Advancing Stock Market Predictions with Time Series Analysis including LSTM and ARIMA

Ishtiaq Ahammad, William Ankan Sarkar, Famme Akter Meem, Jannatul Ferdus, Md. Kawsar Ahmed, Md. R. Rahman, Rabeya Sultana, Md. Shihabul Islam
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Abstract

Predicting stock market prices accurately is a major task for investors and traders seeking to optimize their decision-making processes. This research focuses on the comparative analysis of advanced machine learning (ML) techniques, particularly, the Long Short-Term Memory (LSTM) model and Autoregressive Integrated Moving Average (ARIMA) model for predicting stock market prices. The study enforces thorough data collection and preprocessing to ensure the quality and reliability of the historical stock price data, forming a robust foundation for the predictive models. The core contribution of this paper lies in its systematic and comparative analysis of these two models. A range of performance metrics, including Mean Absolute Error (MAE) and Root Mean Square Error (RMSE), are employed to assess and contrast the predictive accuracy and efficiency of the LSTM and ARIMA models. The research findings indicate that the ARIMA model, contrary to expectations, outperforms the LSTM model in this study, achieving lower RMSE and MAE values. Specifically, the ARIMA model demonstrates a Test RMSE of 4.336 and a Test MAE of 3.45926, indicating its superior predictive accuracy compared to the LSTM model. Furthermore, the study sets its findings against the backdrop of existing literature by comparing the performance of its models with those reported in previous research. This comparison shows better results achieved by our stock market prediction models. By addressing limitations observed in prior studies and demonstrating practical applicability, this research contributes to advancing stock market prediction methodologies, offering valuable insights for investors and traders.
利用时间序列分析(包括 LSTM 和 ARIMA)推进股市预测
准确预测股市价格是投资者和交易者优化决策过程的一项重要任务。本研究侧重于先进机器学习(ML)技术的比较分析,特别是用于预测股市价格的长短期记忆(LSTM)模型和自回归综合移动平均(ARIMA)模型。本研究通过全面的数据收集和预处理,确保了历史股票价格数据的质量和可靠性,为预测模型奠定了坚实的基础。本文的核心贡献在于对这两个模型进行了系统的比较分析。本文采用了一系列性能指标,包括平均绝对误差 (MAE) 和均方根误差 (RMSE),以评估和对比 LSTM 模型和 ARIMA 模型的预测准确性和效率。研究结果表明,与预期相反,ARIMA 模型在本研究中的表现优于 LSTM 模型,获得了较低的 RMSE 和 MAE 值。具体而言,ARIMA 模型的测试 RMSE 为 4.336,测试 MAE 为 3.45926,表明其预测准确性优于 LSTM 模型。此外,本研究还以现有文献为背景,将其模型的性能与以往研究报告中的模型进行了比较。比较结果表明,我们的股市预测模型取得了更好的结果。通过解决以往研究中发现的局限性并展示实际应用性,本研究有助于推动股市预测方法的发展,为投资者和交易者提供有价值的见解。
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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