We argue that the next generation of macro modellers at Inflation Targeting central banks should adapt a methodology from the weather forecasting literature known as `ensemble modelling'. In this approach, uncertainty about model specifications (e.g., initial conditions, parameters, and boundary conditions) is explicitly accounted for by constructing ensemble predictive densities from a large number of component models. The components allow the modeller to explore a wide range of uncertainties; and the resulting ensemble `integrates out' these uncertainties using time-varying weights on the components. We provide two examples of this modelling strategy: (i) forecasting inflation with a disaggregate ensemble; and (ii) forecasting inflation w...
In this paper we address the issue of assessing and communicating the joint probabilities implied by...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
We extend the “bottom up” approach for forecasting economic aggregates with disaggregates to probabi...
We argue that the next generation of macro modellers at Inflation Targeting central banks should ada...
Forecast combination has become popular in central banks as a means to improve forecasts and to alle...
Forecast combination has become popular in central banks as a means to improve forecasts and to alle...
A popular macroeconomic forecasting strategy takes combinations across many models to hedge against ...
A popular macroeconomic forecasting strategy takes combinations across many models to hedge against ...
Projections of future climate change cannot rely on a single model. It has become common to rely on ...
Projections of future climate change cannot rely on a single model. It has become common to rely on ...
We examine the effectiveness of recursive-weight and equal-weight combination strategies for forecas...
We propose a methodology for producing forecast densities for economic aggregates based on disaggreg...
End users studying impacts and risks caused by human-induced climate change are often presented with...
The origins of uncertainty in climate projections have major consequences for the scientific and pol...
Ensemble forecasting is a modeling approach that combines data sources, models of different types, w...
In this paper we address the issue of assessing and communicating the joint probabilities implied by...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
We extend the “bottom up” approach for forecasting economic aggregates with disaggregates to probabi...
We argue that the next generation of macro modellers at Inflation Targeting central banks should ada...
Forecast combination has become popular in central banks as a means to improve forecasts and to alle...
Forecast combination has become popular in central banks as a means to improve forecasts and to alle...
A popular macroeconomic forecasting strategy takes combinations across many models to hedge against ...
A popular macroeconomic forecasting strategy takes combinations across many models to hedge against ...
Projections of future climate change cannot rely on a single model. It has become common to rely on ...
Projections of future climate change cannot rely on a single model. It has become common to rely on ...
We examine the effectiveness of recursive-weight and equal-weight combination strategies for forecas...
We propose a methodology for producing forecast densities for economic aggregates based on disaggreg...
End users studying impacts and risks caused by human-induced climate change are often presented with...
The origins of uncertainty in climate projections have major consequences for the scientific and pol...
Ensemble forecasting is a modeling approach that combines data sources, models of different types, w...
In this paper we address the issue of assessing and communicating the joint probabilities implied by...
Ensemble simulation propagates a collection of initial states forward in time in a Monte Carlo fashi...
We extend the “bottom up” approach for forecasting economic aggregates with disaggregates to probabi...