Samer Saeed IssaSinan Q. SalihYasir DawoodFaris Hasan TahaV ChandolaA BanerjeeV KumarS AgrawalJV BalamuruganR SaravananM SheikhanN MohammadiS AljawarnehM YasseinM AljundiA MalikF KhanM SheikhanZ JadidiA FarrokhiH BostaniM SheikhanB XueM ZhangW BrowneY SalmanN HashimY HashimP MoradiM RostamiH TaoS AwadhS SalihS ShafikZ YaseenF CuiS SalihB ChoubinS BhagatP SamuiZ YaseenN LongP MeesadH UngerC ChengT ChenL WeiA QasimA SallomiI GuyonA ElisseeffJ TangS AlelyaniH LiuA AniS VieiraJ SousaT RunklerM KabirM ShahjahanK MuraseC LinH ChenY WuM SchiezaroH PedriniV AgrawalS ChandraB XueM ZhangS MemberW BrowneC RamosA SouzaG ChiachiaA FalcoJ PapaH InbaraniM BagyamathiA AzarA HatamlouJ BiesiadaW DuchE HarrisL RaileanuK StoffelQ GuZ LiJ HanV KumarD TomarS AgarwalZ HuY BaoT XiongR ChiongL ZhangL ShanJ WangA TahaS ChenA MustaphaA PiotrowskiJ NapiorkowskiP RowinskiS KumarD DattaS SinghS SalihS SalihA KhalafN MohsinS JabbarK ChenL ChenC SuJ YangV HonavarE EmaryH ZawbaaK GhanyA HassanienB ParvA TahaA MustaphaS ChenS FayssalS HaririY NashifS LinK YingC LeeZ LeeR LippmannJ HainesD FriedJ KorbaK DasM TavallaeeE BagheriW LuA GhorbaniS KangK KimS KrishnaveniS SivamohanS SridharS PrabhakaranH ZhangJ LiX LiuC DongJ LiuY GaoF HuC IeracitanoA AdeelF MorabitoA HussainB TamaL NkenyereyeS IslamK KwakM LoukB Tama
The detection rate of network intrusion detection systems mainly depends on relevant features; however, the selection of attributes or features is considered an issue in NP-hard problems.It is an important step in machine learning and pattern recognition.The major aim of feature selection is to determine the feature subset from the current/existing features that will enhance the learning performance of the algorithms, in terms of accuracy and learning time.This paper proposes a new hybrid filter-wrapper feature selection method that can be used in classification problems.The information gain ratio algorithm (GR) represents the filter feature selection approach, and the black hole algorithm (BHA) represents the wrapper feature selection approach.The comparative analysis of network intrusion detection methods focuses on accuracy and false positive rate.GBA shines with exceptional results: achieving 96.96% accuracy and a mere 0.89% false positive rate.This success can be traced to GBA's improved initialization via the GR technique, which effectively removes irrelevant features.By assigning these features almost zero weights, GBA hones its ability to accurately spot intrusions while drastically reducing false alarms.These standout outcomes underline GBA's superiority over other methods, showcasing its potential as a reliable solution for bolstering network security.
Mahmoud M. SakrMedhat A. TawfeeqAshraf B. El-Sisi
Chaouki KhammassiSaoussen Krichen
Chaouki KhammassiSaoussen Krichen
A. HofmannTimo HoreisBernhard Sick