TU Berlin

Fachgebiet Algorithmische AlgebraProf. Dr. Peter Bürgisser

Inhalt des Dokuments

zur Navigation

Leitung

Prof. Dr. Peter Bürgisser

Lupe

Anschrift
Technische Universität Berlin
Institut für Mathematik
Sekretariat MA 3-2
Straße des 17. Juni 136
10623 Berlin

Büro
Raum MA 317 (3. OG)
Institut für Mathematik

Kontakt

Sekretariat
Beate Nießen
Raum MA 318
Tel.: +49 (0)30 314 - 25771

eMail
peter.buergisser@offmath.tu-berlin.de

Telefon
+49 (0)30 314 - 75902
Faxgerät
+49 (0)30 314 - 25839

Sprechstunde
Während der Vorlesungszeit: Do, 15-16 Uhr.
Während der vorlesungsfreien Zeit: nach Vereinbarung.

Publikationen

Credit risk: Integrating correlations
Zitatschlüssel BKWW-Credit-Risk-Integrating-Correlations
Autor Peter Bürgisser and Alexandre Kurth and Armin Wagner and Michael Wolf
Buchtitel Risk Magazine
Seiten 57-60
Jahr 1999
Jahrgang 12
Nummer 7
Zusammenfassung In the last years the quantitative modelling of credit risk has received a lot of attention within the financial industry. Several models have been released to the public, notably CreditRisk+, Credit Metrics, Credit Portfolio View [CR97, CM97, CP98]. Although different approaches to credit risk are used, studies have shown that the models yield similar results if the parameters are set in a consistent way, see for example [KO98]. CreditRisk+ in particular is ideal for practical implementation and has some nice features, namely: (a) few assumptions have to made, (b) the methodology is very transparent and based on concepts already used in the insurance business, and (c) the loss distribution can be calculated analytically in an efficient way using an iterative procedure. One of the shortcomings of the CreditRisk+ model is the assumption of independent sectors. The sectors represent for example different regions or industries within the economy and individual onligors can be assigned to particular sectors. In order to perform a sector analysis, the authors of CreditRisk+ propose apportioning an obligor's systematic risk across a mixture of independent sectors. However, such an approach is difficult to realize in practice. In this paper, we present a framework for extending the CreditRisk+ model by examining correlations between industries and derive a formula for the unexpected loss and risk contributions. The correct modelling of correlations of default risk between sectors is very important for examining the effects of diversification on active portfolio management. Note that only the loss from defaults of counterparties is modelled. The article is organized as follows: we first derive the probability generating function of the loss distribution for one sector following the CreditRisk+ approach. This is then generalized to several sectors to obtain the first two moments of the loss distribution, as well as a loss distribution consistent wiith the observed correlations between sectors.
Link zur Publikation Download Bibtex Eintrag

Navigation

Direktzugang

Schnellnavigation zur Seite über Nummerneingabe