Abstract
We aim at proposing a Generalized Additive Model (GAM) for Small and Medium Enterprises (SMEs). The
Generalized Extreme Value regression model (Calabrese and Osmetti, 2011) is extended by replacing the
linear predictor with an additive one, defined as the sum of arbitrary smooth functions. In order to focus the
attention on the tail of the response curve for values close to one, we consider the quantile function of the
generalized extreme value distribution as a link function in a GAM. Thus we propose the Generalized
Extreme Value Additive (GEVA) model. To estimate the smooth functions, the local scoring algorithm
(Hastie and Tibshirani, 1986) is applied. In credit risk analysis a pivotal topic is the default probability
estimation for SMEs. For this reason, we apply the GEVA regression to empirical data on Italian Small and
Medium Enterprises (SMEs). On this dataset we compare the performance of the GEVA model with the one
of the logistic additive model. The main advantage of the GEVA model is its excellent performance to
identify defaults for low default portfolio. Thanks to this characteristic, the drawback of the logistic
(additive) regression model in underestimating the default probability (King and Zeng, 2001) is overcome.
Finally, the GEVA model is a robust model, unlike the logistic (additive) regression model, if the sample
percentage of defaults is different from that in the out-of-sample analysis.
Lingua originale | English |
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Titolo della pubblicazione ospite | Book of Abstracts of The Annual International Conference of the Royal Statistical Society |
Pagine | 1 |
Numero di pagine | 1 |
Stato di pubblicazione | Pubblicato - 2010 |
Evento | RSS Conference 2010 - Brighton Durata: 13 set 2010 → 17 set 2010 |
Convegno
Convegno | RSS Conference 2010 |
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Città | Brighton |
Periodo | 13/9/10 → 17/9/10 |
Keywords
- generalized extreme value distribution
- rare event