In this paper, we study stochastic volatility models with time deformation. Such processes relate to early work by Mandelbrot and Taylor (1967), Clark (1973), Tauchen and Pitts (1983), among others. In our setup, the latent process of stochastic volatility evolves in a operational time which differs from calendar time. The time deformation can be determined by past volume of trade, past price changes, possibly with an asymmetric leverage effect, and other variables setting the pace of information arrival. The econometric specification exploits the state-space approach for stochastic volatility models proposed by Harvey, Ruiz and Shephard (1994) as well as matching moment estimation procedures using SNP densities of stock returns and trading...
Stochastic volatility (SV) is the main concept used in the elds of nancial economics and mathematica...
Multi-factor stochastic volatility models of the financial time series can have important applicatio...
In this paper, we are dealing with financial high frequency data; any time an order reaches the mark...
Nous proposons un modèle de volatilité stochastique avec déformation du temps suite aux travaux par ...
textabstractThis paper proposes a new method for estimating continuous-time stochastic volatility (S...
La globalisation des échanges sur le marché mondial des taux de change est une des sources principal...
Financial time series exhibit two different type of non-linear correlations: (i) volatility autocorr...
This paper proposes a new method for estimating continuous-time stochastic volatility (SV) models fo...
This paper introduces the concept of stochastic volatility of volatility in continuous time and, hen...
The goal of this paper is to show that normality of asset returns can be recovered through a stochas...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
Stochastic volatility and jumps are viewed as arising from Brownian subordination given here by an i...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
We develop an empirically highly accurate discrete-time daily stochastic volatility model that expli...
Abstract This paper proposes a framework for the modeling, inference and forecasting of volatility i...
Stochastic volatility (SV) is the main concept used in the elds of nancial economics and mathematica...
Multi-factor stochastic volatility models of the financial time series can have important applicatio...
In this paper, we are dealing with financial high frequency data; any time an order reaches the mark...
Nous proposons un modèle de volatilité stochastique avec déformation du temps suite aux travaux par ...
textabstractThis paper proposes a new method for estimating continuous-time stochastic volatility (S...
La globalisation des échanges sur le marché mondial des taux de change est une des sources principal...
Financial time series exhibit two different type of non-linear correlations: (i) volatility autocorr...
This paper proposes a new method for estimating continuous-time stochastic volatility (SV) models fo...
This paper introduces the concept of stochastic volatility of volatility in continuous time and, hen...
The goal of this paper is to show that normality of asset returns can be recovered through a stochas...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
Stochastic volatility and jumps are viewed as arising from Brownian subordination given here by an i...
We first propose a reduced-form model in discrete time for S&P 500 volatility showing that the forec...
We develop an empirically highly accurate discrete-time daily stochastic volatility model that expli...
Abstract This paper proposes a framework for the modeling, inference and forecasting of volatility i...
Stochastic volatility (SV) is the main concept used in the elds of nancial economics and mathematica...
Multi-factor stochastic volatility models of the financial time series can have important applicatio...
In this paper, we are dealing with financial high frequency data; any time an order reaches the mark...