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Forecasting Exchange Rate with EMD-Based Support Vector Regression

机译:基于基于EMD的支持向量回归预测汇率

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Exchange rate is considered as a highly nonlinear and non-stationary time series which can hardly be properly modeled and accurately predicted by traditional linear econometric models. This study attempts to propose an exchange rate ensemble learning paradigm called EMD-SVR. This methodology decomposes the original non-stationary and irregular exchange rate series into a finite and often small number of sub-signals by empirical mode decomposition (EMD). Then each sub-signal is modeled and forecasted by a Support Vector Regression (SVR). Finally the forecast of exchange rate is obtained by aggregating all prediction results of sub-signals. We verify the effectiveness and predictability of EMD-SVR using EUR/RMB time series as sample. The result shows that EMD-SVR has a strong forecasting ability and is remarkably superior to normal SVR.
机译:汇率被认为是高度非线性且不稳定的时间序列,传统线性计量经济学模型很难对其进行正确建模和准确预测。这项研究试图提出一种称为EMD-SVR的汇率合奏学习范例。该方法通过经验模式分解(EMD)将原始的非平稳和不规则汇率序列分解为有限的且通常为少量的子信号。然后,通过支持向量回归(SVR)对每个子信号进行建模和预测。最后,通过汇总所有子信号的预测结果来获得汇率的预测。我们使用欧元/人民币时间序列作为样本验证了EMD-SVR的有效性和可预测性。结果表明,EMD-SVR具有较强的预测能力,明显优于普通SVR。

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