Showing 1 - 20 results of 29 for search '(( binary _ robust detection algorithm ) OR ( binary basic _ optimization algorithm ))', query time: 0.53s Refine Results
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    Related studies on IDS using deep learning. by Arshad Hashmi (13835488)

    Published 2024
    “…This imbalance can adversely affect the learning process of predictive models, often resulting in high false-negative rates, a major concern in Intrusion Detection Systems (IDS). By focusing on datasets with this imbalance, we aim to develop and refine advanced algorithms and techniques, such as anomaly detection, cost-sensitive learning, and oversampling methods, to effectively handle such disparities. …”
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    The architecture of the BI-LSTM model. by Arshad Hashmi (13835488)

    Published 2024
    “…This imbalance can adversely affect the learning process of predictive models, often resulting in high false-negative rates, a major concern in Intrusion Detection Systems (IDS). By focusing on datasets with this imbalance, we aim to develop and refine advanced algorithms and techniques, such as anomaly detection, cost-sensitive learning, and oversampling methods, to effectively handle such disparities. …”
  18. 18

    Comparison of accuracy and DR on UNSW-NB15. by Arshad Hashmi (13835488)

    Published 2024
    “…This imbalance can adversely affect the learning process of predictive models, often resulting in high false-negative rates, a major concern in Intrusion Detection Systems (IDS). By focusing on datasets with this imbalance, we aim to develop and refine advanced algorithms and techniques, such as anomaly detection, cost-sensitive learning, and oversampling methods, to effectively handle such disparities. …”
  19. 19

    Comparison of DR and FPR of UNSW-NB15. by Arshad Hashmi (13835488)

    Published 2024
    “…This imbalance can adversely affect the learning process of predictive models, often resulting in high false-negative rates, a major concern in Intrusion Detection Systems (IDS). By focusing on datasets with this imbalance, we aim to develop and refine advanced algorithms and techniques, such as anomaly detection, cost-sensitive learning, and oversampling methods, to effectively handle such disparities. …”
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