English

Flexible Parametric Inference for Space-Time Hawkes Processes

Machine Learning 2024-06-18 v2 Machine Learning

Abstract

Many modern spatio-temporal data sets, in sociology, epidemiology or seismology, for example, exhibit self-exciting characteristics, triggering and clustering behaviors both at the same time, that a suitable Hawkes space-time process can accurately capture. This paper aims to develop a fast and flexible parametric inference technique to recover the parameters of the kernel functions involved in the intensity function of a space-time Hawkes process based on such data. Our statistical approach combines three key ingredients: 1) kernels with finite support are considered, 2) the space-time domain is appropriately discretized, and 3) (approximate) precomputations are used. The inference technique we propose then consists of a 2\ell_2 gradient-based solver that is fast and statistically accurate. In addition to describing the algorithmic aspects, numerical experiments have been carried out on synthetic and real spatio-temporal data, providing solid empirical evidence of the relevance of the proposed methodology.

Keywords

Cite

@article{arxiv.2406.06849,
  title  = {Flexible Parametric Inference for Space-Time Hawkes Processes},
  author = {Emilia Siviero and Guillaume Staerman and Stephan Clémençon and Thomas Moreau},
  journal= {arXiv preprint arXiv:2406.06849},
  year   = {2024}
}
R2 v1 2026-06-28T17:00:36.782Z