AbstractPrevious research on the prediction of fiscal aggregates has shown evidence that simple autoregressive models often provide better forecasts of fiscal variables than multivariate specifications. We argue that the multivariate models considered by previous studies are small-scale, probably burdened by overparameterization, and not robust to structural changes. Bayesian Vector Autoregressions (BVARs), on the other hand, allow the information contained in a large data set to be summarized efficiently, and can also allow for time variation in both the coefficients and the volatilities. In this paper we explore the performance of BVARs with constant and drifting coefficients for forecasting key fiscal variables such as government revenue...
Mixed frequency Bayesian vector autoregressions (MF-BVARs) allow forecasters to incor- porate a larg...
This dissertation collects three independent essays in the area of Macroeconomics and Macroeconomic ...
Recent research has shown that a reliable vector autoregression (VAR) for forecasting and structural...
none3siPrevious research on the prediction of fiscal aggregates has shown evidence that simple autor...
AbstractPrevious research on the prediction of fiscal aggregates has shown evidence that simple auto...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
In this paper, we assess the possibility of producing unbiased forecasts for fiscal variables in the...
This paper compares alternative models of time-varying macroeconomic volatility on the basis of the ...
The aim of this paper is to assess whether modeling structural change can help improving the accurac...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
This paper puts forward a Bayesian Global Vector Autoregressive Model with Common Stochastic Volatil...
A class of global-local hierarchical shrinkage priors for estimating large Bayesian vector autoregre...
Macroeconomic data are subject to data revisions. Yet, the usual way of generating real-time density...
AbstractOne of the central tenets of macroeconomics is that fiscal policy can be effective in stabil...
Mixed frequency Bayesian vector autoregressions (MF-BVARs) allow forecasters to incor- porate a larg...
This dissertation collects three independent essays in the area of Macroeconomics and Macroeconomic ...
Recent research has shown that a reliable vector autoregression (VAR) for forecasting and structural...
none3siPrevious research on the prediction of fiscal aggregates has shown evidence that simple autor...
AbstractPrevious research on the prediction of fiscal aggregates has shown evidence that simple auto...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
We propose a new approach to forecasting the term structure of interest rates, which allows to effic...
In this paper, we assess the possibility of producing unbiased forecasts for fiscal variables in the...
This paper compares alternative models of time-varying macroeconomic volatility on the basis of the ...
The aim of this paper is to assess whether modeling structural change can help improving the accurac...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
This paper puts forward a Bayesian Global Vector Autoregressive Model with Common Stochastic Volatil...
A class of global-local hierarchical shrinkage priors for estimating large Bayesian vector autoregre...
Macroeconomic data are subject to data revisions. Yet, the usual way of generating real-time density...
AbstractOne of the central tenets of macroeconomics is that fiscal policy can be effective in stabil...
Mixed frequency Bayesian vector autoregressions (MF-BVARs) allow forecasters to incor- porate a larg...
This dissertation collects three independent essays in the area of Macroeconomics and Macroeconomic ...
Recent research has shown that a reliable vector autoregression (VAR) for forecasting and structural...