Stock price prediction using the Sand Cat Swarm Optimization and an improved deep Long Short Term Memory network

IF 7.1 2区 经济学 Q1 BUSINESS, FINANCE Borsa Istanbul Review Pub Date : 2024-12-01 DOI:10.1016/j.bir.2024.12.002
Burak Gülmez
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Abstract

Stock price prediction remains a complex challenge in financial markets. This study introduces a novel Long Short-Term Memory (LSTM) model optimized by Sand Cat Swarm Optimization (SCSO) for stock price prediction. The research evaluates multiple algorithms including ANN, LSTM variants, Auto-ARIMA, Gradient Boosted Trees, DeepAR, N-BEATS, N-HITS, and the proposed LSTM-SCSO using DAX index data from 2018 to 2023. Model performance was assessed through Mean Squared Error, Mean Absolute Error, Mean Absolute Percentage Error, and out-of-sample R2 metrics. Statistical significance was validated using Model Confidence Set analysis with 5000 bootstrap replications. Results demonstrate LSTM-SCSO's superior performance across all evaluation metrics. The model achieved an annualized return of 66.25% compared to the DAX index's 47.45%, with a Sharpe ratio of 2.9091. The integration of technical indicators and macroeconomic variables enhanced the model's predictive capabilities. These findings establish LSTM-SCSO as an effective tool for stock price prediction, offering practical value for investment decision-making.
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利用沙猫群优化和改进的深度长短期记忆网络进行股票价格预测
股票价格预测仍然是金融市场中一项复杂的挑战。本文提出了一种基于沙猫群优化(SCSO)的长短期记忆(LSTM)预测模型。该研究使用2018年至2023年的DAX指数数据评估了多种算法,包括ANN、LSTM变体、Auto-ARIMA、梯度增强树、DeepAR、N-BEATS、N-HITS和拟议的LSTM- scso。通过均方误差、平均绝对误差、平均绝对百分比误差和样本外R2指标评估模型性能。采用5000次bootstrap重复的模型置信集分析验证了统计学显著性。结果表明LSTM-SCSO在所有评估指标上都具有优越的性能。该模型的年化回报率为66.25%,而DAX指数的年化回报率为47.45%,夏普比率为2.9091。技术指标与宏观经济变量的结合增强了模型的预测能力。这些发现表明LSTM-SCSO是股票价格预测的有效工具,对投资决策具有实用价值。
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来源期刊
CiteScore
7.60
自引率
3.80%
发文量
130
审稿时长
26 days
期刊介绍: Peer Review under the responsibility of Borsa İstanbul Anonim Sirketi. Borsa İstanbul Review provides a scholarly platform for empirical financial studies including but not limited to financial markets and institutions, financial economics, investor behavior, financial centers and market structures, corporate finance, recent economic and financial trends. Micro and macro data applications and comparative studies are welcome. Country coverage includes advanced, emerging and developing economies. In particular, we would like to publish empirical papers with significant policy implications and encourage submissions in the following areas: Research Topics: • Investments and Portfolio Management • Behavioral Finance • Financial Markets and Institutions • Market Microstructure • Islamic Finance • Financial Risk Management • Valuation • Capital Markets Governance • Financial Regulations
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