神经网络与混合遗传算法-神经网络在菲律宾比索-美元汇率预测中的比较

M. L. Torregoza, E. Dadios
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引用次数: 3

摘要

本文提出了一种预测菲律宾比索对美元汇率的新方法。与传统的方式相比,菲律宾交易系统(PDS)由中央银行监控,通过分析需求和供应来确定利率,使用人工神经网络,消费者价格指数,通货膨胀率,贷款利率和比索的购买力作为输入,在本文中提出。虽然汇率每天都在变化,但本文的输出是对每月平均汇率的预测。人工神经网络作为预测菲律宾比索对美元汇率的强大工具,不需要银行和金融方面的专业知识,从而让公众获得一个有用的灯塔,即外汇汇率。然而,人工神经网络的预测精度高度依赖于训练数据量,本文提出并分析了一种替代算法,该算法可以在训练数据量有限的情况下提高传统人工神经网络的预测精度。
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Comparison of neural network and hybrid genetic algorithm-neural network in forecasting of Philippine Peso-US Dollar exchange rate
This paper presents a new method in forecasting Philippine Peso to US Dollar exchange rate. Compared to the conventional way, in which the Philippine Dealing System (PDS), as monitored by the Central Bank, determines the rate by analysing demand and supply, the use of artificial neural network, having consumer price index, inflation rate, lending interest rate and purchasing power of the peso as the inputs is presented in this paper. Though foreign exchange rates vary on a daily basis, the output of this paper is prediction of the average foreign exchange rate every month. Artificial Neural Network serves as a powerful tool in forecasting Philippine Peso to US Dollar exchange rate not requiring expert knowledge in banking and finance thus letting the public gain access to a helpful beacon which is the foreign exchange rate. However, the accuracy of the forecast using artificial neural network is highly dependent on the volume of the training data, in this paper, an alternative algorithm that will increase the accuracy of the conventional artificial neural network with limited volume of training data is presented and analyze.
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