Fitting and Forecasting Sovereign Defaults Using Multiple Risk Signals

59 Pages Posted: 30 Nov 2011

See all articles by Roberto Savona

Roberto Savona

University of Brescia - Department of Economics and Management

Marika Vezzoli

University of Brescia

Multiple version iconThere are 2 versions of this paper

Date Written: November 30, 2011

Abstract

In this paper we face the fitting versus forecasting paradox with the objective of realizing an optimal Early Warning System to better describe and predict past and future sovereign defaults. We do this by proposing a new Regression Tree-based model that signals a potential crisis whenever pre-selected indicators exceed specific thresholds. Using data on 66 emerging markets over the period 1975-2002, our model provides an accurate description of past data, although not the best description relative to existing competing models (Logit, Stepwise logit, Noise-to-Signal Ratio and Regression Trees), and produces the best forecasts accommodating to different risk aversion targets. By modulating in- and out-of sample model accuracy, our methodology leads to unambiguous empirical results, since we find that illiquidity (short-term debt to reserves ratio), insolvency (reserve growth) and contagion risks act as the main determinants/predictors of past/future debt crises.

Keywords: Data mining, Evaluating forecasts, Model selection, Panel data, Probability forecasting

JEL Classification: C5, E6, F3, F4

Suggested Citation

Savona, Roberto and Vezzoli, Marika, Fitting and Forecasting Sovereign Defaults Using Multiple Risk Signals (November 30, 2011). Available at SSRN: https://ssrn.com/abstract=1966552 or http://dx.doi.org/10.2139/ssrn.1966552

Roberto Savona (Contact Author)

University of Brescia - Department of Economics and Management ( email )

Contrada Santa Chiara, 50
BRESCIA, BS 25122
Italy

Marika Vezzoli

University of Brescia ( email )

Piazza del Mercato, 15
25122 Brescia
Italy

Do you have negative results from your research you’d like to share?

Paper statistics

Downloads
110
Abstract Views
916
Rank
330,110
PlumX Metrics