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Exchange Rate Forecasting Using Entropy Optimized Multivariate Wavelet Denoising Model

机译:汇率预测采用熵优化多变量小波去噪模式

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Exchange rate is one of the key variables in the international economics and international trade. Its movement constitutes one of the most important dynamic systems, characterized by nonlinear behaviors. It becomes more volatile and sensitive to increasingly diversified influencing factors with higher level of deregulation and global integration worldwide. Facing the increasingly diversified and more integrated market environment, the forecasting model in the exchange markets needs to address the individual and interdependent heterogeneity. In this paper, we propose the heterogeneous market hypothesis- (HMH-) based exchange rate modeling methodology to model the micromarket structure. Then we further propose the entropy optimized wavelet-based forecasting algorithm under the proposed methodology to forecast the exchange rate movement. The multivariate wavelet denoising algorithm is used to separate and extract the underlying data components with distinct features, which are modeled with multivariate time series models of different specifications and parameters. The maximum entropy is introduced to select the best basis and model parameters to construct the most effective forecasting algorithm. Empirical studies in both Chinese and European markets have been conducted to confirm the significant performance improvement when the proposed model is tested against the benchmark models.
机译:汇率是国际经济学和国际贸易中的关键变量之一。其运动构成了最重要的动态系统之一,其特征是非线性行为。它对越来越多样化的影响因素变得更加挥发和敏感,具有较高的放松管制和全球全球整合。面对日益多样化,更广泛的市场环境,交换市场的预测模型需要解决个体和相互依存的异质性。在本文中,我们提出了基于异质的市场假设 - (HMH-)的汇率建模方法,以模拟微观结构结构。然后,我们进一步提出了在提出的方法下提出了基于熵的基于小波的预测算法,以预测汇率运动。多变量小波去噪算法用于分离和提取具有不同特征的底层数据组件,其与不同规格和参数的多变量时间序列模型建模。引入最大熵以选择最佳基础和模型参数,以构建最有效的预测算法。在拟议模型对基准模型进行测试时,已经进行了中欧和欧洲市场的实证研究。

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