A review on Poisson, Cox, Hawkes, shot-noise Poisson and dynamic contagion process and their compound processes

IF 1.5 Q3 BUSINESS, FINANCE Annals of Actuarial Science Pub Date : 2020-09-09 DOI:10.1017/S1748499520000287
Jiwook Jang, Rosy Oh
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引用次数: 9

Abstract

Abstract The Poisson process is an essential building block to move up to complicated counting processes, such as the Cox (“doubly stochastic Poisson”) process, the Hawkes (“self-exciting”) process, exponentially decaying shot-noise Poisson (simply “shot-noise Poisson”) process and the dynamic contagion process. The Cox process provides flexibility by letting the intensity not only depending on time but also allowing it to be a stochastic process. The Hawkes process has self-exciting property and clustering effects. Shot-noise Poisson process is an extension of the Poisson process, where it is capable of displaying the frequency, magnitude and time period needed to determine the effect of points. The dynamic contagion process is a point process, where its intensity generalises the Hawkes process and Cox process with exponentially decaying shot-noise intensity. To facilitate the usage of these processes in practice, we revisit the distributional properties of the Poisson, Cox, Hawkes, shot-noise Poisson and dynamic contagion process and their compound processes. We provide simulation algorithms for these processes, which would be useful to statistical analysis, further business applications and research. As an application of the compound processes, numerical comparisons of value-at-risk and tail conditional expectation are made.
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泊松、Cox、Hawkes、弹噪声泊松和动态传染过程及其复合过程综述
泊松过程是向复杂的计数过程(如Cox(“双随机泊松”)过程、Hawkes(“自激”)过程、指数衰减的单噪声泊松(简称“单噪声泊松”)过程和动态传染过程)移动的重要组成部分。Cox过程提供了灵活性,使强度不仅取决于时间,而且允许它是一个随机过程。Hawkes过程具有自激特性和聚类效应。短噪声泊松过程是泊松过程的扩展,它能够显示确定点的影响所需的频率、幅度和时间周期。动态传染过程是一个点过程,其强度推广了弹噪声强度呈指数衰减的Hawkes过程和Cox过程。为了便于在实践中使用这些过程,我们重新讨论了泊松、Cox、Hawkes、散噪声泊松和动态传染过程及其复合过程的分布性质。我们提供了这些过程的模拟算法,这将有助于统计分析,进一步的商业应用和研究。作为复合过程的应用,对风险值和尾部条件期望进行了数值比较。
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来源期刊
CiteScore
3.10
自引率
5.90%
发文量
22
期刊最新文献
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