A hybrid heuristics artificial intelligence feature selection for intrusion detection classifiers in cloud of things

AK Sangaiah, A Javadpour, F Ja'fari, P Pinto… - Cluster …, 2023 - Springer
AK Sangaiah, A Javadpour, F Ja'fari, P Pinto, W Zhang, S Balasubramanian
Cluster Computing, 2023Springer
Cloud computing environments provide users with Internet-based services and one of their
main challenges is security issues. Hence, using Intrusion Detection Systems (IDSs) as a
defensive strategy in such environments is essential. Multiple parameters are used to
evaluate the IDSs, the most important aspect of which is the feature selection method used
for classifying the malicious and legitimate activities. We have organized this research to
determine an effective feature selection method to increase the accuracy of the classifiers in …
Abstract
Cloud computing environments provide users with Internet-based services and one of their main challenges is security issues. Hence, using Intrusion Detection Systems (IDSs) as a defensive strategy in such environments is essential. Multiple parameters are used to evaluate the IDSs, the most important aspect of which is the feature selection method used for classifying the malicious and legitimate activities. We have organized this research to determine an effective feature selection method to increase the accuracy of the classifiers in detecting intrusion. A Hybrid Ant-Bee Colony Optimization (HABCO) method is proposed to convert the feature selection problem into an optimization problem. We examined the accuracy of HABCO with BHSVM, IDSML, DLIDS, HCRNNIDS, SVMTHIDS, ANNIDS, and GAPSAIDS. It is shown that HABCO has a higher accuracy compared with the mentioned methods.
Springer
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