English

TIGGER: Scalable Generative Modelling for Temporal Interaction Graphs

Machine Learning 2022-08-26 v2 Artificial Intelligence Information Retrieval Social and Information Networks

Abstract

There has been a recent surge in learning generative models for graphs. While impressive progress has been made on static graphs, work on generative modeling of temporal graphs is at a nascent stage with significant scope for improvement. First, existing generative models do not scale with either the time horizon or the number of nodes. Second, existing techniques are transductive in nature and thus do not facilitate knowledge transfer. Finally, due to relying on one-to-one node mapping from source to the generated graph, existing models leak node identity information and do not allow up-scaling/down-scaling the source graph size. In this paper, we bridge these gaps with a novel generative model called TIGGER. TIGGER derives its power through a combination of temporal point processes with auto-regressive modeling enabling both transductive and inductive variants. Through extensive experiments on real datasets, we establish TIGGER generates graphs of superior fidelity, while also being up to 3 orders of magnitude faster than the state-of-the-art.

Keywords

Cite

@article{arxiv.2203.03564,
  title  = {TIGGER: Scalable Generative Modelling for Temporal Interaction Graphs},
  author = {Shubham Gupta and Sahil Manchanda and Srikanta Bedathur and Sayan Ranu},
  journal= {arXiv preprint arXiv:2203.03564},
  year   = {2022}
}

Comments

To be published in AAAI-2022, additionally contains technical appendices/supplementary material

R2 v1 2026-06-24T10:04:55.986Z