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Using the Wide and Deep Flexible Neural Tree to Forecast the Exchange Rate

机译:使用宽而深的柔性神经树预测汇率

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Forecasting exchange rate plays an important role in the financial market. It has become a hot research topic and many methods have been proposed. In this paper, a wide and deep flexible neural tree (FNT) is proposed to forecast the exchange rate. The wide component has the function to memorize the original input features, while the deep component can automatically extract unseen features. By balancing the width and depth of flexible neural tree, the structure of FNT is optimized from the experiments to forecast the exchange rate. Experiments have been conducted on four different kinds of exchange rate daily data to check the performance of the FNT. The architecture of the wide and deep FNT is developed by grammar guided genetic programming (GGGP) and the parameters are optimized by the particle swarm optimization algorithm (PSO). Proposed method performs well as compared to the autoregressive moving average model and neural networks.
机译:预测汇率在金融市场中起着重要作用。它已成为研究的热点,并提出了许多方法。本文提出了一种宽而深的柔性神经树(FNT)来预测汇率。较宽的组件具有记忆原始输入特征的功能,而较深的组件可以自动提取看不见的特征。通过平衡柔性神经树的宽度和深度,从实验中优化了FNT的结构以预测汇率。已经对四种不同的汇率每日数据进行了实验,以检查FNT的性能。宽和深FNT的体系结构是通过语法指导遗传规划(GGGP)开发的,并且参数是通过粒子群优化算法(PSO)进行优化的。与自回归移动平均模型和神经网络相比,所提出的方法表现良好。

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