Learning functions of Hamiltonians with Hamiltonian Fourier features
Learning functions of Hamiltonians with Hamiltonian Fourier features
We propose a quantum machine learning task that is provably easy for quantum computers and arguably hard for classical ones. The task involves predicting quantities of the form $\mathrm{Tr}[f(H)\rho]$, where $f$ is an unknown function, given descriptions of $H$ and $\rho$. Using a Fourier-based feature map of Hamiltonians and linear regression, we theoretically establish the learnability of the task and implement it on a superconducting device using up to 40 qubits. This work provides a machine learning task with practical relevance, provable quantum easiness, and near-term feasibility.
Akimoto Nakayama、Hidetaka Manabe、Kosuke Mitarai、Yuto Morohoshi
物理学
Akimoto Nakayama,Hidetaka Manabe,Kosuke Mitarai,Yuto Morohoshi.Learning functions of Hamiltonians with Hamiltonian Fourier features[EB/OL].(2025-04-22)[2025-05-23].https://arxiv.org/abs/2504.16370.点此复制
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