A subordinated CIR intensity model with application to Wrong-Way risk CVA
Cheikh Mbaye, Fr\'ed\'eric Vrins

TL;DR
This paper introduces a novel subordinated CIR intensity model for CVA that enhances Wrong-Way Risk impact modeling while maintaining calibration and computational efficiency, addressing limitations of previous models.
Contribution
It proposes a new time-changed CIR intensity model that improves WWR impact modeling without sacrificing calibration or introducing arbitrage, unlike previous approaches.
Findings
The new model achieves larger WWR effects compared to JCIR++.
Calibration constraints are maintained with the new approach.
Monte Carlo computation is accelerated using adaptive control variates.
Abstract
Credit Valuation Adjustment (CVA) pricing models need to be both flexible and tractable. The survival probability has to be known in closed form (for calibration purposes), the model should be able to fit any valid Credit Default Swap (CDS) curve, should lead to large volatilities (in line with CDS options) and finally should be able to feature significant Wrong-Way Risk (WWR) impact. The Cox-Ingersoll-Ross model (CIR) combined with independent positive jumps and deterministic shift (JCIR++) is a very good candidate : the variance (and thus covariance with exposure, i.e. WWR) can be increased with the jumps, whereas the calibration constraint is achieved via the shift. In practice however, there is a strong limit on the model parameters that can be chosen, and thus on the resulting WWR impact. This is because only non-negative shifts are allowed for consistency reasons, whereas the…
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Taxonomy
TopicsCredit Risk and Financial Regulations · Stochastic processes and financial applications · Monetary Policy and Economic Impact
