Abstract

Previous 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 revenues, expenditures, and interest payments on the outstanding debt. We focus on both point and density forecasting, as assessments of a country’s fiscal stability and overall credit risk should typically be based on the specification of a whole probability distribution for the future state of the economy. Using data from the US and the largest European countries, we show that both the adoption of a large system and the introduction of time variation help in forecasting, with the former playing a relatively more important role in point forecasting, and the latter being more important for density forecasting.

Highlights

  • The forecasting of future developments in fiscal variables has been of increasing importance in recent years, especially since the latest financial and Euro-area sovereign debt crisis

  • We find that the use of a multivariate model does help, provided that shrinkage is imposed in order to reduce the parameter uncertainty

  • These results indicate that, for point forecasts, the use of a large information set is of more importance than the modelling of time variation in the coefficients and volatilities, and that the use of a large Bayesian Vector Autoregressions (BVARs) should be preferred to the use of smaller systems with time-varying coefficients

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Summary

Introduction

The forecasting of future developments in fiscal variables has been of increasing importance in recent years, especially since the latest financial and Euro-area sovereign debt crisis. Following the latest developments in the international debt markets, it is apparent that markets take economic fundamentals into account seriously, and penalize countries heavily for fiscal imbalances (von Hagen, Schuknecht, & Wolswijk, 2011). Arghyrou and Kontonikas (2012) claim that there has been a significant shift in market behavior since 2007, from a convergence-based pricing model to a fundamentalsbased pricing model, meaning that forecasting fundamental macroeconomic variables has become more important. A. Carriero et al / International Journal of Forecasting 31 (2015) 325–348 securities issued by governments, use forecasts to express their own views on the fiscal and monetary policies followed by national authorities

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