We propose a methodology for producing forecast densities for economic aggregates based on disaggregate evidence. Our ensemble predictive methodology utilizes a linear mixture of experts framework to combine the forecast densities from potentially many component models. Each component represents the univariate dynamic process followed by a single disaggregate variable. The ensemble produced from these components approximates the many unknown relationships between the disaggregates and the aggregate by using time-varying weights on the component forecast densities. In our application, we use the disaggregate ensemble approach to forecast US Personal Consumption Expenditure inflation from 1997Q2 to 2008Q1. Our ensemble combining the evidence ...
We argue that the next generation of macro modellers at Inflation Targeting central banks should ada...
A popular macroeconomic forecasting strategy takes combinations across many models to hedge against ...
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...
We extend the “bottom up” approach for forecasting economic aggregates with disaggregates to probabi...
We explore whether forecasting an aggregate variable using information on its disaggregate component...
This paper focuses on providing consistent forecasts for an aggregate economic indicator, such as a...
Forecasting aggregates and disaggregates with common features This paper focuses on providing consis...
Many contemporaneously aggregated variables have stochastic aggregation weights. We compare differen...
To forecast an aggregate, we propose adding disaggregate variables, instead of combining forecasts o...
When forecasting aggregated time series, several options are available. For example, the multivariat...
When forecasting aggregated time series, several options are available. For example, the multivariat...
Increasingly, professional forecasters and academic researchers in economics present model-based and...
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...
We argue that the next generation of macro modellers at Inflation Targeting central banks should ada...
A popular macroeconomic forecasting strategy takes combinations across many models to hedge against ...
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...
We extend the “bottom up” approach for forecasting economic aggregates with disaggregates to probabi...
We explore whether forecasting an aggregate variable using information on its disaggregate component...
This paper focuses on providing consistent forecasts for an aggregate economic indicator, such as a...
Forecasting aggregates and disaggregates with common features This paper focuses on providing consis...
Many contemporaneously aggregated variables have stochastic aggregation weights. We compare differen...
To forecast an aggregate, we propose adding disaggregate variables, instead of combining forecasts o...
When forecasting aggregated time series, several options are available. For example, the multivariat...
When forecasting aggregated time series, several options are available. For example, the multivariat...
Increasingly, professional forecasters and academic researchers in economics present model-based and...
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...
We argue that the next generation of macro modellers at Inflation Targeting central banks should ada...
A popular macroeconomic forecasting strategy takes combinations across many models to hedge against ...
We examine the effectiveness of recursive-weight and equal-weight combination strategies for forecas...