DeepVol: volatility forecasting from high-frequency data with dilated causal convolutions.

IF 1.5 4区 经济学 Q3 BUSINESS, FINANCE Quantitative Finance Pub Date : 2024-09-05 eCollection Date: 2024-01-01 DOI:10.1080/14697688.2024.2387222
Fernando Moreno-Pino, Stefan Zohren
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Abstract

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.

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DeepVol:利用扩张因果卷积从高频数据中预测波动率。
波动率预测在股票风险度量中起着核心作用。除了传统的统计模型,在将波动率作为单变量日时间序列处理时,还可以采用基于机器学习的现代预测技术。此外,计量经济学研究表明,增加日内高频数据的日观测次数有助于改进波动率预测。在这项工作中,我们提出了 DeepVol 模型,这是一个基于稀释因果卷积的模型,它使用高频数据来预测日前波动率。我们的实证研究结果表明,稀释卷积滤波器能非常有效地从日内金融时间序列中提取相关信息,证明这种架构能有效地利用高频数据中的预测信息,而如果预先计算变现指标,这些信息就会丢失。同时,使用日内高频数据训练的扩张卷积滤波器可以帮助我们避免使用日内数据模型的局限性,如模型错误规范或人工设计的手工特征,其设计涉及优化准确性和计算效率之间的权衡,并使模型容易缺乏对不断变化环境的适应性。在我们的分析中,我们使用纳斯达克-100 指数两年的盘中数据来评估 DeepVol 的性能。 我们的实证结果表明,所提出的基于深度学习的方法能有效地从高频数据中学习全局特征,与传统方法相比,它能带来更准确的预测,并产生更准确的风险度量。
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来源期刊
Quantitative Finance
Quantitative Finance 社会科学-数学跨学科应用
CiteScore
3.20
自引率
7.70%
发文量
102
审稿时长
4-8 weeks
期刊介绍: The frontiers of finance are shifting rapidly, driven in part by the increasing use of quantitative methods in the field. Quantitative Finance welcomes original research articles that reflect the dynamism of this area. The journal provides an interdisciplinary forum for presenting both theoretical and empirical approaches and offers rapid publication of original new work with high standards of quality. The readership is broad, embracing researchers and practitioners across a range of specialisms and within a variety of organizations. All articles should aim to be of interest to this broad readership.
期刊最新文献
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