cs.AI updates on arXiv.org 07月10日 12:05
Q-Detection: A Quantum-Classical Hybrid Poisoning Attack Detection Method
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本文提出Q-Detection,一种结合量子计算与经典计算的数据中毒检测方法,有效防御标签操控和后门攻击,预期比基线方法快20%。

arXiv:2507.06262v1 Announce Type: cross Abstract: Data poisoning attacks pose significant threats to machine learning models by introducing malicious data into the training process, thereby degrading model performance or manipulating predictions. Detecting and sifting out poisoned data is an important method to prevent data poisoning attacks. Limited by classical computation frameworks, upcoming larger-scale and more complex datasets may pose difficulties for detection. We introduce the unique speedup of quantum computing for the first time in the task of detecting data poisoning. We present Q-Detection, a quantum-classical hybrid defense method for detecting poisoning attacks. Q-Detection also introduces the Q-WAN, which is optimized using quantum computing devices. Experimental results using multiple quantum simulation libraries show that Q-Detection effectively defends against label manipulation and backdoor attacks. The metrics demonstrate that Q-Detection consistently outperforms the baseline methods and is comparable to the state-of-the-art. Theoretical analysis shows that Q-Detection is expected to achieve more than a 20% speedup using quantum computing power.

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量子计算 数据中毒检测 Q-Detection 量子-经典混合 攻击防御
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