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Counterparty Risk Valuation: A Marked Branching Diffusion Approach

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arxiv 1203.2369 v1 pith:CWOKXRWE submitted 2012-03-11 q-fin.CP

Counterparty Risk Valuation: A Marked Branching Diffusion Approach

classification q-fin.CP
keywords counterpartyriskalgorithmbranchingcomputationmarkedmethodmonte-carlo
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The purpose of this paper is to design an algorithm for the computation of the counterparty risk which is competitive in regards of a brute force "Monte-Carlo of Monte-Carlo" method (with nested simulations). This is achieved using marked branching diffusions describing a Galton-Watson random tree. Such an algorithm leads at the same time to a computation of the (bilateral) counterparty risk when we use the default-risky or counterparty-riskless option values as mark-to-market. Our method is illustrated by various numerical examples.

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