In this paper we fit the main features of financial returns by means of a two factor long memory stochastic volatility model (2FLMSV). Volatility, which is not observable, is explained by both a short-run and a long-run factor. The first factor follows a stationary AR(1) process whereas the second one, whose purpose is to fit the persistence of volatility observable in data, is a fractional integrated process as proposed by Breidt et al. (1998) and Harvey (1998). We show formally that this model (1) creates more kurtosis than the long memory stochastic volatility (LMSV) of Breidt et al. (1998) and Harvey (1998), (2) deals with volatility persistence and (3) produces small first order autocorrelations of squared observations. In the empirica...
Inspired by the idea that regime switching may give rise to persistence that is observationally equi...
A new stochastic volatility model, called A-LMSV, is proposed to cope simultaneously with leverage e...
One of the typical ways of measuring risk associated with persistence in financial data set can be d...
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...
Recent studies have suggested that stock markets' volatility has a type of long-range dependenc...
A new stochastic volatility model, called A-LMSV, is proposed to cope simultaneously with leverage e...
This thesis develops a new volatility model, Multivariate Long Memory Stochastic Volatility (MLMSV) ...
This paper develops a multivariate long-memory stochastic volatility model which allows the multi-as...
We extend the currently most popular models for the volatility of financial time se-ries, Ornstein-U...
We discuss some of the issues pertaining to modelling and estimating long memory in volatility. The ...
There has been renewed interest in power laws and various types of self-similarity in many financial...
Estimating volatility from recent high frequency data, we revisit the question of the smoothness of ...
It is well known that accurately measuring and forecasting financial volatility plays a central role...
In this paper, we propose a new stochastic volatility model, called A-LMSV, to cope simultaneously w...
Inspired by the idea that regime switching may give rise to persistence that is observationally equi...
A new stochastic volatility model, called A-LMSV, is proposed to cope simultaneously with leverage e...
One of the typical ways of measuring risk associated with persistence in financial data set can be d...
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...
Recent studies have suggested that stock markets' volatility has a type of long-range dependenc...
A new stochastic volatility model, called A-LMSV, is proposed to cope simultaneously with leverage e...
This thesis develops a new volatility model, Multivariate Long Memory Stochastic Volatility (MLMSV) ...
This paper develops a multivariate long-memory stochastic volatility model which allows the multi-as...
We extend the currently most popular models for the volatility of financial time se-ries, Ornstein-U...
We discuss some of the issues pertaining to modelling and estimating long memory in volatility. The ...
There has been renewed interest in power laws and various types of self-similarity in many financial...
Estimating volatility from recent high frequency data, we revisit the question of the smoothness of ...
It is well known that accurately measuring and forecasting financial volatility plays a central role...
In this paper, we propose a new stochastic volatility model, called A-LMSV, to cope simultaneously w...
Inspired by the idea that regime switching may give rise to persistence that is observationally equi...
A new stochastic volatility model, called A-LMSV, is proposed to cope simultaneously with leverage e...
One of the typical ways of measuring risk associated with persistence in financial data set can be d...