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Intraday Foreign Exchange Rate Forecasting Using Sparse Grids

机译:使用稀疏网格的盘中外汇率预测

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We present a machine learning approach using the sparse grid combination technique for the forecasting of intraday foreign exchange (FX) rates. The aim is to learn the impact of trading rules used by technical analysts just from the empirical behaviour of the market. To this end, the problem of analyzing a time series of transaction tick data is transformed by delay embedding into a D -dimensional regression problem using derived measurements from several different exchange rates. Then, a grid-based approach is used to discretize the resulting high-dimensional feature space. To cope with the curse of dimensionality we employ sparse grids in the form of the combination technique. Here, the problem is discretized and solved for a collection of conventional grids. The sparse grid solution is then obtained by linear combination of the solutions on these grids. We give the results of this approach to fx forecasting using real historical exchange data of the Euro, the US dollar, the Japanese Yen, the Swiss Franc and the British Pound from 2001 to 2005.
机译:我们目前使用的盘中外汇(FX)利率预测稀疏并网技术,机器学习的方法。其目的是学习只是从市场的实证行为技术分析师交易规则的影响。为此,分析时间序列交易蜱数据的的问题是由延迟嵌入到使用从几个不同的兑换率导出的测量一维d回归问题转化。然后,基于网格的方法被用于离散化产生的高维特征空间。为了应对维度,我们采用稀疏网格的技术相结合的形式诅咒。在这里,问题是离散,解决了传统电网的集合。稀疏网格溶液然后通过在这些网格解的线性组合获得。我们把这个方法来预测外汇使用欧元,美元,日元,瑞士法郎和英镑从2001年的真实历史交换数据,以2005年的结果。

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