Reconciling malware labeling discrepancy via consensus learning
Ting Wang, Xin Hu, et al.
ICDEW 2014
In this paper, we present the design, architecture, and implementation of a novel analysis engine, called Feature Collection and Correlation Engine (FCCE), that finds correlations across a diverse set of data types spanning over large time windows with very small latency and with minimal access to raw data. FCCE scales well to collecting, extracting, and querying features from geographically distributed large data sets. FCCE has been deployed in a large production network with over 450,000 workstations for 3 years, ingesting more than 2 billion events per day and providing low latency query responses for various analytics. We explore two security analytics use cases to demonstrate how we utilize the deployment of FCCE on large diverse data sets in the cyber security domain: 1) detecting fluxing domain names of potential botnet activity and identifying all the devices in the production network querying these names, and 2) detecting advanced persistent threat infection. Both evaluation results and our experience with real-world applications show that FCCE yields superior performance over existing approaches, and excels in the challenging cyber security domain by correlating multiple features and deriving security intelligence.
Ting Wang, Xin Hu, et al.
ICDEW 2014
Shouling Ji, Weiqing Li, et al.
USENIX Security 2015
S. Berger, Y. Chen, et al.
IBM J. Res. Dev
Xin Hu, Jiyong Jang, et al.
IBM J. Res. Dev