Reconstructing input models via simulation optimization
Aleksandrina Goeva, Henry Lam, et al.
WSC 2014
Counterparty credit risk (CCR), a key driver of the 2007–8 credit crisis, has become one of the main focuses of major global and US regulatory standards. Financial institutions invest large amounts of resources employing Monte Carlo simulation to measure and price their counterparty credit risk. We develop efficient Monte Carlo CCR estimation frameworks by focusing on the most widely used and regulatory-driven CCR measures: expected positive exposure, credit value adjustment, and effective expected positive exposure. Our numerical examples illustrate that our proposed efficient Monte Carlo estimators outperform the existing crude estimators of these CCR measures substantially in terms of mean square error (MSE).We also demonstrate that the two widely used sampling methods, the so-called path dependent simulation and direct jump to simulation date, are not equivalent in that they lead to Monte Carlo CCR estimators which are drastically different in terms of their MSE.
Aleksandrina Goeva, Henry Lam, et al.
WSC 2014
Apoorv Saxena, Dieter Claeys, et al.
Computer Communications
Bo Zhang, Hayriye Ayhan
IEEE TACON
Bo Zhang, Bert Zwart
Operations Research Letters