveness of this system for the Top-5 stocks of the United States IT sector and discuss the ways to improve it.
机译:在当前时代,交易成功取决于选择正确的策略。算法交易通常基于技术分析 - 一种方法,其中一个或多个技术指标的价值转换为买入或销售信号。因此,每个交易者的主要挑战都是选择和使用最适合的交易规则。在我们的工作中,我们建议一个进化算法,用于为中间交易产生和选择最适合的交易规则,这些贸易规则是以二元决策树的形式提出的。这种方法的独特特征是在每天重新计算的动态范围的帮助下,对技术指标的当前状态的评估的解释。这允许创建长期交易规则。我们展示了该系统对美国IT部门的前5股并讨论改进它的方法的有效性。

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