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A stochastic correlation extension of the Vasicek credit risk model

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  • Dhruv Bansal
  • Mayank Goud
  • Sourav Majumdar

Abstract

In the Vasicek credit portfolio model, tail risk is driven primarily by the asset-correlation parameter, yet empirically is subject to correlation risk. We propose a stochastic correlation extension of the Vasicek framework in which the correlation state evolves as a diffusion on the circle. This representation accommodates both non-mean-reverting and mean-reverting dependence regimes via circular Brownian motion and von Mises process, while retaining tractable transition densities. Conditionally on a fixed correlation state, we derive closed or semi-closed form expressions for the joint distribution of two assets, the joint first-passage (default) time distribution, and the joint survival probability. A simulation study quantifies how correlation volatility and persistence reshape joint default-at-horizon, survival, and joint barrier-crossing probabilities beyond marginal volatility effects. An empirical illustration using U.S. bank charge-off rates demonstrates economically interpretable time-variation in a dependence index and shows how inferred stochastic dependence translates into materially different joint tail-event probabilities. Overall, circular diffusion models provide a parsimonious and operationally tractable route to incorporating correlation risk into Vasicek structural credit calculations.

Suggested Citation

  • Dhruv Bansal & Mayank Goud & Sourav Majumdar, 2026. "A stochastic correlation extension of the Vasicek credit risk model," Papers 2603.01109, arXiv.org, revised Mar 2026.
  • Handle: RePEc:arx:papers:2603.01109
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