Predicting stock market movements using neural networks: A review and application study

Adedoyin Tolulope Oyewole, Omotayo Bukola Adeoye, Wilhelmina Afua Addy, Chinwe Chinazo Okoye, Onyeka Chrisanctus Ofodile, Chinonye Esther Ugochukwu
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引用次数: 2

Abstract

In the rapidly evolving landscape of financial markets, the quest for accurate stock market predictions has never been more critical. This paper delves into the transformative potential of neural network models in forecasting stock market movements, offering a comprehensive examination of their effectiveness compared to traditional predictive models. With a focus on the evolution of stock market prediction methodologies, this study aims to uncover the nuanced dynamics of neural networks, their comparative analysis with other models, and the pivotal role of data preprocessing in enhancing prediction accuracy. Employing a qualitative analysis framework, the research meticulously synthesizes findings from selected studies, highlighting the superior performance of neural network models in capturing complex market patterns and adapting to volatility. The results underscore the significant impact of data quality and quantity, architectural nuances of neural networks, and the strategic implications for investors navigating the stock market's unpredictability. Despite the promising outcomes, the study acknowledges inherent challenges in the real-world application of these models, including data imperfections and the complexity of financial ecosystems. Conclusively, the paper advocates for ongoing innovation, interdisciplinary collaboration, and the strategic integration of advanced neural network architectures to overcome existing limitations. Recommendations emphasize the critical need for high-quality, diverse datasets and continuous model refinement to harness the full predictive power of neural networks in stock market forecasting. This study not only illuminates the path forward for investors and financial analysts but also sets the stage for future research in this dynamic field.
利用神经网络预测股市走势:回顾与应用研究
在快速发展的金融市场中,对股市准确预测的追求从未像现在这样重要。本文深入探讨了神经网络模型在预测股市走势方面的变革潜力,全面考察了其与传统预测模型相比的有效性。本研究以股市预测方法的演变为重点,旨在揭示神经网络的微妙动态、其与其他模型的比较分析以及数据预处理在提高预测准确性方面的关键作用。本研究采用定性分析框架,对所选研究结果进行了细致的综合分析,强调了神经网络模型在捕捉复杂市场模式和适应波动性方面的卓越表现。研究结果强调了数据质量和数量的重要影响、神经网络架构的细微差别,以及对投资者驾驭股市不可预测性的战略意义。尽管取得了令人鼓舞的成果,但研究也承认了这些模型在现实世界中应用所面临的固有挑战,包括数据不完善和金融生态系统的复杂性。最后,本文倡导持续创新、跨学科合作,并战略性地整合先进的神经网络架构,以克服现有的局限性。这些建议强调了对高质量、多样化数据集和不断完善模型的迫切需求,以充分发挥神经网络在股市预测中的预测能力。这项研究不仅为投资者和金融分析师指明了前进的道路,也为这一动态领域的未来研究奠定了基础。
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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