This paper focuses on nowcasts of tail risk to GDP growth, with a potentially wide array of monthly and weekly information used to produce nowcasts on a weekly basis. We consider Bayesian mixed frequency regressions with stochastic volatility and Bayesian quantile regressions. Our results show that, within some limits, more information helps the accuracy of nowcasts of tail risk to GDP growth. Accuracy typically improves as time moves forward within a quarter, making additional data available, with monthly data more important to accuracy than weekly data. Accuracy also typically improves with the use of financial indicators in addition to a base set of macroeconomic indicators
In this paper, we use U.S. real-time data to produce combined density nowcasts of quarterly GDP grow...
In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly...
The recent decade saw the rapid increase of data size and frequency available for economic and finan...
This paper focuses on nowcasts of tail risk to GDP growth, with a potentially wide array of monthly ...
The paper develops a method for producing current quarter forecasts of gross domestic product growth...
International audienceAlthough the Covid-19 crisis has shown how high-frequency data can help track ...
This chapter uses an application to explore the utility of Bayesian quantile regression (BQR) method...
This dissertation consists of four essays that focus on the measurement and economic analysis of key...
Facing several economic and financial uncertainties, assessing accurately global economic conditions...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
This thesis explores several aspects of econometric methods in time series forecasting of both macro...
We consider the reasons for nowcasting, how nowcasts can be achieved, and the use and timing of info...
Monitoring economic conditions in real-time or Nowcasting is among the most important tasks routinel...
In this article, we develop a mixed frequency dynamic factor model in which the disturbances of both...
In this paper, we focus on the different methods which have been proposed in the literature to date ...
In this paper, we use U.S. real-time data to produce combined density nowcasts of quarterly GDP grow...
In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly...
The recent decade saw the rapid increase of data size and frequency available for economic and finan...
This paper focuses on nowcasts of tail risk to GDP growth, with a potentially wide array of monthly ...
The paper develops a method for producing current quarter forecasts of gross domestic product growth...
International audienceAlthough the Covid-19 crisis has shown how high-frequency data can help track ...
This chapter uses an application to explore the utility of Bayesian quantile regression (BQR) method...
This dissertation consists of four essays that focus on the measurement and economic analysis of key...
Facing several economic and financial uncertainties, assessing accurately global economic conditions...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
This thesis explores several aspects of econometric methods in time series forecasting of both macro...
We consider the reasons for nowcasting, how nowcasts can be achieved, and the use and timing of info...
Monitoring economic conditions in real-time or Nowcasting is among the most important tasks routinel...
In this article, we develop a mixed frequency dynamic factor model in which the disturbances of both...
In this paper, we focus on the different methods which have been proposed in the literature to date ...
In this paper, we use U.S. real-time data to produce combined density nowcasts of quarterly GDP grow...
In this paper we use U.S. real-time vintage data and produce combined density nowcasts for quarterly...
The recent decade saw the rapid increase of data size and frequency available for economic and finan...