A Comparison of Algorithms for Anomaly Detection in Safeguards and Computer Security Systems Using Neural Networks

Year
1992
Author(s)
J.A. Howell - Los Alamos National Laboratory
R. Whiteson - Los Alamos National Laboratory
Abstract
Detection of anomalies in nuclear safeguards and computer security systems is a tedious and time-consuming task. It typically requires the examination of large amounts of data for unusual patterns of activity. Neural networks provide a flexible pattern-recognition capability that can easily be adapted for these purposes. In this paper, we discuss architectures for accomplishing this task.