English

WalkingTime: Dynamic Graph Embedding Using Temporal-Topological Flows

Machine Learning 2021-11-23 v1 Social and Information Networks

Abstract

Increased attention has been paid over the last four years to dynamic network embedding. Existing dynamic embedding methods, however, consider the problem as limited to the evolution of a topology over a sequence of global, discrete states. We propose a novel embedding algorithm, WalkingTime, based on a fundamentally different handling of time, allowing for the local consideration of continuously occurring phenomena; while others consider global time-steps to be first-order citizens of the dynamic environment, we hold flows comprised of temporally and topologically local interactions as our primitives, without any discretization or alignment of time-related attributes being necessary. Keywords: dynamic networks , representation learning , dynamic graph embedding , time-respecting paths , temporal-topological flows , temporal random walks , temporal networks , real-attributed knowledge graphs , streaming graphs , online networks , asynchronous graphs , asynchronous networks , graph algorithms , deep learning , network analysis , datamining , network science

Keywords

Cite

@article{arxiv.2111.10928,
  title  = {WalkingTime: Dynamic Graph Embedding Using Temporal-Topological Flows},
  author = {David Bayani},
  journal= {arXiv preprint arXiv:2111.10928},
  year   = {2021}
}

Comments

15 pages: 10 pages body, 2.5 pages references, remainder appendix ; 3 figures