论文标题
通过条件生成模型预测量子系统的性质
Predicting Properties of Quantum Systems with Conditional Generative Models
论文作者
论文摘要
机器学习最近成为预测量子多体系统属性的强大工具。对于许多隐形汉密尔顿人的接地状态,生成模型可以从单个量子状态的测量中学习,以准确地重建状态以预测局部可观察到的状态。另外,分类和回归模型可以通过从不同但相关状态的测量中学习来预测局部可观察物。在这项工作中,我们结合了两种方法的好处,并提出了使用条件生成模型同时代表一个国家家庭,从测量中学习不同量子状态的共享结构。受过训练的模型使我们能够预测基态的任意局部特性,即使对于未包括培训数据中的状态,也无需进一步培训新的可观察物。我们首先使用多达45个量子位的模拟对2D随机海森堡模型进行数值验证我们的方法。此外,我们对中性原子量子计算机进行量子模拟,并证明我们的方法可以准确预测13 $ \ times $ 13 rydberg原子的方格的量子阶段。
Machine learning has emerged recently as a powerful tool for predicting properties of quantum many-body systems. For many ground states of gapped Hamiltonians, generative models can learn from measurements of a single quantum state to reconstruct the state accurately enough to predict local observables. Alternatively, classification and regression models can predict local observables by learning from measurements on different but related states. In this work, we combine the benefits of both approaches and propose the use of conditional generative models to simultaneously represent a family of states, learning shared structures of different quantum states from measurements. The trained model enables us to predict arbitrary local properties of ground states, even for states not included in the training data, without necessitating further training for new observables. We first numerically validate our approach on 2D random Heisenberg models using simulations of up to 45 qubits. Furthermore, we conduct quantum simulations on a neutral-atom quantum computer and demonstrate that our method can accurately predict the quantum phases of square lattices of 13$\times$13 Rydberg atoms.