Publication | Open Access
Comparison of ML/DL Approaches for Detecting DDoS Attacks in SDN
56
Citations
24
References
2023
Year
Hardware SecurityDdos DetectionSecurity DiagnosticsMachine LearningData ScienceSoftware-defined NetworkingPattern RecognitionMultiple Layer PerceptronEngineeringThreat DetectionDenial-of-service AttackIntrusion Detection SystemNetwork Traffic MeasurementComputer ScienceBotnet DetectionMl/dl ApproachesSoftware Defined SecurityDeep Learning
Software-defined networking (SDN) presents novel security and privacy risks, including distributed denial-of-service (DDoS) attacks. In response to these threats, machine learning (ML) and deep learning (DL) have emerged as effective approaches for quickly identifying and mitigating anomalies. To this end, this research employs various classification methods, including support vector machines (SVMs), K-nearest neighbors (KNNs), decision trees (DTs), multiple layer perceptron (MLP), and convolutional neural networks (CNNs), and compares their performance. CNN exhibits the highest train accuracy at 97.808%, yet the lowest prediction accuracy at 90.08%. In contrast, SVM demonstrates the highest prediction accuracy of 95.5%. As such, an SVM-based DDoS detection model shows superior performance. This comparative analysis offers a valuable insight into the development of efficient and accurate techniques for detecting DDoS attacks in SDN environments with less complexity and time.
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