This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric stochastic volatility models where there exists a correlation between today’s return and tomorrow’s volatility. The state vector is divided into several blocks where each block consists of many state variables. For each block, corresponding disturbances are sampled simultaneously from their conditional posterior distribution. The algorithm is based on the multivariate normal approximation of the conditional posterior density and exploits a conventional simulation smoother for a linear and Gaussian state space model. The performance of our method is illustrated using two examples (1) simple asymmetric stochastic volatility model and (2) asymme...
This article introduces a new model to capture simultaneously the mean and variance asymmetries in t...
Filtering and smoothing algorithms that estimate the integrated variance in Lévy-driven stochastic v...
A new version of the local scale model of Shephard (1994) is presented. Its features are identically...
This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric ...
A new efficient simulation smoother and disturbance smoother are introduced for asymmetric stochasti...
This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric ...
This article introduces a new efficient simulation smoother and disturbance smoother for general sta...
This thesis introduces a generalization of the Threshold Stochastic Volatility (THSV) model proposed...
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
This paper proposes a novel simulation-based inference for an asymmetric stochastic volatility model...
A new technique for nonlinear state and parameter estimation of the discrete time stochastic volatil...
A threshold stochastic volatility (SV) model is used for capturing time-varying volatilities and non...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
In this paper we model the Gaussian errors in the standard Gaussian linear state space model as stoc...
This article introduces a new model to capture simultaneously the mean and variance asymmetries in t...
Filtering and smoothing algorithms that estimate the integrated variance in Lévy-driven stochastic v...
A new version of the local scale model of Shephard (1994) is presented. Its features are identically...
This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric ...
A new efficient simulation smoother and disturbance smoother are introduced for asymmetric stochasti...
This article introduces a new efficient simulation smoother and disturbance smoother for asymmetric ...
This article introduces a new efficient simulation smoother and disturbance smoother for general sta...
This thesis introduces a generalization of the Threshold Stochastic Volatility (THSV) model proposed...
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
This paper proposes a novel simulation-based inference for an asymmetric stochastic volatility model...
A new technique for nonlinear state and parameter estimation of the discrete time stochastic volatil...
A threshold stochastic volatility (SV) model is used for capturing time-varying volatilities and non...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
In this paper we model the Gaussian errors in the standard Gaussian linear state space model as stoc...
This article introduces a new model to capture simultaneously the mean and variance asymmetries in t...
Filtering and smoothing algorithms that estimate the integrated variance in Lévy-driven stochastic v...
A new version of the local scale model of Shephard (1994) is presented. Its features are identically...