Multi-Step Vector Output Prediction of Time Series Using EMA LSTM

Mohammad Diqi, Ahmad Sahal, Farida Nur Aini
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引用次数: 0

Abstract

This research paper proposes a novel method, Exponential Moving Average Long Short-Term Memory (EMA LSTM), for multi-step vector output prediction of time series data using deep learning. The method combines the LSTM with the exponential moving average (EMA) technique to reduce noise in the data and improve the accuracy of prediction. The research compares the performance of EMA LSTM to other commonly used deep learning models, including LSTM, GRU, RNN, and CNN, and evaluates the results using statistical tests. The dataset used in this study contains daily stock market prices for several years, with inputs of 60, 90, and 120 previous days, and predictions for the next 20 and 30 days. The results show that the EMA LSTM method outperforms other models in terms of accuracy, with lower RMSE and MAPE values. This study has important implications for real-world applications, such as stock market forecasting and climate prediction, and highlights the importance of careful preprocessing of the data to improve the performance of deep learning models.
基于EMA LSTM的时间序列多步矢量输出预测
本文提出了一种利用深度学习对时间序列数据进行多步矢量输出预测的新方法——指数移动平均长短期记忆(EMA LSTM)。该方法将LSTM与指数移动平均(EMA)技术相结合,降低了数据中的噪声,提高了预测精度。该研究将EMA LSTM的性能与其他常用的深度学习模型(包括LSTM、GRU、RNN和CNN)进行了比较,并使用统计测试对结果进行了评估。本研究中使用的数据集包含几年来的每日股票市场价格,输入前60、90和120天,以及对未来20和30天的预测。结果表明,EMA LSTM方法在精度方面优于其他模型,RMSE和MAPE值较低。该研究对股票市场预测和气候预测等现实应用具有重要意义,并强调了对数据进行仔细预处理以提高深度学习模型性能的重要性。
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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