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The Effects of Economic Variables on Exchange Rate, Modeling and Forecasting: Case of Iran

机译:经济变量对汇率,建模和预测的影响:以伊朗为例

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This paper investigates the model estimation and data forecasting of exchange rate using artificial neural network. Recent studies have shown the classification and prediction power of the neural networks. It has been demonstrated that a neural network can approximate any continuous function. In this research, ANN is employed in training and learning processes and after modeling, the forecast performance is measured by making use of a loss function (RMSE). By sensitivity analysis, the importance and the weight of each economic variable on exchange rate such as consumer price index, old price, oil price and total value of export and import have been determined. The results show that Iran consumer price index is the most effective factor on exchange rate trend. In addition to, it is possible to estimate a model to forecast the value of exchange rate even by having access to a limited subset of data.
机译:本文研究了使用人工神经网络进行汇率的模型估计和数据预测。最近的研究显示了神经网络的分类和预测能力。已经证明神经网络可以近似任何连续函数。在这项研究中,将ANN用于训练和学习过程,并在建模后,通过使用损失函数(RMSE)来测量预测性能。通过敏感性分析,确定了诸如消费者价格指数,旧价格,石油价格以及进出口总值等每个经济变量对汇率的重要性和权重。结果表明,伊朗消费物价指数是影响汇率走势的最有效因素。此外,即使访问有限的数据子集,也可以估计模型以预测汇率值。

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