2 research outputs found
Counterparty credit exposures for interest rate derivatives using the Stochastic Grid Bundling Method
The regulatory credit value adjustment (CVA) for an outstanding over-the-counter (OTC) derivative portfolio is computed based on the portfolio exposure over its lifetime. Usually, the future portfolio exposure is approximated using the Monte Carlo simulation, as the portfolio value can be driven by several market risk-factors. For derivatives, such as Bermudan swaptions, that do not have an analytical approximation for their Mark-to-Market (MtM) value, the standard market practice is to use the regression functions from the least squares Monte Carlo method to approximate their MtM along simulated scenarios. However, such approximations have significant bias and noise, resulting in inaccurate CVA charge. In this paper, we extend the Stochastic Grid Bundling Method (SGBM) for the one-factor Gaussian short rate model, to efficiently and accurately compute Expected Exposure, Potential Future exposure and CVA for Bermudan swaptions. A novel contribution of the paper is that it demonstrates how different measures, for instance spot and terminal measure, can simultaneously be employed in the SGBM framework, to significantly reduce the variance and bias of the solution
Fast and accurate exercise policies for Bermudan swaptions in the LIBOR market model
This paper describes an American Monte Carlo approach for obtaining fast and accurate exercise
policies for pricing of callable LIBOR Exotics (e.g., Bermudan swaptions) in the LIBOR market
model using the Stochastic Grid Bundling Method (SGBM). SGBM is a bundling and regression
based Monte Carlo method where the continuation value is projected onto a space where the
distribution is known. We also demonstrate an algorithm to obtain accurate and tight lower–upper
bound values without the need for nested Monte Carlo simulations