Author
Listed:
- Fernando Moreno-Pino
- Stefan Zohren
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.
Suggested Citation
Fernando Moreno-Pino & Stefan Zohren, 2024.
"DeepVol: volatility forecasting from high-frequency data with dilated causal convolutions,"
Quantitative Finance, Taylor & Francis Journals, vol. 24(8), pages 1105-1127, August.
Handle:
RePEc:taf:quantf:v:24:y:2024:i:8:p:1105-1127
DOI: 10.1080/14697688.2024.2387222
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