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ITNG
2010
IEEE

Scalable Intrusion Detection with Recurrent Neural Networks

13 years 11 months ago
Scalable Intrusion Detection with Recurrent Neural Networks
The ever-growing use of the Internet comes with a surging escalation of communication and data access. Most existing intrusion detection systems have assumed the one-size-fits-all solution model. Such IDS is not as economically sustainable for all organizations. Furthermore, studies have found that Recurrent Neural Network out-performs Feed-forward Neural Network, and Elman Network. This paper, therefore, proposes a scalable application-based model for detecting attacks in a communication network using recurrent neural network architecture. Its suitability for online real-time applications and its ability to self-adjust to changes in its input environment cannot be over-emphasized.
Longy O. Anyanwu, Jared Keengwe, Gladys A. Arome
Added 28 Jan 2011
Updated 28 Jan 2011
Type Journal
Year 2010
Where ITNG
Authors Longy O. Anyanwu, Jared Keengwe, Gladys A. Arome
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