| Literature DB >> 15969900 |
Matthew Glickman1, Justin Balthrop, Stephanie Forrest.
Abstract
ARTIS is an artificial immune system framework which contains several adaptive mechanisms. LISYS is a version of ARTIS specialized for the problem of network intrusion detection. The adaptive mechanisms of LISYS are characterized in terms of their machine-learning counterparts, and a series of experiments is described, each of which isolates a different mechanism of LISYS and studies its contribution to the system's overall performance. The experiments were conducted on a new data set, which is more recent and realistic than earlier data sets. The network intrusion detection problem is challenging because it requires one-class learning in an on-line setting with concept drift. The experiments confirm earlier experimental results with LISYS, and they study in detail how LISYS achieves success on the new data set.Mesh:
Year: 2005 PMID: 15969900 DOI: 10.1162/1063656054088503
Source DB: PubMed Journal: Evol Comput ISSN: 1063-6560 Impact factor: 3.277