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Automated trading with boosting and expert weighting

机译:通过增强和专家权重进行自动交易

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摘要

We propose a multi-stock automated trading system that relies on a layered structure consisting of a machine learning algorithm, an online learning utility, and a risk management overlay. Alternating decision tree (ADT), which is implemented with Logitboost, was chosen as the underlying algorithm. One of the strengths of our approach is that the algorithm is able to select the best combination of rules derived from well-known technical analysis indicators and is also able to select the best parameters of the technical indicators. Additionally, the online learning layer combines the output of several ADTs and suggests a short or long position. Finally, the risk management layer can validate the trading signal when it exceeds a specified non-zero threshold and limit the application of our trading strategy when it is not profitable. We test the expert weighting algorithm with data of 100 randomly selected companies of the S&P 500 index during the period 2003-2005. We find that this algorithm generates abnormal returns during the test period. Our experiments show that the boosting approach is able to improve the predictive capacity when indicators are combined and aggregated as a single predictor. Even more, the combination of indicators of different stocks demonstrated to be adequate in order to reduce the use of computational resources, and still maintain an adequate predictive capacity.
机译:我们提出了一种多股票自动交易系统,该系统依赖于由机器学习算法,在线学习实用程序和风险管理覆盖层组成的分层结构。使用Logitboost实现的交替决策树(ADT)被选为基础算法。我们的方法的优势之一是该算法能够选择从众所周知的技术分析指标得出的规则的最佳组合,并且还能够选择技术指标的最佳参数。此外,在线学习层结合了几种ADT的输出,并建议空头或空头。最后,风险管理层可以在交易信号超过指定的非零阈值时验证交易信号,并在无法获利时限制我们交易策略的应用。我们使用2003-2005年期间随机抽取的100家标准普尔500指数公司的数据测试了专家加权算法。我们发现该算法在测试期间会产生异常回报。我们的实验表明,当指标被组合和汇总为单个预测变量时,增强方法能够提高预测能力。而且,为了减少计算资源的使用并保持足够的预测能力,不同存量指标的组合被证明是足够的。

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