外汇交易智能系统:具有 GARCH 和内在模式函数的混合 ANN

H. Pathberiya, C. Tilakaratne, L. L. Hansen
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引用次数: 6

摘要

时间序列预测是医学、工程学、金融学和经济学等广泛领域讨论的一个不可或缺的话题。传统时间序列模型假设的静态环境条件在现实生活中很少存在。本研究针对金融市场的这一问题,提出了一种外汇交易智能决策支持系统,即使在动态环境条件下也能使用。该研究建议识别与动态环境相关的时间点群组,这些时间点群组由计划发布的新闻项目定义。然后,提议的系统利用相关的时间点数据库得出预测结果。拟议的智能系统由混合神经网络方法提供支持,该方法结合了广义自回归条件异方差(GARCH)波动率估计和经验模式分解得出的内在模式函数。与忽略聚类的方法相比,将时间点聚类纳入拟议智能系统的预测过程具有重要意义。此外,所提出的系统在提供交易决策方面足够高效,57%的情况下都能产生即时盈利机会,而且几乎在所有时间点上,上百个交易仓位的总利润都保持为正值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An intelligent system for forex trading: Hybrid ANN with GARCH and intrinsic mode functions
Time series forecasting can be viewed as an indispensable topic under discussion in a wide range of fields including, medicine, engineering, finance and economics, etc. As assumed by the conventional time series models static environmental conditions are rare to exist in real life situations. This study addressed this issue in case of financial markets by proposing an intelligent decision support system for Forex (Foreign Exchange) trading which can be used even under dynamic environmental conditions. The study proposes to identify clusters of time points relevant to dynamic environments defined by the release of scheduled news items. Then the proposed system utilizes the relevant database of time points to derive the forecast. The proposed intelligent system is supported with a hybrid neural network approach which combines generalized autoregressive conditional heteroskedasticity (GARCH) volatility estimates and intrinsic mode functions derived from Empirical Mode Decomposition. The incorporation of clustering of time points found significance in the forecasting process utilized in the proposed intelligent system over the method which ignores clustering. Moreover, the proposed system is efficient enough in delivering the trading decision yielding instant profitable opportunities, 57% of times and aggregated profit over hundred trading positions remained positive at almost all the time points.
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