Near-optimal Anomaly Detection in Graphs using Lovász Extended Scan Statistic
–Neural Information Processing Systems
The detection of anomalous activity in graphs is a statistical problem that arises in many applications, such as network surveillance, disease outbreak detection, and activity monitoring in social networks. Beyond its wide applicability, graph structured anomaly detection serves as a case study in the difficulty of balancing computational complexity with statistical power. In this work, we develop from first principles the generalized likelihood ratio test for determining if there is a well connected region of activation over the vertices in the graph in Gaussian noise. Because this test is computationally infeasible, we provide a relaxation, called the Lovász extended scan statistic (LESS) that uses submodularity to approximate the intractable generalized likelihood ratio. We demonstrate a connection between LESS and maximum a-posteriori inference in Markov random fields, which provides us with a poly-time algorithm for LESS. Using electrical network theory, we are able to control type 1 error for LESS and prove conditions under which LESS is risk consistent. Finally, we consider specific graph models, the torus, k-nearest neighbor graphs, and ǫ-random graphs. We show that on these graphs our results provide near-optimal performance by matching our results to known lower bounds.
Neural Information Processing Systems
Mar-13-2024, 18:07:30 GMT
- Country:
- North America > United States > Pennsylvania > Allegheny County > Pittsburgh (0.14)
- Industry:
- Energy > Power Industry (0.34)
- Health & Medicine > Epidemiology (0.54)