We present a new approach to anomaly detection based on unsupervised niche clustering (UNC). The UNC is a genetic niching technique for clustering that can handle noise, and is able to determine the number of clusters automatically. The UNC uses the normal samples for generating a profile of the normal space (clusters). Each cluster can later be characterized by a fuzzy membership function that follows a Gaussian shape defined by the evolved cluster centers and radii. The set of memberships are aggregated using a max-or fuzzy operator in order to determine the normalcy level of a data sample. Experiments on synthetic and real data sets, including a network intrusion detection data set, are performed and some results are analyzed and reported.
Jiong ZhangMohammad Zulkernine
Evgeniya NikolovaVeselina Jecheva
Mrutyunjaya PandaManas Ranjan Patra
Mrutyunjaya PandaManas Ranjan Patra
Jiang ZhongXiongbing DengLuosheng WenYong Feng