Genetic programming for prevention of cyberterrorism through dynamic and evolving intrusion detection

作者:

摘要

Because malicious intrusions into critical information infrastructures are essential to the success of cyberterrorists, effective intrusion detection is also essential for defending such infrastructures. Cyberterrorism thrives on the development of new technologies; and, in response, intrusion detection methods must be robust and adaptive, as well as efficient. We hypothesize that genetic programming algorithms can aid in this endeavor. To investigate this proposition, we conducted an experiment using a very large dataset from the 1999 Knowledge Discovery in Database (KDD) Cup data, supplied by the Defense Advanced Research Projects Agency (DARPA) and MIT's Lincoln Laboratories. Using machine-coded linear genomes and a homologous crossover operator in genetic programming, promising results were achieved in detecting malicious intrusions. The resulting programs execute in real time, and high levels of accuracy were realized in identifying both positive and negative instances.

论文关键词:Cyberterrorism,Genetic programming,Homologous crossover,Intrusion detection,Pattern recognition,Information security

论文评审过程:Available online 6 June 2006.

论文官网地址:https://doi.org/10.1016/j.dss.2006.04.004