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The proliferation of network-based services has resulted in an expanded threat landscape within the domain of cybersecurity. In the realm of network security, Intrusion Detection System (IDS) assume a critical function in the protection of networks by identifying instances of unauthorized access and malicious behaviors. This research study does a comprehensive investigation into the effectiveness of different machine learning algorithms within the domain of IDS with the purpose of enhancing network security. The scope of our study centers around four key machine learning algorithms, namely Support Vector Machine (SVM), Random Forest, Naive Bayes, and ensemble techniques incorporating stacking. By utilizing the NSL-KDD dataset, which depicts a practical and demanding network traffic situation, we assess the efficacy of these algorithms in terms of accuracy, a pivotal measure for the effectiveness of IDS. The experimental findings demonstrate that the machine learning models exhibit diverse levels of effectiveness in the task of intrusion detection. Support Vector Machines (SVM) have been shown to possess the ability to effectively define intricate decision boundaries and get a high level of accuracy in detecting network anomalies. The Random Forest algorithm demonstrates resilience and flexibility, effectively managing a wide range of patterns present in the dataset. The Naive Bayes algorithm, renowned for its simplicity and computational efficiency, has a commendable level of performance in comparison to other methods. In addition, we explore ensemble strategies, with a specific focus on stacking, in order to leverage the combined capabilities of these algorithms. The results of our study demonstrate that an ensemble of machine learning models, including Support Vector Machines (SVM), Random Forest, and Naive Bayes, when combined using stacking approaches, may achieve a remarkably high accuracy rate of 98.66%. The utilization of an ensemble technique showcases enhanced capabilities in detecting intrusions, thereby reducing network threats while simultaneously lowering the occurrence of false positives. This study highlights the significant impact of machine learning in enhancing network security through IDS. Additionally, it provides a comprehensive viewpoint on the advantages and drawbacks of specific algorithms, as well as the possibility for synergistic effects when these algorithms are combined in ensembles. This study provides significant insights for practitioners and researchers who aim to improve the effectiveness of intrusion detection systems in the constantly changing field of network security.
Rege et al. (Tue,) studied this question.
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