English

Vertex Nomination, Consistent Estimation, and Adversarial Modification

Machine Learning 2020-04-15 v3 Machine Learning Social and Information Networks Computation

Abstract

Given a pair of graphs G1G_1 and G2G_2 and a vertex set of interest in G1G_1, the vertex nomination (VN) problem seeks to find the corresponding vertices of interest in G2G_2 (if they exist) and produce a rank list of the vertices in G2G_2, with the corresponding vertices of interest in G2G_2 concentrating, ideally, at the top of the rank list. In this paper, we define and derive the analogue of Bayes optimality for VN with multiple vertices of interest, and we define the notion of maximal consistency classes in vertex nomination. This theory forms the foundation for a novel VN adversarial contamination model, and we demonstrate with real and simulated data that there are VN schemes that perform effectively in the uncontaminated setting, and adversarial network contamination adversely impacts the performance of our VN scheme. We further define a network regularization method for mitigating the impact of the adversarial contamination, and we demonstrate the effectiveness of regularization in both real and synthetic data.

Cite

@article{arxiv.1905.01776,
  title  = {Vertex Nomination, Consistent Estimation, and Adversarial Modification},
  author = {Joshua Agterberg and Youngser Park and Jonathan Larson and Christopher White and Carey E. Priebe and Vince Lyzinski},
  journal= {arXiv preprint arXiv:1905.01776},
  year   = {2020}
}

Comments

34 pages, 8 figures

R2 v1 2026-06-23T08:57:35.520Z