Article ID Journal Published Year Pages File Type
5101607 Journal of Multinational Financial Management 2016 51 Pages PDF
Abstract
This paper contributes to the empirical literature on early warning systems of banking crises using a new methodology accounting for model uncertainty. We introduce new variables measuring exposure and connectivity of the domestic banking sector to international financial markets. We show that a multinomial logit model based on Bayesian Model Averaging is favored to conventional multinomial and binary models highlighting what is called by Bussiere and Fratzsher (2006) “post-crisis bias”. We show that the application of the multinomial logit model, which distinguishes between more than two states and uses Bayesian Model Averaging, is a valid way to solve this problem and leads to a substantial improvement in the ability to predict banking crises. The empirical results show that for a set of 49 developing and developed countries, the model would have correctly predicted the vast majority of crises.
Related Topics
Social Sciences and Humanities Economics, Econometrics and Finance Economics and Econometrics
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