A new class of stochastic covariance models based on Wishart distribution is proposed. Three categories of dynamic correlation models are introduced depending on how the time-varying covariance matrix is formulated and whether or not it is a latent variable. A stochastic covariance filter is also developed for filtering and predicting covariances. Extensions of the basic models enable the study of the long memory properties of dynamic correlations, threshold correlation effects and portfolio analysis. Suitable parameterization in the stochastic covariance models and the stochastic covariance filter facilitate efficient calculation of the likelihood function in high-dimensional problems, no matter whether the covariance matrix is observable ...
The accurate prediction of time-changing covariances is an important problem in the modeling of mult...
This paper is concerned with the Bayesian estimation and comparison of flexible, high dimensional mu...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...
Time series of realized covariance matrices can be modeled in the conditional autoregressive Wishart...
We introduce a class of multiplicative dynamic models for realized covariance matrices assumed to be...
The covariance matrix of asset returns, which describes the fluctuation of asset prices, plays a cru...
This paper proposes two types of stochastic correlation structures for Multivariate Stochastic Volat...
We introduce a stochastic process with Wishart marginals: the generalised Wishart process (GWP). It ...
The main objective of this thesis is to implement stochastic correlation into the existing structura...
We propose a factor model which allows a parsimonious representation of the time series evolution of...
New dynamic models for realized covariance matrices are proposed. The expected value of the realized...
This paper proposes two types of stochastic correlation structures for Multivariate Stochastic Volat...
This paper is concerned with the Bayesian estimation and comparison of flexible, high dimensional mu...
This work deals with multivariate stochastic volatility models, which account for a time-varying var...
Modeling correlation (and covariance) matrices can be challenging due to the positive-definiteness c...
The accurate prediction of time-changing covariances is an important problem in the modeling of mult...
This paper is concerned with the Bayesian estimation and comparison of flexible, high dimensional mu...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...
Time series of realized covariance matrices can be modeled in the conditional autoregressive Wishart...
We introduce a class of multiplicative dynamic models for realized covariance matrices assumed to be...
The covariance matrix of asset returns, which describes the fluctuation of asset prices, plays a cru...
This paper proposes two types of stochastic correlation structures for Multivariate Stochastic Volat...
We introduce a stochastic process with Wishart marginals: the generalised Wishart process (GWP). It ...
The main objective of this thesis is to implement stochastic correlation into the existing structura...
We propose a factor model which allows a parsimonious representation of the time series evolution of...
New dynamic models for realized covariance matrices are proposed. The expected value of the realized...
This paper proposes two types of stochastic correlation structures for Multivariate Stochastic Volat...
This paper is concerned with the Bayesian estimation and comparison of flexible, high dimensional mu...
This work deals with multivariate stochastic volatility models, which account for a time-varying var...
Modeling correlation (and covariance) matrices can be challenging due to the positive-definiteness c...
The accurate prediction of time-changing covariances is an important problem in the modeling of mult...
This paper is concerned with the Bayesian estimation and comparison of flexible, high dimensional mu...
In this paper, we develop the theoretical and empirical properties of a new class of multivariate GA...