English

DCA for Bot Detection

Artificial Intelligence 2016-11-18 v1 Cryptography and Security Neural and Evolutionary Computing

Abstract

Ensuring the security of computers is a non-trivial task, with many techniques used by malicious users to compromise these systems. In recent years a new threat has emerged in the form of networks of hijacked zombie machines used to perform complex distributed attacks such as denial of service and to obtain sensitive data such as password information. These zombie machines are said to be infected with a 'bot' - a malicious piece of software which is installed on a host machine and is controlled by a remote attacker, termed the 'botmaster of a botnet'. In this work, we use the biologically inspired Dendritic Cell Algorithm (DCA) to detect the existence of a single bot on a compromised host machine. The DCA is an immune-inspired algorithm based on an abstract model of the behaviour of the dendritic cells of the human body. The basis of anomaly detection performed by the DCA is facilitated using the correlation of behavioural attributes such as keylogging and packet flooding behaviour. The results of the application of the DCA to the detection of a single bot show that the algorithm is a successful technique for the detection of such malicious software without responding to normally running programs.

Cite

@article{arxiv.1001.2195,
  title  = {DCA for Bot Detection},
  author = {Yousof Al-Hammadi and Uwe Aickelin and Julie Greensmith},
  journal= {arXiv preprint arXiv:1001.2195},
  year   = {2016}
}

Comments

10pages, 5 tables, 6 figures, IEEE World Congress on Computational Intelligence (WCCI2008), Hong Kong

R2 v1 2026-06-21T14:34:17.810Z