In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly GDP growth from a system of three commonly used model classes. The density nowcasts are combined in two steps. First, a wide selection of individual models within each model class are combined separately. Then, the nowcasts from the three model classes are combined into a single predictive density. We update the density nowcast for every new data release throughout the quarter, and highlight the importance of new information for the evaluation period 1990Q2-2010Q3. Our results show that the logarithmic score of the predictive densities for U.S. GDP increase almost monotonically as new information arrives during the quarter. While the best pe...
This thesis analyzes the nowcasting of quarterly GDP growth for nine European economies using a dyna...
A flexible forecast density combination approach is introduced that can deal with large data sets. I...
We extend the repeated observations forecasting analysis of Stark and Croushore (2002) to allow for ...
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...
In this paper, we use U.S. real-time data to produce combined density nowcasts of quarterly GDP grow...
We introduce a Combined Density Nowcasting (CDN) approach to Dynamic Factor Models (DFM) that in a c...
This paper performs a fully real-time nowcasting (forecasting) exer-cise of US real gross domestic p...
We develop a flexible modeling framework to produce density nowcasts for U.S. inflation at a trading...
We combine the issues of dealing with variables sampled at mixed frequencies and the use of real-tim...
International audienceAlthough the Covid-19 crisis has shown how high-frequency data can help track ...
none3siThe paper develops a method for producing current quarter forecasts of gross domestic product...
The paper uses real-time data to mimic real-time GDP forecasting activity. Through automatic searche...
The national accounts provide a coherent and exhaustive description of the current state of the econ...
This paper performs a fully real-time nowcasting (forecasting) exercise of US real gross domestic pr...
This thesis analyzes the nowcasting of quarterly GDP growth for nine European economies using a dyna...
A flexible forecast density combination approach is introduced that can deal with large data sets. I...
We extend the repeated observations forecasting analysis of Stark and Croushore (2002) to allow for ...
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...
In this paper, we use U.S. real-time data to produce combined density nowcasts of quarterly GDP grow...
We introduce a Combined Density Nowcasting (CDN) approach to Dynamic Factor Models (DFM) that in a c...
This paper performs a fully real-time nowcasting (forecasting) exer-cise of US real gross domestic p...
We develop a flexible modeling framework to produce density nowcasts for U.S. inflation at a trading...
We combine the issues of dealing with variables sampled at mixed frequencies and the use of real-tim...
International audienceAlthough the Covid-19 crisis has shown how high-frequency data can help track ...
none3siThe paper develops a method for producing current quarter forecasts of gross domestic product...
The paper uses real-time data to mimic real-time GDP forecasting activity. Through automatic searche...
The national accounts provide a coherent and exhaustive description of the current state of the econ...
This paper performs a fully real-time nowcasting (forecasting) exercise of US real gross domestic pr...
This thesis analyzes the nowcasting of quarterly GDP growth for nine European economies using a dyna...
A flexible forecast density combination approach is introduced that can deal with large data sets. I...
We extend the repeated observations forecasting analysis of Stark and Croushore (2002) to allow for ...