Haar Wavelets-Based Approach for Quantifying Credit Portfolio Losses

Quantitative Finance, May 2011

15 Pages Posted: 25 Jan 2013

See all articles by Josep Masdemont

Josep Masdemont

Polytechnic University of Catalonia (UPC)

Luis Ortiz-Gracia

University of Barcelona

Date Written: 2011

Abstract

This paper proposes a new methodology to compute Value at Risk (VaR) for quantifying losses in credit portfolios. We approximate the cumulative distribution of the loss function by a finite combination of Haar wavelet basis functions and calculate the coefficients of the approximation by inverting its Laplace transform. The Wavelet Approximation (WA) method is particularly suitable for non-smooth distributions, often arising in small or concentrated portfolios, when the hypothesis of the Basel II formulas are violated. To test the methodology we consider the Vasicek one-factor portfolio credit loss model as our model framework. WA is an accurate, robust and fast method, allowing to estimate VaR much more quickly than with a Monte Carlo (MC) method at the same level of accuracy and reliability

Keywords: credit risk, portfolio losses, Haar wavelets

JEL Classification: C63

Suggested Citation

Masdemont, Josep and Ortiz-Gracia, Luis, Haar Wavelets-Based Approach for Quantifying Credit Portfolio Losses (2011). Quantitative Finance, May 2011, Available at SSRN: https://ssrn.com/abstract=2206495

Josep Masdemont

Polytechnic University of Catalonia (UPC) ( email )

C. Jordi Girona, 31
Barcelona, 08034
Spain

Luis Ortiz-Gracia (Contact Author)

University of Barcelona ( email )

Diagonal, 690
08034 Barcelona
Spain

Do you have negative results from your research you’d like to share?

Paper statistics

Downloads
98
Abstract Views
608
Rank
489,408
PlumX Metrics