Predicting extreme events in the stock market using generative adversarial networks

Badre Labiad, A. Berrado, L. Benabbou
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Abstract

Accurately predicting extreme stock market fluctuations at the right time will allow traders and investors to make better-informed investment decisions and practice more efficient financial risk management. However, extreme stock market events are particularly hard to model because of their scarce and erratic nature. Moreover, strong trading strategies, market stress tests, and portfolio optimization largely rely on sound data. While the application of generative adversarial networks (GANs) for stock forecasting has been an active area of research, there is still a gap in the literature on using GANs for extreme market movement prediction and simulation. In this study, we proposed a framework based on GANs to efficiently model stock prices’ extreme movements. By creating synthetic real-looking data, the framework simulated multiple possible market-evolution scenarios, which can be used to improve the forecasting quality of future market variations. The fidelity and predictive power of the generated data were tested by quantitative and qualitative metrics. Our experimental results on S&P 500 and five emerging market stock data show that the proposed framework is capable of producing a realistic time series by recovering important properties from real data. The results presented in this work suggest that the underlying dynamics of extreme stock market variations can be captured efficiently by some state-of-the-art GAN architectures. This conclusion has great practical implications for investors, traders, and corporations willing to anticipate the future trends of their financial assets. The proposed framework can be used as a simulation tool to mimic stock market behaviors.
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利用生成对抗网络预测股票市场的极端事件
在正确的时间准确预测股市的极端波动将使交易者和投资者做出更明智的投资决策,并实施更有效的金融风险管理。然而,由于极端股市事件的稀缺性和不稳定性,它们特别难以建模。此外,强有力的交易策略、市场压力测试和投资组合优化在很大程度上依赖于可靠的数据。虽然生成对抗网络(GANs)在股票预测中的应用一直是一个活跃的研究领域,但在使用GANs进行极端市场运动预测和模拟的文献中仍然存在空白。在这项研究中,我们提出了一个基于gan的框架来有效地模拟股票价格的极端运动。通过创建合成的真实数据,该框架模拟了多种可能的市场演变情景,可用于提高对未来市场变化的预测质量。通过定量和定性指标测试生成数据的保真度和预测能力。我们对标准普尔500指数和五个新兴市场股票数据的实验结果表明,所提出的框架能够通过从真实数据中恢复重要属性来产生真实的时间序列。这项工作的结果表明,一些最先进的GAN架构可以有效地捕获极端股票市场变化的潜在动态。这一结论对投资者、交易员和愿意预测其金融资产未来趋势的公司具有重大的实际意义。所提出的框架可以用作模拟股票市场行为的模拟工具。
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来源期刊
International Journal of Advances in Intelligent Informatics
International Journal of Advances in Intelligent Informatics Computer Science-Computer Vision and Pattern Recognition
CiteScore
3.00
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0.00%
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