Optimal design of early warning systems for sovereign debt crises
Fuertes, A.M., Kalotychou, E.
Pages 85-100
AbstractThis paper tackles the design of an optimal early warning system (EWS)
for sovereign default from two distinct angles: the choice of the
econometric methodology and the evaluation of the EWS itself. It compares
K-means clustering of macrodata, a logit regression for macrodata, a logit
regression for credit ratings, and the combined forecasts from all three
methods. The optimal choice of forecast method is shown to depend on the
desired trade-off between missed defaults and false alarms. Hence, it is
crucial to account for the decision-maker's preferences which are
characterized through a loss function and risk-aversion parameter.
Recursive forecast combining generally yields a better balance of type I
and type II errors than any of the individual forecasting methods, and
outperforms the naive predictions.
Keywords: Country risk analysis, Clustering, Default prediction, Emerging markets, Forecast combining, Logit forecast, Loss function, [jel] C15, [jel] C22, [jel] C52