A HYBRID ENSEMBLE LEARNING APPROACH FOR ENTERPRISE NETWORK THREAT CLASSIFICATION
Keywords:
Intrusion detection systems , Hybrid ensemble learning , DDoS attack classification , Feature selection (information gain) , Data balancingAbstract
The increased number of business networks has increased the traffic levels of the networks, which increases the susceptibility to advanced types of cyber-attacks such as Distributed Denial of Service (DDoS). The current intrusion detection systems have not had the capability to address the rising pattern attacks, therefore creating a need to employ the smart data models. The study presents a hybrid model design approach that combines the Support Vector Machine (SVM) algorithm, the Random Forest (RF) algorithm, and the Extreme Gradient Boosting (XGBoost) algorithm. The experiment study is undertaken on the CICDDoS 2019 dataset platform that supports diverse benign and DDoS network attacks. Data processing corresponded to the normalization of data, data ranking through the Information Gain values, and the application of the Synthetic Minority Over-sampling Technique (SMOTE). Each of the algorithms was individually created and evaluated through accuracy, precision, recall, F1 statistics, and AUC-ROC plots. It is clear from this study work that SVM performed best on its own with almost 99.92 % accuracy and Area Under the Curve (AUC) of 0.999 percent, outperforming RF and XG-Boost. The proposed hybrid ensemble model further enhanced these measures with 99.96 % accuracy with added strengths in terms of enhanced model generalization. This study work clearly establishes that the hybrid ensemble design of optimized traditional ML models performs efficiently and is scalable on real-time scales of enterprise network threats.
Published
How to Cite
Issue
Section
How to Cite
Similar Articles
- Dada P. O. O., Musa J. J., Adewumi J. K., Ola I. A., CATTLE TREADING EFFECTS ON SOIL PHYSICAL AND HYDRAULIC PROPERTIES IN ABEOKUTA, SOUTHWESTERN NIGERIA , FULafia Journal of Science and Technology : Vol. 5 No. 2 (2019): Fulafia Journal of Science and Technology (FJST)
- Olasunkanmi O. A., Hezekiah O. Adeyemi, Olaolu Folorunsho, LINEAR PROGRAMMING APPROACH TO MODELING FOUNDRY CUPOLA FURNACE CHARGE
- Akeyede I., Oyeyemi G. M., ON PERFORMANCE OF SOME METHODS OF DETECTING NONLINEARITY IN STATIONARY AND NON-STATIONARY TIME SERIES DATA , FULafia Journal of Science and Technology : Vol. 2 No. 2 (2016): Fulafia Journal of Science and Technology (FJST)
- Sule Mary-Jane, Yakmut D. I., Maozhen, ENSURING SECURITY AND TRUST FOR DATA IN THE CLOUD , FULafia Journal of Science and Technology : Vol. 4 No. 2 (2018): Fulafia Journal of Science and Technology (FJST)
- Adenomon M. O. , Adehi M. U. , Dantani Aminu Asambe, Nweze N. O. , MODELLING TIMES SERIES VOLATILITY: A CASE STUDY OF NIGERIA ECONOMIC VARIABLES , FULafia Journal of Science and Technology : Vol. 9 No. 2 (2025): Fulafia Journal of Science and Technology (FJST) (In Progress)
- Akeyede I., Saleh I. M., Babalola O. A., PROPORTIONAL EFFECT OF OUTLIERS ON OVER-DISPERSION , FULafia Journal of Science and Technology : Vol. 1 No. 1 (2015): Fulafia Journal of Science and Technology (FJST)
- A. M. Oyelakin, Salau-Ibrahim T. T., Ogidan B. S., Azeez R. D., Ajiboye I. K., PEER-TO-PEER BOTNETS: A SURVEY ON PROPAGATION, DETECTION AND DETECTION EVASION TECHNIQUES , FULafia Journal of Science and Technology : Vol. 5 No. 2 (2019): Fulafia Journal of Science and Technology (FJST)
- E. E. Daniel, D. O. Oyewole, S. A. Akinwunmi , D. B. Awudang, COMPARATIVE ANALYSIS OF GAUSS SEIDEL, CONJUGATE GRADIENT AND SUCCESSIVEOVER RELAXATION FOR THE SOLUTION OF NONSYMETRIC LINEAR EQUATIONS , FULafia Journal of Science and Technology : Vol. 9 No. 1 (2025): Vol. 9 No. 1 (March, 2025): Fulafia Journal of Science and Technology (FJST)
- Adeyemi H. O., Akinyemi O. O., Onifade W. A., Ishola I. F., Odugbose B. D., Adeyemi C. A., IMPORTED WEARS AND THE ANTHROPOMETRIC DIMENSIONS OF ADULT YORUBA WOMEN: A REFLECTION OF SUITABILITY , FULafia Journal of Science and Technology : Vol. 5 No. 2 (2019): Fulafia Journal of Science and Technology (FJST)
- Falaiye O. A., Abimbola O. J., Omojola J., Akinyanju D. S., Nwamaka R. Okonkwo, SPACIO-TEMPORAL VARIATION OF RADIO REFRACTIVITY IN LAFIA, NASARAWA STATE USING CM SAF ATOVS SATELLITE DATA
You may also start an advanced similarity search for this article.