论文标题
量子噪声可保护量子分类器免受对手的影响
Quantum noise protects quantum classifiers against adversaries
论文作者
论文摘要
量子信息处理中的噪声通常被视为破坏性和难以避免的特征,尤其是在近期量子技术中。但是,从增强随机共振的弱信号到保护差异隐私的隐私,噪音通常扮演着有益的角色。这样很自然地问,我们可以利用有益于量子计算的量子噪声的力量吗?量子计算的重要当前方向是将其应用于机器学习,例如分类问题。机器学习进行分类的一个重大问题是它对对抗性例子的敏感性。这些是从原始数据中进行的小而无法检测到的扰动,在这些数据中,这些扰动数据在原本非常准确的分类器中被完全分类。它们也可以被未知的噪声源视为“最坏情况”的扰动。我们表明,通过利用量子电路中的去极化噪声进行分类,可以在稳健性随着噪声增加而提高稳定性的情况下,与对手的稳健性结合。这种鲁棒性属性与称为差异隐私的重要安全概念密切相关,该概念可以扩展到量子差异隐私。为了保护量子数据,这是可以针对最通用的对手使用的第一个量子协议。此外,我们展示了经典案例中的鲁棒性如何对分类模型的细节敏感,但是在量子情况下,分类模型的细节不存在,因此也为与量子加速无关的经典数据提供了潜在的量子优势。这打开了探索其他方式可以利用量子噪声以我们有利的方式的机会,并确定量子算法的其他方式可以有用,与量子加速无关。
Noise in quantum information processing is often viewed as a disruptive and difficult-to-avoid feature, especially in near-term quantum technologies. However, noise has often played beneficial roles, from enhancing weak signals in stochastic resonance to protecting the privacy of data in differential privacy. It is then natural to ask, can we harness the power of quantum noise that is beneficial to quantum computing? An important current direction for quantum computing is its application to machine learning, such as classification problems. One outstanding problem in machine learning for classification is its sensitivity to adversarial examples. These are small, undetectable perturbations from the original data where the perturbed data is completely misclassified in otherwise extremely accurate classifiers. They can also be considered as `worst-case' perturbations by unknown noise sources. We show that by taking advantage of depolarisation noise in quantum circuits for classification, a robustness bound against adversaries can be derived where the robustness improves with increasing noise. This robustness property is intimately connected with an important security concept called differential privacy which can be extended to quantum differential privacy. For the protection of quantum data, this is the first quantum protocol that can be used against the most general adversaries. Furthermore, we show how the robustness in the classical case can be sensitive to the details of the classification model, but in the quantum case the details of classification model are absent, thus also providing a potential quantum advantage for classical data that is independent of quantum speedups. This opens the opportunity to explore other ways in which quantum noise can be used in our favour, as well as identifying other ways quantum algorithms can be helpful that is independent of quantum speedups.