Abstract

This study introduces a specialized Intrusion Detection System (IDS) designed specifically for cloud computing environments. By leveraging the UNSW_NB15 dataset, it employs feature selection techniques such as SelectKBest and ANOVA to extract relevant features, thereby improving the overall performance of the model. The IDS framework encompasses data preprocessing, Ensemble SVM model training, and performance evaluation utilizing standard metrics. The key methodology revolves around training SVM models using bagging and boosting techniques on preprocessed data, resulting in resilient intrusion detection models. These models are subsequently utilized to determine whether a given set of input features signifies a network intrusion. Through experimental analysis, the research demonstrates the system's efficacy in accurately detecting network intrusions, shedding light on its robustness and dependability.

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