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Correlation Estimation In Hybrid Systems

Author

Listed:
  • Baron Law

    (Agam Capital Management, LLC, 500 Frank W Burr Blvd, Teaneck, New Jersey 07666, USA)

Abstract

A simple method is proposed to estimate the instantaneous correlations between state variables in a hybrid system from the empirical correlations between observable market quantities such as spot rates, stock prices and implied volatilities. The new algorithm is extremely fast since only low-dimension linear systems are involved. If the resulting matrix from the linear systems is not positive semidefinite, the shrinking method, which requires only bisection-style iterations, is recommended to convert the matrix to positive semidefinite. The square of short-term at-the-money implied volatility is suggested as the proxy for the unobservable stochastic variance. When the implied volatility is not available, a simple trick is provided to fill in the missing correlations. Numerical study shows that the estimates are reasonably accurate, when using more than 1000 data points. In addition, the algorithm is robust to misspecified interest rate model parameters and the short-sampling-period assumption. G2++ and Heston are used for illustration, but the method can be extended to affine term-structure, local volatility and jump-diffusion models, with or without stochastic interest rate.

Suggested Citation

  • Baron Law, 2023. "Correlation Estimation In Hybrid Systems," International Journal of Theoretical and Applied Finance (IJTAF), World Scientific Publishing Co. Pte. Ltd., vol. 26(02n03), pages 1-22, May.
  • Handle: RePEc:wsi:ijtafx:v:26:y:2023:i:02n03:n:s0219024923500085
    DOI: 10.1142/S0219024923500085
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