Optimizing Neural Networks for Bermudan Option Pricing: Convergence Acceleration, Future Exposure Evaluation and Interpolation in Counterparty Credit Risk
This paper presents a Monte-Carlo-based artificial neural network framework for pricing Bermudan options, offering several notable advantages. These advantages encompass the efficient static hedging of the target Bermudan option and the effective generation of exposure profiles for risk management....
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Zusammenfassung: | This paper presents a Monte-Carlo-based artificial neural network framework
for pricing Bermudan options, offering several notable advantages. These
advantages encompass the efficient static hedging of the target Bermudan option
and the effective generation of exposure profiles for risk management. We also
introduce a novel optimisation algorithm designed to expedite the convergence
of the neural network framework proposed by Lokeshwar et al. (2022) supported
by a comprehensive error convergence analysis. We conduct an extensive
comparative analysis of the Present Value (PV) distribution under Markovian and
no-arbitrage assumptions. We compare the proposed neural network model in
conjunction with the approach initially introduced by Longstaff and Schwartz
(2001) and benchmark it against the COS model, the pricing model pioneered by
Fang and Oosterlee (2009), across all Bermudan exercise time points.
Additionally, we evaluate exposure profiles, including Expected Exposure and
Potential Future Exposure, generated by our proposed model and the
Longstaff-Schwartz model, comparing them against the COS model. We also derive
exposure profiles at finer non-standard grid points or risk horizons using the
proposed approach, juxtaposed with the Longstaff Schwartz method with linear
interpolation and benchmark against the COS method. In addition, we explore the
effectiveness of various interpolation schemes within the context of the
Longstaff-Schwartz method for generating exposures at finer grid horizons. |
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DOI: | 10.48550/arxiv.2402.15936 |