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ENTITY Decoherence as Defence and the Magnitude of Noise Regularisation: A Rigorous N -Qubit Theory of Stochastic Quantum Neural Networks for Adversarially Robust Network Intrusion Detection

Decoherence as Defence and the Magnitude of Noise Regularisation: A Rigorous N -Qubit Theory of Stochastic Quantum Neural Networks for Adversarially Robust Network Intrusion Detection

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  1. RESEARCH · CL_107808 ·

    Quantum neural networks use noise for robust intrusion detection · arXiv research

    This paper introduces a rigorous theoretical framework for stochastic quantum neural networks (SQNNs) to enhance adversarial robustness in network intrusion detection. The research proposes a "decoherence-contraction th…