Using Hybrid Deep Learning Model to Detect Anomaly Traffic Efficiently.

GCCE(2022)

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摘要
Internet traffic has escalated throughout recent years, resulting in information security evolving into a severe issue. Therefore, utilizing Intrusion Detection System to monitor malicious attacks in achieving high network protection has become a significant research issue. The study proposes a novel IDS (Intrusion Detection System) to detect network malicious behaviors with a hybrid CNN+LSTM model. To effectively reduce the classification time, PCA is adopted for dimensional reduction from 47 attributes to 31 components, covering 99% of feature information in the UNSW-NB15 dataset. The accuracy of our proposed solution reaches 98.24% along with a much shorter detection time.
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关键词
information security,IDS,CNN,LSTM,PCA
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