Download PDFOpen PDF in browserIntrusion Detection System Using Hybrid ModelEasyChair Preprint 132453 pages•Date: May 12, 2024AbstractTechnology and network industries have advanced quickly in recent decades.The expansion of piracy and the compromise of many existing systems has made it essential to develop information security solutions that can identify new threats. In order to address these issues, this work proposes a system called IDS-AI that is based on artificial intelligence techniques. It is capable of detecting recent and dispersed invasions. We employed an auto-encoder for features reduction and two models to assess CNN and SVM in order to evaluate our strategy. The experimental analysis of the dataset demonstrates the suggested model's capability to produce reliable results. On the UNSW-NB15 dataset, our model actually achieves 99.58% and 99.66% accuracy for SVM and CNN, respectively. Keyphrases: CNN, Intrusion Detection System, SVM, UNSW-NB15
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