We initiate the study of neural-network quantum state algorithms for analyzing continuous-variable lattice quantum systems in first quantization. A simple family of continuous-variable trial wavefunctons is introduced which naturally generalizes the restricted Boltzmann machine (RBM) wavefunction introduced for analyzing quantum spin systems. By virtue of its simplicity, the same variational Monte Carlo training algorithms that have been developed for ground state determination and time evolution of spin systems have natural analogues in the continuum. We offer a proof of principle demonstration in the context of ground state determination of a stoquastic quantum rotor Hamiltonian. Results are compared against those obtained from partial differential equation (PDE) based scalable eigensolvers. This study serves as a benchmark against which future investigation of continuous-variable neural quantum states can be compared, and points to the need to consider deep network architectures and more sophisticated training algorithms.
翻译:我们开始研究神经网络量子量子算法,以在第一个四分法中分析连续可变的拉蒂量子系统。我们引入了一个由连续可变的试验波方顿组成的简单组合,它自然地将用于分析量子旋转系统的受限制的波尔兹曼机器(RBM)波功能加以概括化。由于它的简单性,为地面状态确定和旋转系统的时间演进而开发的同样的变式蒙特卡洛培训算法在连续体中具有自然的相似性。我们提供了在地面状态确定一个可逆量子旋转盘时进行原则示范的证明。结果与部分差异方程式(PDE)基于可变缩放的天体元体进行对比。这一研究作为基准,可以比较未来对持续可变神经量子状态的调查,并表明需要考虑深网络架构和更复杂的培训算法。