基于长短期记忆的汇率预测

Hasna Haifa Zahrah, S. Sa'adah, Rita Rismala
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引用次数: 0

摘要

外汇市场是一个全球性的金融市场,受经济、政治和心理因素的影响,这些因素以复杂的方式相互联系。这种复杂性使得外汇市场很难进行时间序列预测。2019年底,全球面临新冠肺炎疫情,不仅公共卫生受到影响,外汇市场也受到影响,交易行为受到影响。长短期记忆网络(LSTM)是一种解决长期依赖关系的递归神经网络(RNN),适用于金融时间序列模型。本研究采用LSTM模型对2020年1小时和每天的时间框架的汇率进行预测,以RMSE评价结果为基础获得最佳超参数。利用获得的超参数,将2020年的预测结果与2018年和2019年的预测结果进行比较。在1小时的时间范围内获得了最佳的RMSE结果,当将2020年的RMSE结果与2018年和2019年的RMSE结果进行比较时,2019年的RMSE预测结果最佳。LSTM模型能够在2020年的预测中取得较好的效果,RMSE结果为0.00135。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Foreign Exchange Rate Prediction Using Long-Short Term Memory
The foreign exchange market is a global financial market that is influenced by economic, political, and psychological factors that are interconnected in complex ways. This complexity makes the foreign exchange market a difficult time-series prediction. At the end of 2019, the world was faced with the COVID-19 pandemic that has not only affected public health but also the foreign exchange market, which makes the trading behaviour affected. Long Short-Term Memory network (LSTM) is a type of recurrent neural network (RNN) that can solve long-term dependencies and is suitable to be a financial time-series model. This study implemented the LSTM model to predict the foreign exchange rate at a timeframe of 1 hour and daily in 2020 to get the best hyperparameter based on the RMSE evaluation results. Furthermore, with the obtained hyperparameters, the prediction result of 2020 was then compared with the 2018 and 2019 prediction results. The best RMSE result was obtained in 1-hour timeframe and when 2020’s RMSE result was compared to 2018’s and 2019’s RMSE result, the prediction of 2019 gave the best RMSE result. The LSTM model is able to achieve good results in the 2020 prediction, proven by the RMSE result which is 0.00135.
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