Title
Mean-field inference of Hawkes point processes
Abstract
We propose a fast and efficient estimation method that is able to accurately recover the parameters of a d-dimensional Hawkes point-process from a set of observations. We exploit a mean-field approximation that is valid when the fluctuations of the stochastic intensity are small. We show that this is notably the case in situations when interactions are sufficiently weak, when the dimension of the system is high or when the fluctuations are self-averaging due to the large number of past events they involve. In such a regime the estimation of a Hawkes process can be mapped on a least-squares problem for which we provide an analytic solution. Though this estimator is biased, we show that its precision can be comparable to the one of the maximum likelihood estimator while its computation speed is shown to be improved considerably. We give a theoretical control on the accuracy of our new approach and illustrate its efficiency using synthetic datasets, in order to assess the statistical estimation error of the parameters.
Year
DOI
Venue
2015
10.1088/1751-8113/49/17/174006
JOURNAL OF PHYSICS A-MATHEMATICAL AND THEORETICAL
Keywords
Field
DocType
Hawkes process,high-dimensional inference,mean-field theory
Mathematical optimization,Inference,Mathematical analysis,Point process,Algorithm,Maximum likelihood,Mean field theory,Analytic solution,Mathematics,Computation,Estimator
Journal
Volume
Issue
ISSN
49
17
1751-8113
Citations 
PageRank 
References 
1
0.38
7
Authors
4
Name
Order
Citations
PageRank
Emmanuel Bacry181.70
Stephane Gaiffas210.72
iacopo mastromatteo331.14
Jean-François Muzy452.06