Visible to the public Biblio

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2020-01-20
Elisa, Noe, Yang, Longzhi, Fu, Xin, Naik, Nitin.  2019.  Dendritic Cell Algorithm Enhancement Using Fuzzy Inference System for Network Intrusion Detection. 2019 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE). :1–6.

Dendritic cell algorithm (DCA) is an immune-inspired classification algorithm which is developed for the purpose of anomaly detection in computer networks. The DCA uses a weighted function in its context detection phase to process three categories of input signals including safe, danger and pathogenic associated molecular pattern to three output context values termed as co-stimulatory, mature and semi-mature, which are then used to perform classification. The weighted function used by the DCA requires either manually pre-defined weights usually provided by the immunologists, or empirically derived weights from the training dataset. Neither of these is sufficiently flexible to work with different datasets to produce optimum classification result. To address such limitation, this work proposes an approach for computing the three output context values of the DCA by employing the recently proposed TSK+ fuzzy inference system, such that the weights are always optimal for the provided data set regarding a specific application. The proposed approach was validated and evaluated by applying it to the two popular datasets KDD99 and UNSW NB15. The results from the experiments demonstrate that, the proposed approach outperforms the conventional DCA in terms of classification accuracy.

Ou, Chung-Ming.  2019.  Host-based Intrusion Detection Systems Inspired by Machine Learning of Agent-Based Artificial Immune Systems. 2019 IEEE International Symposium on INnovations in Intelligent SysTems and Applications (INISTA). :1–5.

An adaptable agent-based IDS (AAIDS) inspired by the danger theory of artificial immune system is proposed. The learning mechanism of AAIDS is designed by emulating how dendritic cells (DC) in immune systems detect and classify danger signals. AG agent, DC agent and TC agent coordinate together and respond to system calls directly rather than analyze network packets. Simulations show AAIDS can determine several critical scenarios of the system behaviors where packet analysis is impractical.

2017-02-27
Lokesh, M. R., Kumaraswamy, Y. S..  2015.  Healing process towards resiliency in cyber-physical system: A modified danger theory based artifical immune recogization2 algorithm approach. 2015 IEEE International Conference on Computer Graphics, Vision and Information Security (CGVIS). :226–232.

Healing Process is a major role in developing resiliency in cyber-physical system where the environment is diverse in nature. Cyber-physical system is modelled with Multi Agent Paradigm and biological inspired Danger Theory based-Artificial Immune Recognization2 Algorithm Methodology towards developing healing process. The Proposed methodology is implemented in a simulation environment and percentage of Convergence rates shown in achieving accuracy in the healing process to resiliency in cyber-physical system environment is shown.

2015-05-05
Ling-Xi Peng, Tian-Wei Chen.  2014.  Automated Intrusion Response System Algorithm with Danger Theory. Cyber-Enabled Distributed Computing and Knowledge Discovery (CyberC), 2014 International Conference on. :31-34.

Intrusion response is a new generation of technology basing on active defence idea, which has very prominent significance on the protection of network security. However, the existing automatic intrusion response systems are difficult to judge the real "danger" of invasion or attack. In this study, an immune-inspired adaptive automated intrusion response system model, named as AIAIM, was given. With the descriptions of self, non-self, memory detector, mature detector and immature detector of the network transactions, the real-time network danger evaluation equations of host and network are built up. Then, the automated response polices are taken or adjusted according to the real-time danger and attack intensity, which not only solve the problem that the current automated response system models could not detect the true intrusions or attack actions, but also greatly reduce the response times and response costs. Theory analysis and experimental results prove that AIAIM provides a positive and active network security method, which will help to overcome the limitations of traditional passive network security system.