Negative selection algorithm in artificial immune system for spam detection

Artificial immune system creates techniques that aim at developing immune based models. This was done by distinguishing self from non-self. Mathematical analysis exposed the computation and experimental description of the method and how it is applied to spam detection. This paper looked at evaluation and accuracy in spam detection within the negative selection algorithm. Preliminary result or classifier of self and non-self was carefully studied against mistake of assumption during email classification whereby an email was recognized as a spam and deleted or non-spam and accepted carelessly. This process is called false positive and false negative. Given a threshold, the accuracy increase with increased threshold to determine best performance of the spam detector. Also an improvement of the false positive rate was determined for better spam detector.

[1]  Grenville Armitage,et al.  Evaluating the use of spam-triggered TCP/IP rate control to protect SMTP servers , 2004 .

[2]  Vladimir A. Golovko,et al.  Neural Network and Artificial Immune Systems for Malware and Network Intrusion Detection , 2010, Advances in Machine Learning II.

[3]  TERRAN LANE,et al.  Temporal sequence learning and data reduction for anomaly detection , 1999, TSEC.

[4]  Lihua Wu,et al.  Immunity-Based Model for Malicious Code Detection , 2010, ICIC.

[5]  Qian Wang,et al.  A Detector Generation Algorithm Based on Negative Selection , 2008, 2008 Fourth International Conference on Natural Computation.

[6]  Fabio A. González,et al.  An immuno-fuzzy approach to anomaly detection , 2003, The 12th IEEE International Conference on Fuzzy Systems, 2003. FUZZ '03..

[7]  Yuhong Zhao,et al.  A new fault detection method based on artificial immune systems , 2008 .

[8]  P. Helman,et al.  A formal framework for positive and negative detection schemes , 2004, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).

[9]  Dorothy E. Denning,et al.  An Intrusion-Detection Model , 1987, IEEE Transactions on Software Engineering.