Lesage Laurent, Deaconu Madalina, Lejay Antoine, Meira Jorge Augusto, Nichil Geoffrey, State Radu
University of Lorraine, CNRS, Inria, IECL, Nancy, F-54000 France.
University of Luxembourg, 29 Avenue JF Kennedy, JFK Building, Esch-sur-Alzette, L-1855 Luxembourg.
Methodol Comput Appl Probab. 2022;24(4):2509-2537. doi: 10.1007/s11009-022-09938-1. Epub 2022 Mar 5.
Hawkes processes are temporal self-exciting point processes. They are well established in earthquake modelling or finance and their application is spreading to diverse areas. Most models from the literature have two major drawbacks regarding their potential application to insurance. First, they use an exponentially-decaying form of excitation, which does not allow a delay between the occurrence of an event and its excitation effect on the process and does not fit well on insurance data consequently. Second, theoretical results developed from these models are valid only when time of observation tends to infinity, whereas the time horizon for an insurance use case is of several months or years. In this paper, we define a complete framework of Hawkes processes with a Gamma density excitation function (i.e. estimation, simulation, goodness-of-fit) instead of an exponential-decaying function and we demonstrate some mathematical properties (i.e. expectation, variance) about the transient regime of the process. We illustrate our results with real insurance data about natural disasters in Luxembourg.
霍克斯过程是一种时间自激发点过程。它们在地震建模或金融领域已得到充分确立,并且其应用正在扩展到不同领域。文献中的大多数模型在应用于保险方面存在两个主要缺点。首先,它们使用指数衰减形式的激发函数,这不允许事件发生与其对过程的激发效应之间存在延迟,因此不太适合保险数据。其次,从这些模型得出的理论结果仅在观测时间趋于无穷大时才有效,而保险用例的时间范围是几个月或几年。在本文中,我们定义了一个具有伽马密度激发函数的霍克斯过程的完整框架(即估计、模拟、拟合优度),以替代指数衰减函数,并展示了关于该过程瞬态状态的一些数学性质(即期望、方差)。我们用卢森堡自然灾害的真实保险数据来说明我们的结果。