The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for state space models. These are a class of time series models relating an observable time series to quantities called states, which are characterized by a simple temporal dependence structure, typically a first order Markov process. The states have sometimes substantial interpretation. Key estimation problems in economics concern latent variables, such as the output gap, potential output, the non-accelerating-inflation rate of unemployment, or NAIRU, core inflation, and so forth. Time-varying volatility, which is quintessential to finance, is an important feature also in macroeconomics. In the multivariate framework relevant features can be common...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
In this paper we review the state space approach to time series analysis and establish the notation ...
In this paper,a method is introduced for approximating the likelihood for the unknown parameters of ...
The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for stat...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This paper derives an expression for the likelihood for a state space model. The expression can be e...
This paper investigates the statistical properties of the Kalman filter for state space models inclu...
State space model is a class of models where the observations are driven by underlying stochastic pr...
This paper investigates the statistical properties of the Kalman filter for state space models inclu...
This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models us...
This paper investigates the statistical properties of estimators of the parameters and unobserved se...
The likelihood function of a general non-linear, non-Gaussian state space model is a high-dimensiona...
State space modeling provides a unified methodology for treating a wide range of problems in time se...
AbstractThe paper reviews and generalizes recent filtering and smoothing algorithms for observations...
The key to handling structural time series models is the state space form. The importance of the sta...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
In this paper we review the state space approach to time series analysis and establish the notation ...
In this paper,a method is introduced for approximating the likelihood for the unknown parameters of ...
The purpose of this chapter is to provide a comprehensive treatment of likelihood inference for stat...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This paper derives an expression for the likelihood for a state space model. The expression can be e...
This paper investigates the statistical properties of the Kalman filter for state space models inclu...
State space model is a class of models where the observations are driven by underlying stochastic pr...
This paper investigates the statistical properties of the Kalman filter for state space models inclu...
This paper overviews maximum likelihood and Gaussian methods of estimating continuous time models us...
This paper investigates the statistical properties of estimators of the parameters and unobserved se...
The likelihood function of a general non-linear, non-Gaussian state space model is a high-dimensiona...
State space modeling provides a unified methodology for treating a wide range of problems in time se...
AbstractThe paper reviews and generalizes recent filtering and smoothing algorithms for observations...
The key to handling structural time series models is the state space form. The importance of the sta...
The present paper concerns a Maximum Likelihood analysis for the Markov switching approach to the fo...
In this paper we review the state space approach to time series analysis and establish the notation ...
In this paper,a method is introduced for approximating the likelihood for the unknown parameters of ...