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Uncertainty Quantification for Inferring Hawkes Networks

Authors :
Wang, Haoyun
Xie, Liyan
Cuozzo, Alex
Mak, Simon
Xie, Yao
Publication Year :
2020

Abstract

Multivariate Hawkes processes are commonly used to model streaming networked event data in a wide variety of applications. However, it remains a challenge to extract reliable inference from complex datasets with uncertainty quantification. Aiming towards this, we develop a statistical inference framework to learn causal relationships between nodes from networked data, where the underlying directed graph implies Granger causality. We provide uncertainty quantification for the maximum likelihood estimate of the network multivariate Hawkes process by providing a non-asymptotic confidence set. The main technique is based on the concentration inequalities of continuous-time martingales. We compare our method to the previously-derived asymptotic Hawkes process confidence interval, and demonstrate the strengths of our method in an application to neuronal connectivity reconstruction.<br />Comment: 16 pages including appendix, 1 figure, accepted to 2020 Neurips

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2006.07506
Document Type :
Working Paper