论文标题
DeepVol:从高频数据和因果关系扩张的高频数据预测的波动性预测
DeepVol: Volatility Forecasting from High-Frequency Data with Dilated Causal Convolutions
论文作者
论文摘要
波动性预测在股本风险措施中起着核心作用。除传统的统计模型外,在将波动率视为单变量的日常时间序列时,可以采用基于机器学习的现代预测技术。此外,计量经济学的研究表明,增加高频盘中数据的每日观察次数有助于改善波动性预测。在这项工作中,我们提出了DeepVol,这是一种基于扩张的因果卷积的模型,该模型使用高频数据来预测日期波动。我们的经验发现表明,扩张的卷积过滤器在从日内财务时间序列中提取相关信息方面非常有效,证明该体系结构可以有效利用高频数据中存在的预测信息,如果实现实现的措施是预先计算的,则否则会丢失这些信息。同时,通过盘内高频数据训练的卷积过滤器有助于我们避免使用日常数据的模型的局限性,例如模型错误指定或手动设计的手工制作的功能,其设计涉及优化准确性和计算效率之间的权衡,并使模型无法适应不适应变化的环境。在我们的分析中,我们使用纳斯达克-100的两年室内数据来评估DeepVol的性能。我们的经验结果表明,所提出的基于深度学习的方法可以从高频数据中有效地学习全球特征,从而与传统方法相比提供了更准确的预测,并产生了更准确的风险措施。
Volatility forecasts play a central role among equity risk measures. Besides traditional statistical models, modern forecasting techniques based on machine learning can be employed when treating volatility as a univariate, daily time-series. Moreover, econometric studies have shown that increasing the number of daily observations with high-frequency intraday data helps to improve volatility predictions. In this work, we propose DeepVol, a model based on Dilated Causal Convolutions that uses high-frequency data to forecast day-ahead volatility. Our empirical findings demonstrate that dilated convolutional filters are highly effective at extracting relevant information from intraday financial time-series, proving that this architecture can effectively leverage predictive information present in high-frequency data that would otherwise be lost if realised measures were precomputed. Simultaneously, dilated convolutional filters trained with intraday high-frequency data help us avoid the limitations of models that use daily data, such as model misspecification or manually designed handcrafted features, whose devise involves optimising the trade-off between accuracy and computational efficiency and makes models prone to lack of adaptation into changing circumstances. In our analysis, we use two years of intraday data from NASDAQ-100 to evaluate the performance of DeepVol. Our empirical results suggest that the proposed deep learning-based approach effectively learns global features from high-frequency data, resulting in more accurate predictions compared to traditional methodologies and producing more accurate risk measures.