Download PDFOpen PDF in browserDemystifying Deep Learning: Transparent Approaches and Visual Insights for Image AnalysisEasyChair Preprint 1204011 pages•Date: February 12, 2024AbstractThe proliferation of Internet of Things (IoT) devices has introduced unprecedented connectivity and convenience, but it has also opened new avenues for security threats. Intrusion detection plays a crucial role in safeguarding IoT networks from malicious activities. This paper explores the integration of machine learning strategies to enhance intrusion detection in connected networks. We investigate the challenges posed by the dynamic and heterogeneous nature of IoT environments and propose advanced machine learning approaches to address these challenges. The effectiveness of the proposed strategies is evaluated through comprehensive simulations, demonstrating their potential to significantly improve the security posture of IoT networks. Keyphrases: Convolutional Neural Networks (CNNs), Explainable AI, Feature Attribution, Model Explainability, Transparent Models, Visualization techniques, deep learning, image recognition, interpretability, neural networks
|