Explainable AI for Anomaly Detection in IoT Networks Using XGBoost

  • Unique Paper ID: 178511
  • Volume: 11
  • Issue: 12
  • PageNo: 8533-8536
  • Abstract:
  • This paper introduces a holistic approach for identifying anomalies in Internet of Things (IoT) networks utilizing the robust XGBoost classification model and explainable artificial intelligence (XAI) methods. We leverage SHAP (SHapley Additive exPlanations), LIME (Local Interpretable Model-agnostic Explanations), and a surrogate decision tree to supplement the model's interpretability. The performance of our method is tested on the IoT-23 dataset, which covers a variety of attack vectors as well as benign network traffic. The outcomes illustrate exceptional predictive accuracy as well as substantially improved model transparency, thereby enhancing understanding and confidence in automated systems for network security.

Cite This Article

  • ISSN: 2349-6002
  • Volume: 11
  • Issue: 12
  • PageNo: 8533-8536

Explainable AI for Anomaly Detection in IoT Networks Using XGBoost

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