Spatio-Temporal Hawkes Point Processes: A ReviewSpatio-Temporal Hawkes Point Processes: A ReviewA. Bernabeu et al.

被引:0
|
作者
Alba Bernabeu [1 ]
Jiancang Zhuang [2 ]
Jorge Mateu [3 ]
机构
[1] University Jaume I,Department of Mathematics
[2] Research Organisation of Information and Systems,The Institute of Statistical Mathematics
[3] The Graduate University for Advanced Studies,Department of Statistical Science
[4] London Mathematical Laboratory,undefined
关键词
Estimation procedures; Hawkes point processes; Self-exciting processes; Simulation techniques; Spatio-temporal processes;
D O I
10.1007/s13253-024-00653-7
中图分类号
学科分类号
摘要
Hawkes processes are a particularly interesting class of stochastic point processes that were introduced in the early seventies by Alan Hawkes, notably to model the occurrence of seismic events. They are also called self-exciting point processes, in which the occurrence of an event increases the probability of occurrence of another event. The Hawkes process is characterized by a stochastic intensity, which represents the conditional probability density of the occurrence of an event in the immediate future, given the observations in the past. In this paper, we present some background and all major aspects of Hawkes processes, with a particular focus on simulation methods, and estimation techniques widely used in practical modeling aspects. We aim to provide a rich and self-contained overview of these stochastic processes as a way to have an overall vision of Hawkes processes in only one piece of paper. We also discuss possibilities for future research in the area of self-exciting processes.
引用
收藏
页码:89 / 119
页数:30
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