TY - JOUR
T1 - The Heston–Queue-Hawkes process
T2 - A new self-exciting jump–diffusion model for options pricing, and an extension of the COS method for discrete distributions
AU - Souto Arias, Luis A.
AU - Cirillo, Pasquale
AU - Oosterlee, Cornelis W.
N1 - Publisher Copyright:
© 2024 The Authors
PY - 2025/1/15
Y1 - 2025/1/15
N2 - We propose a new self-exciting jump–diffusion process, the Heston–Queue-Hawkes (HQH) model, which integrates the well-known Heston model with the recently introduced Queue-Hawkes (Q-Hawkes) jump process. Similar to the Heston–Hawkes process (HH), the HQH model effectively captures both the slow and continuous evolution of prices, and the sudden and impactful market movements due to self-excitation and contagion. But a significant advantage of the HQH model is that its characteristic function is available in closed form, allowing for the efficient application of Fourier-based fast pricing algorithms, such as the COS method (which we extend to deal with discrete distributions). We also demonstrate that, by leveraging partial integrals of the characteristic function, which are explicitly known for the HQH process, we can reduce the dimensionality of the COS method, thereby decreasing its numerical complexity. Our numerical results for pricing European and Bermudan options indicate that the HQH model provides a broader range of volatility smiles compared to the Bates model, while maintaining a substantially lower computational burden than the HH process.
AB - We propose a new self-exciting jump–diffusion process, the Heston–Queue-Hawkes (HQH) model, which integrates the well-known Heston model with the recently introduced Queue-Hawkes (Q-Hawkes) jump process. Similar to the Heston–Hawkes process (HH), the HQH model effectively captures both the slow and continuous evolution of prices, and the sudden and impactful market movements due to self-excitation and contagion. But a significant advantage of the HQH model is that its characteristic function is available in closed form, allowing for the efficient application of Fourier-based fast pricing algorithms, such as the COS method (which we extend to deal with discrete distributions). We also demonstrate that, by leveraging partial integrals of the characteristic function, which are explicitly known for the HQH process, we can reduce the dimensionality of the COS method, thereby decreasing its numerical complexity. Our numerical results for pricing European and Bermudan options indicate that the HQH model provides a broader range of volatility smiles compared to the Bates model, while maintaining a substantially lower computational burden than the HH process.
KW - Bermudan option
KW - COS method
KW - Jump clustering
KW - Queue-Hawkes process
KW - Volatility smile
UR - https://www.scopus.com/pages/publications/85201517300
U2 - 10.1016/j.cam.2024.116177
DO - 10.1016/j.cam.2024.116177
M3 - Article
AN - SCOPUS:85201517300
SN - 0377-0427
VL - 454
JO - Journal of Computational and Applied Mathematics
JF - Journal of Computational and Applied Mathematics
M1 - 116177
ER -