A multivariate, non-Bayesian, regression-based, or feasible generalized least squares (GLS)-based approach is proposed to estimate time-varying VAR parameter models. Although it has been known that the Kalman-smoothed estimate can be alternatively estimated using GLS for univariate models, we assess the accuracy of the feasible GLS estimator compared with commonly used Bayesian estimators. Unlike the maximum likelihood estimator often used together with the Kalman filter, it is shown that the possibility of the pile-up problem occurring is negligible. In addition, this approach enables us to deal with stochastic volatility models, models with a time-dependent variance–covariance matrix, and models with non-Gaussian errors that allow us to d...
The problem of maximum likelihood estimation of time-varying parameters is considered. A hierarchica...
In the present paper we consider estimation procedures for stationary Stochastic Volatility models, ...
State space modeling provides a unified methodology for treating a wide range of problems in time se...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This paper shows the formal equivalence of Kalman filtering and smoothing techniques to generalized ...
The paper establishes a quasi-Bayesian local likelihood (QBLL) estimation methodology for a multivar...
Shown is a new method for estimating linear models with general time-varying structures such as the ...
Abstract. This paper considers estimation of ARMA models with time-varying coefficients. The ARMA pa...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
This paper develops a method of adaptive modeling that may be applied to forecast non-stationary tim...
Standard VAR and Bayesian VAR models are proven to be reliable tools for modeling and forecasting, y...
This article develops a new econometric methodology for performing stochastic model specification se...
A novel numerical method for the estimation of large-scale time-varying parameter seemingly unrelate...
Until recently, the dominant paradigm in the analysis and forecasting of nonstationary time series h...
The problem of maximum likelihood estimation of time-varying parameters is considered. A hierarchica...
In the present paper we consider estimation procedures for stationary Stochastic Volatility models, ...
State space modeling provides a unified methodology for treating a wide range of problems in time se...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This paper shows the formal equivalence of Kalman filtering and smoothing techniques to generalized ...
The paper establishes a quasi-Bayesian local likelihood (QBLL) estimation methodology for a multivar...
Shown is a new method for estimating linear models with general time-varying structures such as the ...
Abstract. This paper considers estimation of ARMA models with time-varying coefficients. The ARMA pa...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
This paper develops a method of adaptive modeling that may be applied to forecast non-stationary tim...
Standard VAR and Bayesian VAR models are proven to be reliable tools for modeling and forecasting, y...
This article develops a new econometric methodology for performing stochastic model specification se...
A novel numerical method for the estimation of large-scale time-varying parameter seemingly unrelate...
Until recently, the dominant paradigm in the analysis and forecasting of nonstationary time series h...
The problem of maximum likelihood estimation of time-varying parameters is considered. A hierarchica...
In the present paper we consider estimation procedures for stationary Stochastic Volatility models, ...
State space modeling provides a unified methodology for treating a wide range of problems in time se...