Basel II imposes regulatory capital on banks related to the default risk of their credit portfolio. Banks using an internal rating approach compute the regulatory capital from pooled probabilities of default. These pooled probabilities can be calculated by clustering credit borrowers into different buckets and computing the mean PD for each bucket. The clustering problem can become very complex when Basel II regulations and real-world constraints are taken into account. Search heuristics have already proven remarkable performance in tackling this problem as complex as it is. A Threshold Accepting algorithm is proposed, which exploits the inherent discrete nature of the clustering problem. This algorithm is found to outperform alternative methodologies already proposed in the literature, such as standard k-means and Differential Evolution. Besides considering several clustering objectives for a given number of buckets, we extend the analysis further by introducing new methods to determine the optimal number of buckets in which to cluster banks’ clients.

Lyra, M., J., Paha, S., Paterlini e P., Winker. "Optimization heuristics for determining internal grading scales" Working paper, RECENT WORKING PAPER SERIES, Dipartimento di Economia Marco Biagi, 2008.

Optimization heuristics for determining internal grading scales

Paterlini, S.;
2008

Abstract

Basel II imposes regulatory capital on banks related to the default risk of their credit portfolio. Banks using an internal rating approach compute the regulatory capital from pooled probabilities of default. These pooled probabilities can be calculated by clustering credit borrowers into different buckets and computing the mean PD for each bucket. The clustering problem can become very complex when Basel II regulations and real-world constraints are taken into account. Search heuristics have already proven remarkable performance in tackling this problem as complex as it is. A Threshold Accepting algorithm is proposed, which exploits the inherent discrete nature of the clustering problem. This algorithm is found to outperform alternative methodologies already proposed in the literature, such as standard k-means and Differential Evolution. Besides considering several clustering objectives for a given number of buckets, we extend the analysis further by introducing new methods to determine the optimal number of buckets in which to cluster banks’ clients.
2008
Settembre
Lyra, M.; Paha, J.; Paterlini, S.; Winker, P.
Lyra, M., J., Paha, S., Paterlini e P., Winker. "Optimization heuristics for determining internal grading scales" Working paper, RECENT WORKING PAPER SERIES, Dipartimento di Economia Marco Biagi, 2008.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1386751
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