A Mutually Exciting Latent Space Hawkes Process Model for
Continuous-time Networks
- URL: http://arxiv.org/abs/2205.09263v1
- Date: Thu, 19 May 2022 00:56:12 GMT
- Title: A Mutually Exciting Latent Space Hawkes Process Model for
Continuous-time Networks
- Authors: Zhipeng Huang, Hadeel Soliman, Subhadeep Paul, Kevin S. Xu
- Abstract summary: We propose a novel generative model for continuous-time networks of relational events using a latent space representation for nodes.
We show that our proposed LSH model can replicate many features observed in real temporal networks including reciprocity and transitivity.
- Score: 3.883893461313154
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Networks and temporal point processes serve as fundamental building blocks
for modeling complex dynamic relational data in various domains. We propose the
latent space Hawkes (LSH) model, a novel generative model for continuous-time
networks of relational events, using a latent space representation for nodes.
We model relational events between nodes using mutually exciting Hawkes
processes with baseline intensities dependent upon the distances between the
nodes in the latent space and sender and receiver specific effects. We propose
an alternating minimization algorithm to jointly estimate the latent positions
of the nodes and other model parameters. We demonstrate that our proposed LSH
model can replicate many features observed in real temporal networks including
reciprocity and transitivity, while also achieves superior prediction accuracy
and provides more interpretability compared to existing models.
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