Neural network approaches to approximate the ground state of quantum hamiltonians require the numerical solution of a highly nonlinear optimization problem. We introduce a statistical learning approach that makes the optimization trivial by using kernel methods. Our scheme is an approximate realization of the power method, where supervised learning is used to learn the next step of the power iteration. We show that the ground state properties of arbitrary gapped quantum hamiltonians can be reached with polynomial resources under the assumption that the supervised learning is efficient. Using kernel ridge regression, we provide numerical evidence that the learning assumption is verified by applying our scheme to find the ground states of several prototypical interacting many-body quantum systems, both in one and two dimensions, showing the flexibility of our approach.
翻译:神经网络近似求解量子哈密顿的基态需要通过高度非线性的优化问题进行数值解,本文提出了一种利用核方法的概率学习方法,使得优化问题变得非常容易。我们的方案是幂法的近似实现,其中使用监督学习来学习幂迭代的下一步。我们表明,在监督学习有效的假设下,任意带能隙量子哈密顿的基态性质都可以在多项式资源的条件下得到。使用核岭回归,通过将方案应用于寻找几个典型交互多体量子系统的基态,在一维和二维中都得到了数值上的验证,表明了我们方案的灵活性。