Applied Mathematics

Volume 9, Issue 3 (March 2018)

ISSN Print: 2152-7385   ISSN Online: 2152-7393

Google-based Impact Factor: 0.96  Citations  

Non-Negativity Preserving Numerical Algorithms for Problems in Mathematical Finance

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DOI: 10.4236/am.2018.93024    1,440 Downloads   2,552 Views  Citations
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ABSTRACT

We give a study result to analyze a rather different, semi-analytical numerical algorithms based on splitting-step methods with their applications to mathematical finance. As certain subsistent numerical schemes may fail due to producing negative values for financial variables which require non-negativity preserving. These algorithms which we are analyzing preserve not only the non-negativity, but also the character of boundaries (natural, reflecting, absorbing, etc.). The derivatives of the CIR process and the Heston model are being extensively studied. Beyond plain vanilla European options, we creatively apply our splitting-step methods to a path-dependent option valuation. We compare our algorithms to a class of numerical schemes based on Euler discretization which are prevalent currently. The comparisons are given with respect to both accuracy and computational time for the European call option under the CIR model whereas with respect to convergence rate for the path-dependent option under the CIR model and the European call option under the Heston model.

Share and Cite:

Yuan, Y. (2018) Non-Negativity Preserving Numerical Algorithms for Problems in Mathematical Finance. Applied Mathematics, 9, 313-335. doi: 10.4236/am.2018.93024.

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