Finansal Zaman Serilerinin Derin Öğrenme Algoritmaları İle Tahminlenmesi

Dilara Elize Pamukçu, Yeşim Aygül, Onur Uğurlu
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引用次数: 0

Abstract

Stock market index data, foreign currency, and gold have an important place in financial time series. Therefore, value or direction of movement estimation studies on this subject attracts the attention of both investors and researchers. This study aims to estimate the daily value of the US Dollar, Gold, and Borsa Istanbul (XU) 100 index using deep learning methods: Recurrent Neural Networks and Long-Short-Term Memory. A data set consisting of 2280 business days between 2013-2022, which includes the date, US Dollar, Gold, and XU 100 closing data, was used in the study. Mean absolute error, mean square error, root mean square error, and coefficient of determination were used to evaluate the performance of the developed prediction models. When the results were examined, it was seen that the Long-Short-Term Memory algorithm performs better than the Recurrent Neural Network algorithm and has an accuracy value of over 95% for the US Dollar, Gold, and XU 100 index. Moreover, the findings obtained in the study indicate that deep learning algorithms can show high prediction performance on financial time series without using extra independent variables.
股票市场指数数据、外汇和黄金在金融时间序列中占有重要地位。因此,关于这一主题的价值或运动方向估计研究受到了投资者和研究者的关注。本研究旨在使用深度学习方法:循环神经网络和长短期记忆来估计美元、黄金和伊斯坦布尔指数(XU) 100的每日价值。本研究使用了2013-2022年期间的2280个工作日的数据集,包括日期、美元、黄金和XU 100收盘数据。采用平均绝对误差、均方误差、均方根误差和决定系数来评价所建立的预测模型的性能。对结果进行检验后发现,长短期记忆算法优于递归神经网络算法,对美元、黄金、XU 100指数的准确率均在95%以上。此外,研究结果表明,深度学习算法可以在不使用额外自变量的情况下对金融时间序列表现出较高的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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