Real-time macroeconomic data are typically incomplete for today and the immediate past ('ragged edge') and subject to revision. To enable more timely forecasts the recent missing data have to be imputed. The paper presents a state-space model that can deal with publication lags and data revisions. The framework is applied to the US leading index. We conclude that including even a simple model of data revisions improves the accuracy of the imputations and that the univariate imputation method in levels adopted by The Conference Board can be improved upon. (C) 2011 Elsevier Inc. All rights reserved.</p
A major shortcoming of the U.S. leading index is that it does not use the most recent information fo...
We investigate alternative robust approaches to forecasting, using a new class of robust devices, co...
This paper investigates the impact of the timeliness of information releases and data vintage variat...
Real-time macroeconomic data are typically incomplete for today and the immediate past ('ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (`ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (‘ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (‘ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (‘ragged edge...
∗We thank The Conference Board for providing their real-time data set. Helpful discussions with Dick...
Policy makers must base their decisions on preliminary and partially revised data of varying reliabi...
We consider the reasons for nowcasting, how nowcasts can be achieved, and the use and timing of info...
Policy makers must base their decisions on preliminary and partially revised data of varying reliabi...
Realistic modeling of data revisions can play an impor-tant role in policy formulation. A common way...
The accuracy of real-time forecasts of macroeconomic variables that are subject to revisions may cru...
Small-scale VARs are widely used in macroeconomics for forecasting U.S. output, prices, and interest...
A major shortcoming of the U.S. leading index is that it does not use the most recent information fo...
We investigate alternative robust approaches to forecasting, using a new class of robust devices, co...
This paper investigates the impact of the timeliness of information releases and data vintage variat...
Real-time macroeconomic data are typically incomplete for today and the immediate past ('ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (`ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (‘ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (‘ragged edge...
Real-time macroeconomic data are typically incomplete for today and the immediate past (‘ragged edge...
∗We thank The Conference Board for providing their real-time data set. Helpful discussions with Dick...
Policy makers must base their decisions on preliminary and partially revised data of varying reliabi...
We consider the reasons for nowcasting, how nowcasts can be achieved, and the use and timing of info...
Policy makers must base their decisions on preliminary and partially revised data of varying reliabi...
Realistic modeling of data revisions can play an impor-tant role in policy formulation. A common way...
The accuracy of real-time forecasts of macroeconomic variables that are subject to revisions may cru...
Small-scale VARs are widely used in macroeconomics for forecasting U.S. output, prices, and interest...
A major shortcoming of the U.S. leading index is that it does not use the most recent information fo...
We investigate alternative robust approaches to forecasting, using a new class of robust devices, co...
This paper investigates the impact of the timeliness of information releases and data vintage variat...