Chi-Fang Chen, Anurag Anshu, Quynh T. Nguyen (Apr 04 2025).
Abstract: Learning the Hamiltonian underlying a quantum many-body system in thermal equilibrium is a fundamental task in quantum learning theory and experimental sciences. To learn the Gibbs state of local Hamiltonians at any inverse temperature
β, the state-of-the-art provable algorithms fall short of the optimal sample and computational complexity, in sharp contrast with the locality and simplicity in the classical cases. In this work, we present a learning algorithm that learns each local term of a
n-qubit
D-dimensional Hamiltonian to an additive error
ϵ with sample complexity
O~(β2ϵ2epoly(β))log(n). The protocol uses parallelizable local quantum measurements that act within bounded regions of the lattice and near-linear-time classical post-processing. Thus, our complexity is near optimal with respect to
n,ϵ and is polynomially tight with respect to
β. We also give a learning algorithm for Hamiltonians with bounded interaction degree with sample and time complexities of similar scaling on
n but worse on
β,ϵ. At the heart of our algorithm is the interplay between locality, the Kubo-Martin-Schwinger condition, and the operator Fourier transform at arbitrary temperatures.