We develop a flexible modeling framework to produce density nowcasts for U.S. inflation at a trading-day frequency. Our framework: (1) combines individual density nowcasts from three classes of parsimonious mixed-frequency models; (2) adopts a novel flexible treatment in the use of the aggregation function; and (3) permits dynamic model averaging via the use of weights that are updated based on learning from past performance. Together these features provide density nowcasts that can accommodate non-Gaussian properties. We document the competitive properties of the nowcasts generated from our framework using high-frequency real-time data over the period 2000-2015
We propose methods for constructing regularized mixtures of density forecasts. We explore a variety ...
This paper proposes a Bayesian nowcasting approach that utilizes information coming both from large ...
This paper combines multivariate density forecasts of output growth, inflation and interest rates fr...
In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly...
In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly...
This is the authors’ accepted and refereed manuscript to the article. Publisher's webpage: www.tand...
This paper proposes a methodology for now-casting and forecasting inflation using data with a sampli...
This dissertation is intended to model the dynamics of inflation and forecast short-runand long-run ...
We use real‐time macroeconomic variables and combination forecasts with both time‐varying weights an...
We examine the effectiveness of recursive-weight and equal-weight combination strategies for forecas...
We introduce a Combined Density Nowcasting (CDN) approach to Dynamic Factor Models (DFM) that in a c...
In this paper, we empirically evaluate competing approaches for combining inflation density forecast...
Increasingly, professional forecasters and academic researchers in economics present model-based and...
A flexible forecast density combination approach is introduced that can deal with large data sets. I...
Although many macroeconomic series such as US real output growth are sampled quarterly, many potenti...
We propose methods for constructing regularized mixtures of density forecasts. We explore a variety ...
This paper proposes a Bayesian nowcasting approach that utilizes information coming both from large ...
This paper combines multivariate density forecasts of output growth, inflation and interest rates fr...
In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly...
In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly...
This is the authors’ accepted and refereed manuscript to the article. Publisher's webpage: www.tand...
This paper proposes a methodology for now-casting and forecasting inflation using data with a sampli...
This dissertation is intended to model the dynamics of inflation and forecast short-runand long-run ...
We use real‐time macroeconomic variables and combination forecasts with both time‐varying weights an...
We examine the effectiveness of recursive-weight and equal-weight combination strategies for forecas...
We introduce a Combined Density Nowcasting (CDN) approach to Dynamic Factor Models (DFM) that in a c...
In this paper, we empirically evaluate competing approaches for combining inflation density forecast...
Increasingly, professional forecasters and academic researchers in economics present model-based and...
A flexible forecast density combination approach is introduced that can deal with large data sets. I...
Although many macroeconomic series such as US real output growth are sampled quarterly, many potenti...
We propose methods for constructing regularized mixtures of density forecasts. We explore a variety ...
This paper proposes a Bayesian nowcasting approach that utilizes information coming both from large ...
This paper combines multivariate density forecasts of output growth, inflation and interest rates fr...