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GA-MSSR: Genetic Algorithm Maximizing Sharpe and Sterling Ratio Method for RoboTrading

机译:GA-MSSR:最大化RoboTrading的Sharpe和Sterling比值方法的遗传算法

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Foreign exchange is the largest financial market in the world, and it is also one of the most volatile markets. Technical analysis plays an important role in the forex market and trading algorithms are designed utilizing machine learning techniques. Most literature used historical price information and technical indicators for training. However, the noisy nature of the market affects the consistency and profitability of the algorithms. To address this problem, we designed trading rule features that are derived from technical indicators and trading rules. The parameters of technical indicators are optimized to maximize trading performance. We also proposed a novel cost function that computes the risk-adjusted return, Sharpe and Sterling Ratio (SSR), in an effort to reduce the variance and the magnitude of drawdowns. An automatic robotic trading (RoboTrading) strategy is designed with the proposed Genetic Algorithm Maximizing Sharpe and Sterling Ratio model (GA-MSSR) model. The experiment was conducted on intraday data of 6 major currency pairs from 2018 to 2019. The results consistently showed significant positive returns and the performance of the trading system is superior using the optimized rule-based features. The highest return obtained was 320% annually using 5-minute AUDUSD currency pair. Besides, the proposed model achieves the best performance on risk factors, including maximum drawdowns and variance in return, comparing to benchmark models. The code can be accessed at https://github.com/zzzac/rule-based-forextrading-system
机译:外汇是世界上最大的金融市场,也是最动荡的市场之一。技术分析在外汇市场中起着重要作用,并且利用机器学习技术设计了交易算法。大多数文献使用历史价格信息和技术指标进行培训。但是,市场的嘈杂性会影响算法的一致性和获利能力。为了解决此问题,我们设计了从技术指标和交易规则派生的交易规则功能。对技术指标的参数进行了优化,以最大程度地提高交易性能。我们还提出了一种新颖的成本函数,该函数可计算风险调整后的收益,夏普和英镑比率(SSR),以减少方差和亏损额度。利用提出的遗传算法最大化夏普和斯特林比率模型(GA-MSSR)模型,设计了一种自动机器人交易(RoboTrading)策略。该实验是基于2018年至2019年的6种主要货币对的日内数据进行的。结果始终显示出显着的正收益,并且使用基于规则的优化功能,交易系统的性能更高。使用5分钟的AUDUSD货币对可获得的最高回报率为每年320%。此外,与基准模型相比,所提出的模型在包括最大跌幅和回报差异在内的风险因素上取得了最佳性能。可以在https://github.com/zzzac/rule-based-forextrading-system上访问该代码

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