Bootstrap Inference for Hawkes and General Point Processes
Giuseppe Cavaliere, Ye Lu, Anders Rahbek, Jacob, St{\ae}rk-{\O}stergaard

TL;DR
This paper introduces a novel bootstrap method called 'fixed intensity bootstrap' for inference in Hawkes and general point process models, offering improved finite sample performance over traditional methods.
Contribution
The paper proposes the fixed intensity bootstrap scheme for point processes, extending bootstrap theory and demonstrating its effectiveness through simulations and real data applications.
Findings
FIB is simple, fast, and effective for finite sample inference.
FIB outperforms recursive bootstrap in simulations.
Applications to financial and social media data validate the methodology.
Abstract
Inference and testing in general point process models such as the Hawkes model is predominantly based on asymptotic approximations for likelihood-based estimators and tests. As an alternative, and to improve finite sample performance, this paper considers bootstrap-based inference for interval estimation and testing. Specifically, for a wide class of point process models we consider a novel bootstrap scheme labeled 'fixed intensity bootstrap' (FIB), where the conditional intensity is kept fixed across bootstrap repetitions. The FIB, which is very simple to implement and fast in practice, extends previous ideas from the bootstrap literature on time series in discrete time, where the so-called 'fixed design' and 'fixed volatility' bootstrap schemes have shown to be particularly useful and effective. We compare the FIB with the classic recursive bootstrap, which is here labeled 'recursive…
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