• Media type: E-Article
  • Title: Importance sampling in the presence of PD-LGD correlation
  • Contributor: Metzler, Adam [Author]; Scott, Alexandre [Author]
  • imprint: Basel: MDPI, 2020
  • Language: English
  • DOI: https://doi.org/10.3390/risks8010025
  • ISSN: 2227-9091
  • Keywords: PD-LGD correlation ; portfolio credit risk ; importance sampling ; credit risk ; tail probabilities ; stochastic recovery ; acceptance-rejection sampling ; large deviation probabilities ; loss probabilities
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  • Description: This paper seeks to identify computationally efficient importance sampling (IS) algorithms for estimating large deviation probabilities for the loss on a portfolio of loans. Related literature typically assumes that realised losses on defaulted loans can be predicted with certainty, i.e., that loss given default (LGD) is non-random. In practice, however, LGD is impossible to predict and tends to be positively correlated with the default rate and the latter phenomenon is typically referred to as PD-LGD correlation (here PD refers to probability of default, which is often used synonymously with default rate). There is a large literature on modelling stochastic LGD and PD-LGD correlation, but there is a dearth of literature on using importance sampling to estimate large deviation probabilities in those models. Numerical evidence indicates that the proposed algorithms are extremely effective at reducing the computational burden associated with obtaining accurate estimates of large deviation probabilities across a wide variety of PD-LGD correlation models that have been proposed in the literature.
  • Access State: Open Access
  • Rights information: Attribution (CC BY)