TY - JOUR
T1 - Iterated poisson processes for catastrophic risk modeling in ruin theory
AU - Hu, Dongdong
AU - Rachev, Svetlozar T.
AU - Sayit, Hasanjan
AU - Yang, Hailiang
AU - Yildirim, Yildiray
N1 - Publisher Copyright:
© 2025 The Author(s)
PY - 2026/1
Y1 - 2026/1
N2 - This paper studies the properties of the Multiple Iterated Poisson Process (MIPP), a stochastic process constructed by repeatedly time-changing a Poisson process, and its applications in ruin theory. Like standard Poisson processes, MIPPs have exponentially distributed sojourn times (waiting times between jumps). We explicitly derive the probabilities of all possible jump sizes at the first jump and obtain the Laplace transform of the joint distribution of the first jump time and its corresponding jump size. In ruin theory, the classical Cramér–Lundberg model assumes that claims arrive independently according to a Poisson process. In contrast, our model employs an MIPP to allow for clustered arrivals, reflecting real-world scenarios, such as catastrophic events. Under this new framework, we derive the corresponding scale function in closed form, facilitating accurate calculations of the probability of ruin in the presence of clustered claims. These results improve the modeling of extreme risks and have practical implications for insurance solvency assessments, pricing reinsurance, and the estimation of capital reserves.
AB - This paper studies the properties of the Multiple Iterated Poisson Process (MIPP), a stochastic process constructed by repeatedly time-changing a Poisson process, and its applications in ruin theory. Like standard Poisson processes, MIPPs have exponentially distributed sojourn times (waiting times between jumps). We explicitly derive the probabilities of all possible jump sizes at the first jump and obtain the Laplace transform of the joint distribution of the first jump time and its corresponding jump size. In ruin theory, the classical Cramér–Lundberg model assumes that claims arrive independently according to a Poisson process. In contrast, our model employs an MIPP to allow for clustered arrivals, reflecting real-world scenarios, such as catastrophic events. Under this new framework, we derive the corresponding scale function in closed form, facilitating accurate calculations of the probability of ruin in the presence of clustered claims. These results improve the modeling of extreme risks and have practical implications for insurance solvency assessments, pricing reinsurance, and the estimation of capital reserves.
KW - Jump time
KW - Martingale
KW - Multiple subordination
KW - Poisson process
KW - Ruin theory
KW - Scale function
UR - https://www.scopus.com/pages/publications/105025568783
U2 - 10.1016/j.insmatheco.2025.103200
DO - 10.1016/j.insmatheco.2025.103200
M3 - Article
AN - SCOPUS:105025568783
SN - 0167-6687
VL - 126
JO - Insurance: Mathematics and Economics
JF - Insurance: Mathematics and Economics
M1 - 103200
ER -