There is a one-to-one mapping between the conventional time series parameters of a third-order autoregression and the more interpretable parameters of secular half-life, cyclical half-life and cycle period. The latter parameterization is better suited to interpretation of results using both Bayesian and maximum likelihood methods and to expression of a substantive prior distribution using Bayesian methods. The paper demonstrates how to approach both problems using the sequentially adaptive Bayesian learning algorithm and sequentially adaptive Bayesian learning algorithm (SABL) software, which eliminates virtually of the substantial technical overhead required in conventional approaches and produces results quickly and reliably. The work uti...
In many applications data are collected sequentially in time with very short time intervals between ...
This paper incorporates the so-called Bhaduri-Marglin accumulation function in Goodwin's original gr...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
<p>The advances in three related areas of state-space modeling, sequential Bayesian learning, and de...
Contains fulltext : 72783.pdf (publisher's version ) (Open Access)This thesis desc...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
We propose a likelihood-based Bayesian method that exploits up-to-date sequential Monte Carlo method...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
"'What's going to happen next?' Time series data hold the answers, and Bayesian methods represent th...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Bayesian inference in economics is primarily perceived as a methodology for cases where the data are...
The subject of this paper is modelling, estimation, inference and prediction for economic time serie...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
This paper incorporates the so-called Bhaduri-Marglin accumulation function in Goodwin's original gr...
In many applications data are collected sequentially in time with very short time intervals between ...
This paper incorporates the so-called Bhaduri-Marglin accumulation function in Goodwin's original gr...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
<p>The advances in three related areas of state-space modeling, sequential Bayesian learning, and de...
Contains fulltext : 72783.pdf (publisher's version ) (Open Access)This thesis desc...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
We propose a likelihood-based Bayesian method that exploits up-to-date sequential Monte Carlo method...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
"'What's going to happen next?' Time series data hold the answers, and Bayesian methods represent th...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Bayesian inference in economics is primarily perceived as a methodology for cases where the data are...
The subject of this paper is modelling, estimation, inference and prediction for economic time serie...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
This paper incorporates the so-called Bhaduri-Marglin accumulation function in Goodwin's original gr...
In many applications data are collected sequentially in time with very short time intervals between ...
This paper incorporates the so-called Bhaduri-Marglin accumulation function in Goodwin's original gr...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...