The unobserved components time series model with stochastic volatility has gained much interest in econometrics, especially for the purpose of modelling and forecasting inflation. We present a feasible simulated maximum likelihood method for parameter estimation from a classical perspective. The method can also be used for evaluating the marginal likelihood function in a Bayesian analysis. We show that our simulation-based method is computationally feasible, for both univariate and multivariate models. We assess the performance of the method in a Monte Carlo study. In an empirical study, we analyse U.S. headline inflation using different univariate and multivariate model specifications
This paper details particle Markov chain Monte Carlo (PMCMC) techniques for analysis of unobserved c...
With the concept of trend inflation now widely understood as to be important as a measure of the pub...
In this paper, we conduct Bayesian stochastic variable selection of Vector Autoregressive (VAR) mode...
© 2021 The Authors. Journal of Applied Econometrics Published by John Wiley & Sons, Ltd.The unobserv...
This article considers a combination of the linear Gaussian state space model and the stochastic vol...
© 2017 American Statistical Association. This article generalizes the popular stochastic volatility ...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
This paper generalizes the popular stochastic volatility in mean model of Koopman and Hol Uspensky (...
This paper discusses estimation of US inflation volatility using time-varying parameter models, in p...
textabstractChanging time series properties of US inflation and economic activity are analyzed withi...
We propose a semiparametric extension of the time-varying parameter regression model with asymmetric...
We introduce a new class of models that has both stochastic volatility and moving average errors, wh...
After the introductory chapter, this thesis comprises two further chapters. The main chapters i...
We introduce a new class of models that has both stochastic volatility and moving average errors, wh...
The time series characteristics of postwar US inflation have been found to vary over time. The chang...
This paper details particle Markov chain Monte Carlo (PMCMC) techniques for analysis of unobserved c...
With the concept of trend inflation now widely understood as to be important as a measure of the pub...
In this paper, we conduct Bayesian stochastic variable selection of Vector Autoregressive (VAR) mode...
© 2021 The Authors. Journal of Applied Econometrics Published by John Wiley & Sons, Ltd.The unobserv...
This article considers a combination of the linear Gaussian state space model and the stochastic vol...
© 2017 American Statistical Association. This article generalizes the popular stochastic volatility ...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
This paper generalizes the popular stochastic volatility in mean model of Koopman and Hol Uspensky (...
This paper discusses estimation of US inflation volatility using time-varying parameter models, in p...
textabstractChanging time series properties of US inflation and economic activity are analyzed withi...
We propose a semiparametric extension of the time-varying parameter regression model with asymmetric...
We introduce a new class of models that has both stochastic volatility and moving average errors, wh...
After the introductory chapter, this thesis comprises two further chapters. The main chapters i...
We introduce a new class of models that has both stochastic volatility and moving average errors, wh...
The time series characteristics of postwar US inflation have been found to vary over time. The chang...
This paper details particle Markov chain Monte Carlo (PMCMC) techniques for analysis of unobserved c...
With the concept of trend inflation now widely understood as to be important as a measure of the pub...
In this paper, we conduct Bayesian stochastic variable selection of Vector Autoregressive (VAR) mode...