2022
DOI: 10.7717/peerj-cs.956
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Novel hybrid firefly algorithm: an application to enhance XGBoost tuning for intrusion detection classification

Abstract: The research proposed in this article presents a novel improved version of the widely adopted firefly algorithm and its application for tuning and optimising XGBoost classifier hyper-parameters for network intrusion detection. One of the greatest issues in the domain of network intrusion detection systems are relatively high false positives and false negatives rates. In the proposed study, by using XGBoost classifier optimised with improved firefly algorithm, this challenge is addressed. Based on the establish… Show more

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Cited by 49 publications
(25 citation statements)
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“…Therefore, the scientists have experimented with wide range of optimization algorithms on a variety of practical problems. Some of the most promising domains include medical diagnostics support [14,20,24,33,43], wireless sensor network tuning [4,9,12,48,57,66], stock price estimations [16], as well as intrusion detection and security domain [1,31,41,45,55,56,60,65] and plant classifying task [17].…”
Section: Metaheuristics Optimizationmentioning
confidence: 99%
“…Therefore, the scientists have experimented with wide range of optimization algorithms on a variety of practical problems. Some of the most promising domains include medical diagnostics support [14,20,24,33,43], wireless sensor network tuning [4,9,12,48,57,66], stock price estimations [16], as well as intrusion detection and security domain [1,31,41,45,55,56,60,65] and plant classifying task [17].…”
Section: Metaheuristics Optimizationmentioning
confidence: 99%
“…A significant number of metaheuristics methods exist today, explained by the no free lunch theorem [57], stating that an universal solution to all optimization problems is not existing. Consequently, the researchers have implemented a large number of algorithms, and employed them on a wide range of real-world problems from different domains, such as medical diagnostics [15,21,25,37,47], wireless sensor networks [5,10,13,53,63,72], stock price forecasting [17], intrusion detection and other security applications [2,35,45,51,61,62,66,71] and plant classification problem [18]. Metaheuristics algorithms have been also employed to tune the cloud, edge and fog computing [3,6,16,24,52,65], feature selection [9,20,23,36,41,54,67], dropout regularization [12], a wide spectrum of COVID-19 challenges [26,64,[68][69][70], artificial neural networks optimization [4,7,8,…”
Section: Metaheuristics Optimizationmentioning
confidence: 99%
“…The informatics field has benefited from the all of the above algorithm types as the improvements to real-world problems can be seen in practice some of which are: medical diagnosis applications [16,22,26,36,49,58], wireless sensor network optimizations [6,11,14,55,67,77], stock price predictions [18], as well as intrusion detection [2,34,45,65,66,70,74,76] and plant classifying task [19], cloud computing scheduling, edge and fog computing [4,7,17,25,54,69], feature selection [10,21,24,35,38,56,71], dropout regularization [13], COVID-19 detection and fake news detection [27, 68,72,73,75], tuning artificial neural networks [5,8,9,12,15,20,53,57], text clustering [23], cryptocurrency price prediction as well [46], and list goes on.…”
Section: Metaheuristics Optimizationmentioning
confidence: 99%