Home

Casting Out Demons: Sanitizing Training Data for Anomaly Sensors

Gabriela F. Cretu; Angelos Stavrou; Michael E. Locasto; Salvatore J. Stolfo; Angelos D. Keromytis

Title:
Casting Out Demons: Sanitizing Training Data for Anomaly Sensors
Author(s):
Cretu, Gabriela F.
Stavrou, Angelos
Locasto, Michael E.
Stolfo, Salvatore J.
Keromytis, Angelos D.
Date:
Type:
Articles
Permanent URL:
Book/Journal Title:
Proceedings of the 2008 IEEE Symposium on Security and Privacy: May 18-21, 2008, Oakland, California, USA
Media Type:
application/pdf
Publisher:
IEEE Computer Society
Publisher Location:
Los Alamitos, Calif.
Abstract:
The efficacy of anomaly detection (AD) sensors depends heavily on the quality of the data used to train them. Artificial or contrived training data may not provide a realistic view of the deployment environment. Most realistic data sets are dirty; that is, they contain a number of attacks or anomalous events. The size of these high-quality training data sets makes manual removal or labeling of attack data infeasible. As a result, sensors trained on this data can miss attacks and their variations. We propose extending the training phase of AD sensors (in a manner agnostic to the underlying AD algorithm) to include a sanitization phase. This phase generates multiple models conditioned on small slices of the training data. We use these "micro-models" to produce provisional labels for each training input, and we combine the micro-models in a voting scheme to determine which parts of the training data may represent attacks. Our results suggest that this phase automatically and significantly improves the quality of unlabeled training data by making it as "attack-free" and "regular" as possible in the absence of absolute ground truth. We also show how a collaborative approach that combines models from different networks or domains can further refine the sanitization process to thwart targeted training or mimicry attacks against a single site.
Publisher DOI:
http://dx.doi.org/10.1109/SP.2008.11
Item views:
164
Metadata:
View

In Partnership with the Center for Digital Research and Scholarship at Columbia University Libraries/Information Services.