GraphPrints: Towards a Graph Analytic Method for Network Anomaly Detection

02/02/2016
by   Christopher R. Harshaw, et al.
0

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 the IP-level with 100

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/11/2019

Challenges in Time-Stamp Aware Anomaly Detection in Traffic Videos

Time-stamp aware anomaly detection in traffic videos is an essential tas...
research
09/02/2008

From Data to the p-Adic or Ultrametric Model

We model anomaly and change in data by embedding the data in an ultramet...
research
11/29/2021

Anomaly Rule Detection in Sequence Data

Analyzing sequence data usually leads to the discovery of interesting pa...
research
10/17/2017

Internet Anomaly Detection based on Complex Network Path

Detecting the anomaly behaviors such as network failure or Internet inte...
research
12/27/2020

Time-Window Group-Correlation Support vs. Individual Features: A Detection of Abnormal Users

Autoencoder-based anomaly detection methods have been used in identifyin...
research
09/28/2022

Big data analysis and distributed deep learning for next-generation intrusion detection system optimization

With the growing use of information technology in all life domains, hack...
research
12/06/2018

Cyber Anomaly Detection Using Graph-node Role-dynamics

Intrusion detection systems (IDSs) generate valuable knowledge about net...

Please sign up or login with your details

Forgot password? Click here to reset