Forecasting Volatility with Machine Learning and Rough Volatility: Example from the Crypto-Winter
Statistical Finance
2024-02-28 v2 Mathematical Finance
Trading and Market Microstructure
Abstract
We extend the application and test the performance of a recently introduced volatility prediction framework encompassing LSTM and rough volatility. Our asset class of interest is cryptocurrencies, at the beginning of the "crypto-winter" in 2022. We first show that to forecast volatility, a universal LSTM approach trained on a pool of assets outperforms traditional models. We then consider a parsimonious parametric model based on rough volatility and Zumbach effect. We obtain similar prediction performances with only five parameters whose values are non-asset-dependent. Our findings provide further evidence on the universality of the mechanisms underlying the volatility formation process.
Cite
@article{arxiv.2311.04727,
title = {Forecasting Volatility with Machine Learning and Rough Volatility: Example from the Crypto-Winter},
author = {Siu Hin Tang and Mathieu Rosenbaum and Chao Zhou},
journal= {arXiv preprint arXiv:2311.04727},
year = {2024}
}