7

Measuring Credit Portfolio Risk with the Asset Value Approach

A credit portfolio risk model produces a probability distribution of losses that can arise from holding a portfolio of credit risky instruments. A financial institution can use such models to answer questions such as: ‘What is the probability that losses on my loan portfolio exceed 100m over a horizon of one year?’

The annus mirabilis of portfolio credit risk models is 1997, which saw the publication of three different approaches; a fourth approach was developed at about the same time.1

Even though extant models are similar in underlying structure, it is beyond the scope of this chapter to provide thorough implementations of each. Accordingly, we cover just one approach – the asset value or latent variable approach exemplified by CreditMetrics. In this approach, the portfolio loss distribution is obtained through a Monte Carlo simulation. Computing time is thus an important implementation issue. To keep focused on this issue, we start with a simplified framework in which we just consider losses from default (but not from changes in market value). We then show how to speed up simulations, and conclude with some generalizations.

A DEFAULT-MODE MODEL IMPLEMENTED IN THE SPREADSHEET

We can split portfolio credit risk modeling into four main steps. In the following, we describe those steps for a general model and for a specific approach – a default-mode model in which we consider only losses from default:

  1. Specify probabilities ...

Get Credit Risk Modeling Using Excel and VBA with DVD now with the O’Reilly learning platform.

O’Reilly members experience books, live events, courses curated by job role, and more from O’Reilly and nearly 200 top publishers.