Hamiltonian-Driven Architectures for Non-Markovian Quantum Reservoir Computing
Hamiltonian-Driven Architectures for Non-Markovian Quantum Reservoir Computing
We propose a Hamiltonian-level framework for non-Markovian quantum reservoir computing directly tailored for analog hardware implementations. By dividing the reservoir into a system block and an environment block and evolving their joint state under a unified Hamiltonian, our architecture naturally embeds memory backflow by harnessing entanglement-induced information backflow with tunable coupling strengths. Numerical benchmarks on short-term memory tasks demonstrate that operating in non-Markovian regimes yields significantly slower memory decay compared to the Markovian limit. Further analyzing the echo-state property (ESP), showing that the non-Markovian quantum reservoir evolves from two different initial states, they do not converge to the same trajectory even after a long time, strongly suggesting that the ESP is effectively violated. Our work provides the first demonstration in quantum reservoir computing that strong non-Markovianity can fundamentally violate the ESP, such that conventional linear-regression readouts fail to deliver stable training and inference. Finally, we experimentally showed that, with an appropriate time-evolution step size, the non-Markovian reservoir exhibits superior performance on higher-order nonlinear autoregressive moving-average(NARMA) tasks.
Daiki Sasaki、Ryosuke Koga、Taihei Kuroiwa、Yuya Ito、Chih-Chieh Chen、Tomah Sogabe
物理学
Daiki Sasaki,Ryosuke Koga,Taihei Kuroiwa,Yuya Ito,Chih-Chieh Chen,Tomah Sogabe.Hamiltonian-Driven Architectures for Non-Markovian Quantum Reservoir Computing[EB/OL].(2025-05-20)[2025-06-12].https://arxiv.org/abs/2505.14450.点此复制
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