Sponsored educational feature: Counterparty credit risk in portfolio risk management

Counterparty credit risk in portfolio risk management

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Prominent financial institution failures reminded market participants that over-the-counter derivatives bring counterparty credit risk. Even as these markets move towards settlement through clearing houses, significant volumes of existing and new transactions remain bilaterally settled, especially as non-standard derivatives may not qualify for central clearing. UBS Delta is providing tools for clients to measure counterparty exposure alongside other investment risk

Prudent risk management of credit portfolios includes measurement and limitation of exposure to individual issuers to manage concentration risk. Investment portfolios will have limits, for example, on percentage of current value invested in securities issued by “Bank XYZ”. Where over-the-counter (OTC) derivative counterparties are also issuers of securities held, counterparty risk may be incremental to issuer exposure. If a portfolio includes a swap with Bank XYZ as the counterparty, then exposure to them failing on that swap should be considered alongside exposure to them failing on their debt issues.

Counterparty credit risk measurement
Counterparty exposure is properly measured not just by the current value of trades with a counterparty, but also by how this value can move as markets move. Where sets of trades with counterparties feature multiple risk drivers/asset classes, modelling the potential exposure becomes a complex problem. Many investment banks have had to tackle this challenge. At UBS we have recently built a new counterparty risk trading system, which we are rolling out internally and now making available to clients through UBS Delta, our portfolio risk management and performance system for clients.

Exposure modelling
Here we use a simple example to explain exposure measures: The only trade with counterparty “MadeUpBankLtd” is a foreign exchange forward, buying EUR10m for USD, one-year forward at 1.3600. We allow (for educational purposes only) currency returns to take seven equally spaced values, with defined probabilities. We calibrate the distribution ensuring that the mean price equals the forward and standard deviation of returns equals one-year volatility.

For each rate we calculate the value of the trade (and thus the netting set) and from that the counterparty exposure: positive netting set value equals exposure; negative and the exposure is zero, as money is owed to the counterparty. (Note: In either case, we will lose the transaction at default. If we wish to keep the same position in EUR|USD, the trade will need replacing.)

The average of these exposure numbers – expected exposure (EE) – is just over USD0.5m. EE is driven by EUR|USD and by the volatility of EUR|USD, due to asymmetry of the exposure profile. Potential future exposure (PFE), a measure of the extreme of the exposure, is just under USD3m, at the 97.5% confidence level. PFE is commonly used to limit exposure to individual counterparties.

EE numbers have the advantage that, when being aggregated across netting sets (that cannot be netted together), the EEs are additive, unlike PFEs. EEs are therefore often used for portfolio level measures and limits.

Sensitivities
We can use this simple model to derive useful measures of sensitivity of exposure to market drivers and volatility changes. Shifting EUR|USD up by 0.01 pushes the EE up on this trade by ~USD32,000 and the exposure rises by ~USD49,000 per one point rise in volatility. Where netting sets have large numbers of market drivers, sensitivity measures are very useful, especially when volatile markets cause large exposure moves just as counterparty credit may need extra attention.

Exposure profiles
Performing the same exercise for different time horizons will give EE and PFE exposure profiles. Taking the second row of table A as an example, we can show the exposure profile (EE and PFE) across the maturity spectrum for this set of receive-fixed ITM swaps. Many risk limit frameworks use peak PFE/peak EE measures.

Credit valuation adjustment
Credit valuation adjustment (CVA) can be a useful measure for investment managers understanding and hedging counterparty risk. It is an accounting adjustment to positive replacement values of derivative instruments for financial institutions. It is the estimated cost of hedging counterparty exposure, based on the EE profile and the credit default swap (CDS) market, accounting for correlation between exposure and probability of counterparty default (‘wrong-way risk’). Using UBS Delta, clients can calculate CVA for a netting pool and show sensitivities of CVA to movements in credit spread and underlying market drivers – table A – in order to hedge CVA.

Exposure measurement for portfolio managers
If a pension scheme chooses to bridge an asset/liability gap by receiving fixed on long-dated interest rate swaps, that hedge will only be effective as long as the counterparties to the trades survive.

Even where netting sets are collateralised, counterparty risk should be managed. For example, taking the first netting set (“ABank Ltd”) above and modelling as a fully collateralised relationship gives a 15-day 99% close-out value-at-risk of USD131m.

For the buy side in general, exposure to counterparties needs to be monitored, and understanding the sensitivity of exposure to movements in underlying drivers is very important for management of counterparty risk.

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