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Graph Structure Learning from Unlabeled Data for Event Detection

Machine Learning 2017-01-09 v1 Social and Information Networks

Abstract

Processes such as disease propagation and information diffusion often spread over some latent network structure which must be learned from observation. Given a set of unlabeled training examples representing occurrences of an event type of interest (e.g., a disease outbreak), our goal is to learn a graph structure that can be used to accurately detect future events of that type. Motivated by new theoretical results on the consistency of constrained and unconstrained subset scans, we propose a novel framework for learning graph structure from unlabeled data by comparing the most anomalous subsets detected with and without the graph constraints. Our framework uses the mean normalized log-likelihood ratio score to measure the quality of a graph structure, and efficiently searches for the highest-scoring graph structure. Using simulated disease outbreaks injected into real-world Emergency Department data from Allegheny County, we show that our method learns a structure similar to the true underlying graph, but enables faster and more accurate detection.

Keywords

Cite

@article{arxiv.1701.01470,
  title  = {Graph Structure Learning from Unlabeled Data for Event Detection},
  author = {Sriram Somanchi and Daniel B. Neill},
  journal= {arXiv preprint arXiv:1701.01470},
  year   = {2017}
}
R2 v1 2026-06-22T17:42:24.611Z