We discuss Bayesian model uncertainty analysis and forecasting in sequential dynamic modeling of multivariate time series. The perspective is that of a decision-maker with a specific forecasting objective that guides thinking about relevant models. Based on formal Bayesian decision-theoretic reasoning, we develop a time-adaptive approach to exploring, weighting, combining and selecting models that differ in terms of predictive variables included. The adaptivity allows for changes in the sets of favored models over time, and is guided by the specific forecasting goals. A synthetic example illustrates how decision-guided variable selection differs from traditional Bayesian model uncertainty analysis and standard model averaging. An applied st...
This paper develops methods for automatic selection of variables in forecasting Bayesian vector auto...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
In the early 70's, Harrison and Stevens made a major contribution to the area of statistical foreca...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
We develop the methodology and a detailed case study in use of a class of Bayesian predictive synthe...
<p>This thesis discusses novel developments in Bayesian analytics for high-dimensional multivariate ...
Bayesian computation for filtering and forecasting analysis is developed for a broad class of dynami...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
In macroeconomics, predicting future realisations of economic variables is the central issue for pol...
This paper builds on some recent work by the author and Werner Ploberger (1991, 1994) on the develop...
This paper considers Bayesian variable selection in regressions with a large number of possibly hig...
We propose a Bayesian combination approach for multivariate predictive densities which relies upon a...
textabstractWe propose a Bayesian combination approach for multivariate predictive densities which r...
We discuss a general approach to dynamic sparsity modeling in multivariate time series analysis. Tim...
This paper develops methods for automatic selection of variables in forecasting Bayesian vector auto...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
In the early 70's, Harrison and Stevens made a major contribution to the area of statistical foreca...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
We develop the methodology and a detailed case study in use of a class of Bayesian predictive synthe...
<p>This thesis discusses novel developments in Bayesian analytics for high-dimensional multivariate ...
Bayesian computation for filtering and forecasting analysis is developed for a broad class of dynami...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
This paper conducts a broad-based comparison of iterated and direct multi-step forecasting approache...
In macroeconomics, predicting future realisations of economic variables is the central issue for pol...
This paper builds on some recent work by the author and Werner Ploberger (1991, 1994) on the develop...
This paper considers Bayesian variable selection in regressions with a large number of possibly hig...
We propose a Bayesian combination approach for multivariate predictive densities which relies upon a...
textabstractWe propose a Bayesian combination approach for multivariate predictive densities which r...
We discuss a general approach to dynamic sparsity modeling in multivariate time series analysis. Tim...
This paper develops methods for automatic selection of variables in forecasting Bayesian vector auto...
We develop and exemplify application of new classes of dynamic models for time series of nonnegative...
In the early 70's, Harrison and Stevens made a major contribution to the area of statistical foreca...