On the universality of the volatility formation process: when machine learning and rough volatility agree

06/28/2022
by   Mathieu Rosenbaum, et al.
0

We train an LSTM network based on a pooled dataset made of hundreds of liquid stocks aiming to forecast the next daily realized volatility for all stocks. Showing the consistent outperformance of this universal LSTM relative to other asset-specific parametric models, we uncover nonparametric evidences of a universal volatility formation mechanism across assets relating past market realizations, including daily returns and volatilities, to current volatilities. A parsimonious parametric forecasting device combining the rough fractional stochastic volatility and quadratic rough Heston models with fixed parameters results in the same level of performance as the universal LSTM, which confirms the universality of the volatility formation process from a parametric perspective.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/03/2022

Statistical inference for rough volatility: Central limit theorems

In recent years, there has been substantive empirical evidence that stoc...
research
05/13/2019

Is Volatility Rough ?

Rough volatility models are continuous time stochastic volatility models...
research
10/08/2018

Deep calibration of rough stochastic volatility models

Sparked by Alòs, León, and Vives (2007); Fukasawa (2011, 2017); Gatheral...
research
10/03/2022

Statistical inference for rough volatility: Minimax Theory

Rough volatility models have gained considerable interest in the quantit...
research
09/05/2023

DeepVol: A Deep Transfer Learning Approach for Universal Asset Volatility Modeling

This paper introduces DeepVol, a promising new deep learning volatility ...
research
02/03/2021

Deep Hedging under Rough Volatility

We investigate the performance of the Deep Hedging framework under train...
research
06/15/2023

What Drives the (In)stability of a Stablecoin?

In May 2022, an apparent speculative attack, followed by market panic, l...

Please sign up or login with your details

Forgot password? Click here to reset