CRF Based Intrusion Detection System Using Genetic Search Feature Selection for NSSA
Authors
Azhagiri Mahendiran, Rajesh Appusamy , Rajesh Prabhakaran and Gowtham Sethupathi
Abstract
Abstract - \u00a0Network security situational awareness systems helps in better managing the security concerns
of \u00a0a \u00a0network, \u00a0by \u00a0monitoring \u00a0for \u00a0any \u00a0anomalies \u00a0in \u00a0the \u00a0network \u00a0connections \u00a0and \u00a0recommending \u00a0remedial
actions upon detecting an attack. An Intrusion Detection System helps in identifying the security concerns of
a network, by monitoring for any anomalies in the network connections. We have proposed a CRF based IDS
system using genetic search feature selection algorithm for network security situational awareness to detect
any \u00a0anomalies \u00a0in \u00a0the \u00a0network. \u00a0The \u00a0conditional \u00a0random \u00a0fields \u00a0being \u00a0discriminative \u00a0models \u00a0are \u00a0capable \u00a0of
directly \u00a0modeling \u00a0the \u00a0conditional \u00a0probabilities \u00a0rather \u00a0than \u00a0joint \u00a0probabilities \u00a0there \u00a0by \u00a0achieving \u00a0better
classification accuracy. The genetic search feature selection algorithm is capable of identifying the optimal
subset \u00a0among \u00a0the \u00a0features \u00a0based \u00a0on \u00a0the \u00a0best \u00a0population \u00a0of \u00a0features \u00a0associated \u00a0with \u00a0the \u00a0target \u00a0class. \u00a0The
proposed system, when trained and tested on the bench mark NSL-KDD dataset exhibited higher accuracy in
identifying an attack and also classifying the attack category.