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A stacked generalization system for automated FOREX portfolio trading

机译:用于自动化外汇投资组合交易的堆叠概括系统

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Multiple FOREX time series forecasting is a hot research topic in the literature of portfolio trading. To this end, a large variety of machine learning algorithms have been examined. However, it is now widely understood that, in real-world trading settings, no single machine learning model can consistently outperform the alternatives. In this work, we examine the efficacy and the feasibility of developing a stacked generalization system, intelligently combining the predictions of diverse machine learning models. Our approach establishes a novel inferential framework that comprises the following levels of data processing: (i) We model the dependence patterns between major currency pairs via a diverse set of commonly used machine learning algorithms, namely support vector machines (SVMs), random forests (RFs), Bayesian autoregressive trees (BART), dense-layer neural networks (NNs), and naive Bayes (NB) classifiers. (ii) We generate implied signals of exchange rate fluctuation, based on the output of these models, as well as appropriate side information obtained by analyzing the correlations across currency pairs in our training datasets. (iii) We finally combine these implied signals into an aggregate predictive waveforth, by leveraging majority voting, genetic algorithm optimization, and regression weighting techniques. We thoroughly test our framework in real-world trading scenarios; we show that our system leads to significantly better trading performance than the considered benchmarks. Thus, it represents an attractive solution for financial firms and corporations that perform foreign exchange portfolio management and daily trading. Our system can be used as an integrated part in international commercial trade activities or in a quantitative investing framework for algorithmic trading and carry-trade speculation. (C) 2017 Elsevier Ltd. All rights reserved.
机译:多种外汇时间序列预测是证券交易文献中的一个热门研究主题。为此,已经研究了多种机器学习算法。但是,现在已经广泛理解,在现实世界的交易环境中,没有任何一种机器学习模型能够始终胜过其他选择。在这项工作中,我们智能地组合了各种机器学习模型的预测,从而研究了开发堆叠泛化系统的有效性和可行性。我们的方法建立了一个新颖的推理框架,该框架包括以下级别的数据处理:(i)我们通过各种常用的机器学习算法(即支持向量机(SVM),随机森林( RF),贝叶斯自回归树(BART),密集层神经网络(NN)和朴素贝叶斯(NB)分类器。 (ii)基于这些模型的输出以及通过分析训练数据集中的货币对之间的相关性获得的适当辅助信息,我们生成汇率波动的隐含信号。 (iii)通过利用多数表决,遗传算法优化和回归加权技术,我们最终将这些隐含信号组合成一个总的预测波形。我们在真实交易场景中彻底测试了我们的框架;我们表明,我们的系统比考虑的基准能够显着提高交易性能。因此,对于执行外汇投资组合管理和日常交易的金融公司和公司而言,它是一种有吸引力的解决方案。我们的系统可以用作国际商业贸易活动的集成部分,也可以用作算法交易和套利交易投机的定量投资框架。 (C)2017 Elsevier Ltd.保留所有权利。

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