Estimating volatility from recent high frequency data, we revisit the question of the smoothness of the volatility process. Our main result is that log-volatility behaves essentially as a fractional Brownian motion with Hurst exponent H of order 0.1, at any reasonable time scale. This leads us to adopt the fractional stochastic volatility (FSV) model of Comte and Renault [16]. We call our model Rough FSV (RFSV) to underline that, in contrast to FSV, H < 1/2. We demonstrate that our RFSV model is remarkably consistent with financial time series data; one application is that it enables us to obtain improved forecasts of realized volatility. Furthermore, we find that although volatility is not long memory in the RFSV model, classical statis...
We extend the currently most popular models for the volatility of financial time se-ries, Ornstein-U...
In recent years, the field of Fractional Brownian motion, Fractional Gaussian noise and long-range d...
Asset price volatility appears to be more persistent than can be captured by individual, short memor...
We investigate the statistical evidence for the use of `rough' fractional processes with Hurst expon...
From an analysis of the time series of volatility using recent high frequency data, Gatheral, Jaisso...
From an analysis of the time series of volatility using recent high frequency data, Gatheral, Jaisso...
Using a large dataset on major FX rates, we test the robustness of the rough fractional volatility m...
In this paper we fit the main features of financial returns by means of a two factor long memory sto...
In this paper we fit the main features of financial returns by means of a two factor long memory sto...
It has been recently shown that spot volatilities can be closely modeled by rough stochastic volatil...
It has been recently shown that rough volatility models reproduce very well the statistical properti...
This thesis tackles several issues raised by the multi-scale properties of financial data. Itconsist...
Several studies find that the return volatility of stocks tends to exhibit long-range dependence, he...
Available online: 17 July 2018Long-range memory estimation is a functional statistical mechanics tec...
In this thesis, we investigate the roughness feature within realised volatility for different finan...
We extend the currently most popular models for the volatility of financial time se-ries, Ornstein-U...
In recent years, the field of Fractional Brownian motion, Fractional Gaussian noise and long-range d...
Asset price volatility appears to be more persistent than can be captured by individual, short memor...
We investigate the statistical evidence for the use of `rough' fractional processes with Hurst expon...
From an analysis of the time series of volatility using recent high frequency data, Gatheral, Jaisso...
From an analysis of the time series of volatility using recent high frequency data, Gatheral, Jaisso...
Using a large dataset on major FX rates, we test the robustness of the rough fractional volatility m...
In this paper we fit the main features of financial returns by means of a two factor long memory sto...
In this paper we fit the main features of financial returns by means of a two factor long memory sto...
It has been recently shown that spot volatilities can be closely modeled by rough stochastic volatil...
It has been recently shown that rough volatility models reproduce very well the statistical properti...
This thesis tackles several issues raised by the multi-scale properties of financial data. Itconsist...
Several studies find that the return volatility of stocks tends to exhibit long-range dependence, he...
Available online: 17 July 2018Long-range memory estimation is a functional statistical mechanics tec...
In this thesis, we investigate the roughness feature within realised volatility for different finan...
We extend the currently most popular models for the volatility of financial time se-ries, Ornstein-U...
In recent years, the field of Fractional Brownian motion, Fractional Gaussian noise and long-range d...
Asset price volatility appears to be more persistent than can be captured by individual, short memor...