English

Sparse and low-rank multivariate Hawkes processes

Machine Learning 2020-02-25 v3

Abstract

We consider the problem of unveiling the implicit network structure of node interactions (such as user interactions in a social network), based only on high-frequency timestamps. Our inference is based on the minimization of the least-squares loss associated with a multivariate Hawkes model, penalized by 1\ell_1 and trace norm of the interaction tensor. We provide a first theoretical analysis for this problem, that includes sparsity and low-rank inducing penalizations. This result involves a new data-driven concentration inequality for matrix martingales in continuous time with observable variance, which is a result of independent interest and a broad range of possible applications since it extends to matrix martingales former results restricted to the scalar case. A consequence of our analysis is the construction of sharply tuned 1\ell_1 and trace-norm penalizations, that leads to a data-driven scaling of the variability of information available for each users. Numerical experiments illustrate the significant improvements achieved by the use of such data-driven penalizations.

Keywords

Cite

@article{arxiv.1501.00725,
  title  = {Sparse and low-rank multivariate Hawkes processes},
  author = {Emmanuel Bacry and Martin Bompaire and Stéphane Gaïffas and Jean-François Muzy},
  journal= {arXiv preprint arXiv:1501.00725},
  year   = {2020}
}
R2 v1 2026-06-22T07:50:31.641Z