Deep neural networks are a powerful tool for the characterization of quantum states. Existing networks are typically trained with experimental data gathered from the specific quantum state that needs to be characterized. But is it possible to train a neural network offline and to make predictions about quantum states other than the ones used for the training? Here we introduce a model of network that can be trained with classically simulated data from a fiducial set of states and measurements, and can later be used to characterize quantum states that share structural similarities with the states in the fiducial set. With little guidance of quantum physics, the network builds its own data-driven representation of quantum states, and then uses it to predict the outcome statistics of quantum measurements that have not been performed yet. The state representation produced by the network can also be used for tasks beyond the prediction of outcome statistics, including clustering of quantum states and identification of different phases of matter. Our network model provides a flexible approach that can be applied to online learning scenarios, where predictions must be generated as soon as experimental data become available, and to blind learning scenarios where the learner has only access to an encrypted description of the quantum hardware.
翻译:深神经网络是量子状态定性的强大工具。 现有网络通常通过从需要定性的具体量子状态收集的实验性数据来培训现有网络。 但是,是否有可能培训一个神经网络离线,并预测非培训所用的量子状态? 我们在这里引入一个网络模型,可以用典型模拟的一组状态和测量数据来培训网络模式,然后可以用来描述量子状态,这种数量状态在结构上与体系中各邦有相似之处。 在量子物理指导很少的情况下,网络建立自己的数据驱动量子状态代表,然后利用它来预测尚未进行量子测量的结果统计数据。 网络产生的状态代表也可以用于预测结果统计数据之外的任务,包括量子状态的组合和对不同阶段物质的识别。 我们的网络模型提供了一种灵活的方法,可以应用于在线学习情景,一旦获得实验数据,就必须尽快作出预测,以及盲学习情景,而学习者只能获得量子硬件的加密描述。