Visible to the public GraphPrints: Towards a Graph Analytic Method for Network Anomaly Detection

TitleGraphPrints: Towards a Graph Analytic Method for Network Anomaly Detection
Publication TypeConference Paper
Year of Publication2016
AuthorsHarshaw, Christopher R., Bridges, Robert A., Iannacone, Michael D., Reed, Joel W., Goodall, John R.
Conference NameProceedings of the 11th Annual Cyber and Information Security Research Conference
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-3752-6
Keywordsanomaly detection, composability, decomposition, False Data Detection, graphlet, Intrusion detection, Metrics, motif, network intrusion detection, pubcrawl
Abstract

This paper introduces a novel graph-analytic approach for detecting anomalies in network flow data called GraphPrints. Building on foundational network-mining techniques, our method represents time slices of traffic as a graph, then counts graphlets--small induced subgraphs that describe local topology. By performing outlier detection on the sequence of graphlet counts, anomalous intervals of traffic are identified, and furthermore, individual IPs experiencing abnormal behavior are singled-out. Initial testing of GraphPrints is performed on real network data with an implanted anomaly. Evaluation shows false positive rates bounded by 2.84% at the time-interval level, and 0.05% at the IP-level with 100% true positive rates at both.

URLhttp://doi.acm.org/10.1145/2897795.2897806
DOI10.1145/2897795.2897806
Citation Keyharshaw_graphprints:_2016