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The Use of LSTM Neural Networks to Implement the NARX Model. A Case Study of EUR-USD Exchange Rates

机译:使用LSTM神经网络实现NARX模型。欧元兑美元汇率案例研究

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The paper focuses on financial data forecasting in terms of one-step-ahead nonlinear model with exogenous inputs. The main aim is the development of a methodology to forecast the exchange rate between EURO and US Dollar. The prediction task is carried out by two recurrent neural networks, the standard NARX neural network and a LSTM-based approach. The exogenous inputs consist of historical trading data and three widely used technical indicators, namely a variant of moving average, the Upper Bollinger Frequency Band and the Lower Bollinger Frequency Band. In order to obtain accurate forecasting algorithms, the exogenous inputs are filtered using the well-known Gaussian low-pass filter. The quality of each method is evaluated in terms of both quantitative and qualitative metrics, namely the root mean squared error, the mean absolute percentage error, and the prediction of change in direction. Extensive experiments point out that the most suited forecasting method is based on the proposed LSTM neural network for NARX model.
机译:本文重点介绍了与外源投入的一步非线性模型的财务数据预测。主要目的是开发一种方法,以预测欧元和美元之间的汇率。预测任务由两个经常性神经网络,标准NARX神经网络和基于LSTM的方法进行。外源性投入包括历史贸易数据和三种广泛使用的技术指标,即移动平均线的变型,上层滨频频带和下滨手频带。为了获得准确的预测算法,使用众所周知的高斯低通滤波器过滤外源输入。根据定量和定性度量来评估每种方法的质量,即根均方误差,平均绝对百分比误差,以及方向变化的预测。广泛的实验指出,最适合的预测方法是基于所提出的NARX模型的LSTM神经网络。

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