Real time data mining-based intrusion detection
Wenke Lee, S.J. Stolfo, et al.
DISCEX 2001
Intrusion detection systems (IDSs) must maximize the realization of security goals while minimizing costs. In this paper, we study the problem of building cost-sensitive intrusion detection models. We examine the major cost factors associated with an IDS, which include development cost, operational cost, damage cost due to successful intrusions, and the cost of manual and automated response to intrusions. These cost factors can be qualified according to a defined attack taxonomy and site-specific security policies and priorities. We define cost models to formulate the total expected cost of an IDS, and present cost-sensitive machine learning techniques that can produce detection nodels that are optimized for user-defined cost metrics. Empirical experiments show that our cost-sensitive modeling and deployment techniques are effective in reducing the overall cost of intrusion detection.
Wenke Lee, S.J. Stolfo, et al.
DISCEX 2001
Jiangtao Ren, Xiaoxiao Shi, et al.
SDM 2008
Kapil Singh, Helen J. Wang, et al.
WWW 2012
Haixun Wang, Sanghyun Park, et al.
SIGMOD 2003