Implications of Deep Learning for Stock Market Forecasting

Supendi, Devi Kumala, Maria Lusiana Yulianti
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Abstract

This research explores the effectiveness of using deep learning in predicting stock market movements. This research uses rigorous methods to bring out the performance of deep learning models, compare them with traditional methods, and identify critical factors that influence stock market predictions. The research results show that deep learning models, especially LSTM and CNN-LSTM architectures, can achieve satisfactory levels of accuracy and outperform traditional methods by capturing patterns in complex stock market data. In addition, this research identifies external and internal factors that influence predictions of stock market movements. This research's practical and theoretical implications highlight the potential of deep learning in improving investment decision-making and understanding financial market dynamics. Recommendations for future research include exploration of advanced deep learning techniques, integration with traditional methods, emphasis on risk management strategies, continuous evaluation of model performance, and provision of training and education to encourage analysts and investors to adopt this technology. By implementing these recommendations, the potential of deep learning models in financial analysis can be optimized, ultimately improving market efficiency and investment returns.
深度学习对股市预测的影响
本研究探讨了利用深度学习预测股市走势的有效性。本研究采用严谨的方法揭示深度学习模型的性能,将其与传统方法进行比较,并找出影响股市预测的关键因素。研究结果表明,深度学习模型,尤其是 LSTM 和 CNN-LSTM 架构,可以通过捕捉复杂股市数据中的模式达到令人满意的准确度水平,并优于传统方法。此外,本研究还发现了影响股市走势预测的外部和内部因素。本研究的实践和理论意义凸显了深度学习在改善投资决策和理解金融市场动态方面的潜力。对未来研究的建议包括:探索先进的深度学习技术、与传统方法相结合、重视风险管理策略、持续评估模型性能,以及提供培训和教育以鼓励分析师和投资者采用这种技术。通过实施这些建议,可以优化深度学习模型在金融分析中的潜力,最终提高市场效率和投资回报。
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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