Multivariate Spatiotemporal Hawkes Processes and Network Reconstruction
Author(s) -
Baichuan Yuan,
Hao Li,
Andrea L. Bertozzi,
P. Jeffrey Brantingham,
Mason A. Porter
Publication year - 2019
Publication title -
siam journal on mathematics of data science
Language(s) - English
Resource type - Journals
ISSN - 2577-0187
DOI - 10.1137/18m1226993
Subject(s) - computer science , multivariate statistics , point process , temporal database , data mining , construct (python library) , artificial intelligence , parametric statistics , network dynamics , nonparametric statistics , machine learning , econometrics , mathematics , statistics , discrete mathematics , programming language
There is often latent network structure in spatial and temporal data and the tools of network analysis can yield fascinating insights into such data. In this paper, we develop a nonparametric method for network reconstruction from spatiotemporal data sets using multivariate Hawkes processes. In contrast to prior work on network reconstruction with point-process models, which has often focused on exclusively temporal information, our approach uses both temporal and spatial information and does not assume a specific parametric form of network dynamics. This leads to an effective way of recovering an underlying network. We illustrate our approach using both synthetic networks and networks constructed from real-world data sets (a location-based social media network, a narrative of crime events, and violent gang crimes). Our results demonstrate that, in comparison to using only temporal data, our spatiotemporal approach yields improved network reconstruction, providing a basis for meaningful subsequent analysis --- such as community structure and motif analysis --- of the reconstructed networks.
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