Efficient Exponential Tilting for Portfolio Credit Risk
Cheng-Der Fuh, Chuan-Ju Wang

TL;DR
This paper introduces an efficient importance sampling method using exponential tilting for accurately estimating rare credit risk events in large, heterogeneous portfolios modeled with multivariate normal mixture copulas, improving computational efficiency.
Contribution
It develops a novel exponential tilting importance sampling algorithm tailored for multivariate normal mixture models, enabling more efficient rare event simulation in portfolio credit risk analysis.
Findings
The method accurately estimates large loss probabilities in complex portfolios.
Simulation results demonstrate significant efficiency gains over traditional methods.
Empirical example validates the practical applicability of the approach.
Abstract
This paper considers the problem of measuring the credit risk in portfolios of loans, bonds, and other instruments subject to possible default under multi-factor models. Due to the amount of the portfolio, the heterogeneous effect of obligors, and the phenomena that default events are rare and mutually dependent, it is difficult to calculate portfolio credit risk either by means of direct analysis or crude Monte Carlo under such models. To capture the extreme dependence among obligors, we provide an efficient simulation method for multi-factor models with a normal mixture copula that allows the multivariate defaults to have an asymmetric distribution, while most of the literature focuses on simulating one-dimensional cases. To this end, we first propose a general account of an importance sampling algorithm based on an unconventional exponential embedding, which is related to the…
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Taxonomy
TopicsCredit Risk and Financial Regulations · Probability and Risk Models · Financial Risk and Volatility Modeling
