This document discusses various data mining classification procedures for intrusion detection systems, primarily using the KDD Cup 99 dataset. It highlights issues with false alerts in intrusion detection and explores different classification techniques like multilayer perceptron and rule-based models, concluding that no single method effectively detects all attack classes with high accuracy. The research indicates that a combination of approaches is needed to tackle the complexities of network attacks.