This paper shows how particle filtering allows us to undertake likelihood-based inference in dynamic macroeconomic models. The models can be nonlinear and/or non-normal. We describe how to use the output from the particle filter to estimate the structural parameters of the model, those characterizing preferences and technology, and to compare different economies. Both tasks can be implemented from either a classical or a Bayesian perspective. We illustrate the technique by estimating a business cycle model with investment-specific technological change, preference shocks, and stochastic volatility.business cycle; dynamic macroeconomic models; nonlinear and/or non-normal models; particle filtering; stochastic volatility
Time series is widely used in many real-world applications. In this thesis, we will focus on the sc...
In recent years, general state space models have been proven to be extremely useful in modelling wid...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
We note that likelihood inference can be based on an unbiased simulation-based estimator of the like...
Suppose we wish to carry out likelihood based inference but we solely have an unbiased simulation ba...
This paper presents a framework to undertake likelihood-based inference in nonlinear dynamic equilib...
Bayesian inference based only on simulated likelihood: particle filter analysis of dynamic economic ...
Abstract: This paper presents a framework to undertake likelihood-based inference in nonlinear dynam...
Structural models -- that is, statistical models of the macroeconomy which incorporate an underlying...
This article discusses a partially adapted particle filter for estimating the likelihood of nonlinea...
This paper compares twomethods for undertaking likelihood-based inference in dynamic equilibrium eco...
Time-varying volatility is common in macroeconomic data and has been incorporated into macroeconomic...
State space models play an important role in macroeconometric analysis and the Bayesian approach has...
This dissertation investigates questions that arise when we estimate the dynamic stochastic general ...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
Time series is widely used in many real-world applications. In this thesis, we will focus on the sc...
In recent years, general state space models have been proven to be extremely useful in modelling wid...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
We note that likelihood inference can be based on an unbiased simulation-based estimator of the like...
Suppose we wish to carry out likelihood based inference but we solely have an unbiased simulation ba...
This paper presents a framework to undertake likelihood-based inference in nonlinear dynamic equilib...
Bayesian inference based only on simulated likelihood: particle filter analysis of dynamic economic ...
Abstract: This paper presents a framework to undertake likelihood-based inference in nonlinear dynam...
Structural models -- that is, statistical models of the macroeconomy which incorporate an underlying...
This article discusses a partially adapted particle filter for estimating the likelihood of nonlinea...
This paper compares twomethods for undertaking likelihood-based inference in dynamic equilibrium eco...
Time-varying volatility is common in macroeconomic data and has been incorporated into macroeconomic...
State space models play an important role in macroeconometric analysis and the Bayesian approach has...
This dissertation investigates questions that arise when we estimate the dynamic stochastic general ...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
Time series is widely used in many real-world applications. In this thesis, we will focus on the sc...
In recent years, general state space models have been proven to be extremely useful in modelling wid...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...