基于深度学习和注意机制的隐含波动率微笑面预测

Shengli Chen, Zili Zhang
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引用次数: 5

摘要

隐含波动率微笑面是期权定价的基础,期权波动率微笑面的动态演变是难以预测的。本文将注意机制引入LSTM,开创性地建立了一种结合深度学习和注意机制的波动面预测方法。LSTM的遗忘门使其具有较强的泛化能力,其反馈结构使其能够表征金融波动的长记忆。注意机制在LSTM网络中的应用可以显著增强LSTM网络对输入特征的选择能力。实验结果表明,与未预测隐含波动率面相比,使用预测隐含波动率面构建的两种策略具有更高的收益和夏普比率。本文证实了利用人工智能预测隐含波动面具有理论和经济价值。该研究方法为期权定价和期权策略提供了新的参考。
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Forecasting Implied Volatility Smile Surface via Deep Learning and Attention Mechanism
The implied volatility smile surface is the basis of option pricing, and the dynamic evolution of the option volatility smile surface is difficult to predict. In this paper, attention mechanism is introduced into LSTM, and a volatility surface prediction method combining deep learning and attention mechanism is pioneeringly established. LSTM's forgetting gate makes it have strong generalization ability, and its feedback structure enables it to characterize the long memory of financial volatility. The application of attention mechanism in LSTM networks can significantly enhance the ability of LSTM networks to select input features. The experimental results show that the two strategies constructed using the predicted implied volatility surfaces have higher returns and Sharpe ratios than that the volatility surfaces are not predicted. This paper confirms that the use of AI to predict the implied volatility surface has theoretical and economic value. The research method provides a new reference for option pricing and strategy.
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