利用技术分析指标和人工神经网络预测外汇市场的自动交易系统

Muhammad Amir Hakim Ismail, Muhammad Luqman Yasruddin, Z. Husin, W. Tan
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引用次数: 0

摘要

本文讨论了一种利用技术分析(TA)指标和人工神经网络(ANN)预测外汇市场的自动交易系统。手工交易者通常被自己的情绪所左右,导致灾难性的损失。因此,这项研究将侧重于开发一种独立于人类情绪运行的自动交易系统。我们提供了一种结合TA指标和人工神经网络系统的预测外汇市场运动的策略。本文考察了自动交易系统中的TA指标和人工神经网络系统,以实现准确的外汇价格预测。对英镑兑美元(GBP/USD)汇率的实验结果表明,将TA指标与人工神经网络系统相结合,可以有效地为预测英镑兑美元汇率提供信息。对所建议方法的性能进行了检查,表明它能够利用TA指标和人工神经网络系统预测外汇市场走势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Trading System for Forecasting the Foreign Exchange Market Using Technical Analysis Indicators and Artificial Neural Network
The article discusses an automated trading system for forecasting foreign exchange markets that utilise Technical Analysis (TA) indicators and Artificial Neural Networks (ANN). Manual traders are usually swayed by their emotions, resulting in a catastrophic loss. As a result, this research will focus on developing an automated trading system that operates independently of human emotions. We provide a strategy for forecasting the movement of the foreign exchange market that incorporates TA indicators and the ANN system. The article examines TA indicators and the ANN system in automated trading systems to achieve accurate foreign exchange price forecasts. The experimental results on the Pound-Dollar (GBP/USD) exchange rate demonstrate that the combination of the TA indicators and the ANN system effectively provides information for forecasting the GBP/USD exchange rate. The performance of the suggested method is examined, revealing that it is capable of forecasting foreign exchange market movement utilising TA indicators and an ANN system.
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