Many current approaches to the design of intrusion detection systems apply
feature selection in a static, non-adaptive fashion. These methods often
neglect the dynamic nature of network data which requires to use adaptive
feature selection techniques. In this paper, we present a simple technique
based on incremental learning of support vector machines in order to rank the
features in real time within a streaming model for network data. Some
illustrative numerical experiments with two popular benchmark datasets show
that our approach allows to adapt to the changes in normal network behaviour
and novel attack patterns which have not been experienced before.