Improvement in Intrusion Detection With Advances in Sensor Fusion


Autoria(s): Thomas, Ciza; Balakrishnan, N
Data(s)

01/09/2009

Resumo

Various intrusion detection systems (IDSs) reported in the literature have shown distinct preferences for detecting a certain class of attack with improved accuracy, while performing moderately on the other classes. In view of the enormous computing power available in the present-day processors, deploying multiple IDSs in the same network to obtain best-of-breed solutions has been attempted earlier. The paper presented here addresses the problem of optimizing the performance of IDSs using sensor fusion with multiple sensors. The trade-off between the detection rate and false alarms with multiple sensors is highlighted. It is illustrated that the performance of the detector is better when the fusion threshold is determined according to the Chebyshev inequality. In the proposed data-dependent decision ( DD) fusion method, the performance optimization of ndividual IDSs is first addressed. A neural network supervised learner has been designed to determine the weights of individual IDSs depending on their reliability in detecting a certain attack. The final stage of this DD fusion architecture is a sensor fusion unit which does the weighted aggregation in order to make an appropriate decision. This paper theoretically models the fusion of IDSs for the purpose of demonstrating the improvement in performance, supplemented with the empirical evaluation.

Formato

application/pdf

Identificador

http://eprints.iisc.ernet.in/22952/1/getPDF_3.pdf

Thomas, Ciza and Balakrishnan, N (2009) Improvement in Intrusion Detection With Advances in Sensor Fusion. In: IEEE Transactions On Information Forensics And Security, 4 (3). pp. 542-551.

Publicador

Ieee-Inst Electrical Electronics Engineers Inc

Relação

http://ieeexplore.ieee.org/search/wrapper.jsp?arnumber=5159469&sourceID=ISI

http://eprints.iisc.ernet.in/22952/

Palavras-Chave #Supercomputer Education & Research Centre
Tipo

Journal Article

PeerReviewed